Presenting the ScanNet200 Benchmark

We present the ScanNet200 benchmark, which studies an order of magnitude more class categories than previous version of ScanNet. The scene geometry is shared within the two tasks, but the parsing of surface annotation allows for a larger vocabulary and more realistic setting for in the wild 3D understanding methods.

The ScanNet200 benchmark includes both finer-grained categories as well as a large number of previously unaddressed classes. This induces a much more challenging setting regarding the diversity of naturally observed semantic classes seen in the raw ScanNet RGB-D observations, where the data also reflects naturally encountered class imbalances. The difference in category frequencies between ScanNet and ScanNet200 can be seen in the Figure above.

ScanNet200 Benchmark

This table lists the benchmark results for the ScanNet200 3D semantic label scenario.




Method Infoavg iouhead ioucommon ioutail ioualarm clockarmchairbackpackbagballbarbasketbathroom cabinetbathroom counterbathroom stallbathroom stall doorbathroom vanitybathtubbedbenchbicyclebinblackboardblanketblindsboardbookbookshelfbottlebowlboxbroombucketbulletin boardcabinetcalendarcandlecartcase of water bottlescd caseceilingceiling lightchairclockclosetcloset doorcloset rodcloset wallclothesclothes dryercoat rackcoffee kettlecoffee makercoffee tablecolumncomputer towercontainercopiercouchcountercratecupcurtaincushiondecorationdeskdining tabledish rackdishwasherdividerdoordoorframedresserdumbbelldustpanend tablefanfile cabinetfire alarmfire extinguisherfireplacefloorfolded chairfurnitureguitarguitar casehair dryerhandicap barhatheadphonesironing boardjacketkeyboardkeyboard pianokitchen cabinetkitchen counterladderlamplaptoplaundry basketlaundry detergentlaundry hamperledgelightlight switchluggagemachinemailboxmatmattressmicrowavemini fridgemirrormonitormousemusic standnightstandobjectoffice chairottomanovenpaperpaper bagpaper cutterpaper towel dispenserpaper towel rollpersonpianopicturepillarpillowpipeplantplateplungerposterpotted plantpower outletpower stripprinterprojectorprojector screenpurserackradiatorrailrange hoodrecycling binrefrigeratorscaleseatshelfshoeshowershower curtainshower curtain rodshower doorshower floorshower headshower wallsignsinksoap dishsoap dispensersofa chairspeakerstair railstairsstandstoolstorage binstorage containerstorage organizerstovestructurestuffed animalsuitcasetabletelephonetissue boxtoastertoaster oventoilettoilet papertoilet paper dispensertoilet paper holdertoilet seat cover dispensertoweltrash bintrash cantraytubetvtv standvacuum cleanerventwallwardrobewashing machinewater bottlewater coolerwater pitcherwhiteboardwindowwindowsill
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BFANet ScanNet200permissive0.360 20.553 40.293 20.193 20.483 60.096 30.266 40.000 10.000 30.000 10.298 100.255 90.661 10.810 50.810 20.194 60.785 20.000 30.000 120.161 30.000 60.494 50.382 10.574 20.258 30.000 50.372 60.000 10.000 30.043 90.436 50.000 60.000 10.239 10.000 20.901 20.105 10.689 20.025 20.128 20.614 10.436 10.493 120.000 10.000 20.526 40.546 80.109 30.651 100.953 20.753 40.101 50.143 80.897 20.000 10.431 10.469 100.000 70.522 50.337 30.661 40.459 20.409 20.666 30.102 90.508 40.757 20.000 40.060 90.970 20.497 10.000 10.376 20.511 20.262 40.688 10.921 10.617 50.321 90.590 30.491 50.556 30.000 30.000 10.481 30.093 10.043 20.284 10.000 30.875 100.135 50.669 30.124 80.394 40.849 90.298 20.000 10.476 120.088 100.042 50.000 40.000 10.254 10.653 60.741 30.215 10.573 30.852 40.266 50.654 10.056 90.835 10.000 30.492 10.000 10.000 40.000 20.612 60.000 10.000 50.000 10.616 30.469 120.460 30.698 90.516 20.000 10.378 50.563 20.476 20.863 30.574 60.330 40.000 70.282 30.000 10.760 20.710 20.233 10.000 70.641 20.814 10.000 10.585 70.053 80.000 50.000 10.629 70.000 20.000 10.678 10.528 80.534 20.129 90.596 10.973 20.264 70.772 10.526 50.139 90.707 20.000 10.000 80.764 90.591 110.848 60.000 10.827 20.338 30.806 90.000 10.568 50.151 50.358 10.659 70.510 3
L3DETR-ScanNet_2000.336 50.533 80.279 30.155 50.508 30.073 80.101 120.000 10.058 20.000 10.294 110.233 110.548 30.927 10.788 60.264 10.463 60.000 30.638 70.098 100.014 40.411 80.226 80.525 80.225 70.010 30.397 30.000 10.000 30.192 30.380 90.598 30.000 10.117 30.000 20.883 40.082 70.689 20.000 50.032 120.549 40.417 40.910 30.000 10.000 20.448 60.613 60.000 80.697 50.960 10.759 20.158 20.293 10.883 40.000 10.312 20.583 10.079 40.422 90.068 120.660 50.418 50.298 70.430 90.114 70.526 30.776 10.051 20.679 10.946 40.152 60.000 10.183 40.000 100.211 50.511 70.409 110.565 70.355 50.448 50.512 40.557 20.000 30.000 10.420 60.000 70.007 120.104 30.000 30.125 120.330 20.514 100.146 70.321 80.860 60.174 60.000 10.629 30.075 110.000 100.000 40.000 10.002 50.671 40.712 40.141 40.339 70.856 30.261 70.529 70.067 70.835 10.000 30.369 90.000 10.259 20.000 20.629 30.000 10.487 10.000 10.579 80.646 20.107 120.720 80.122 50.000 10.333 90.505 70.303 60.908 10.503 100.565 10.074 60.324 10.000 10.740 50.661 60.109 90.000 70.427 80.563 120.000 10.579 80.108 50.000 50.000 10.664 30.000 20.000 10.641 50.539 60.416 40.515 20.256 60.940 80.312 30.209 120.620 10.138 100.636 80.000 10.000 80.775 80.861 40.765 80.000 10.801 70.119 100.860 60.000 10.687 10.001 90.192 110.679 60.699 1
Yanmin Wu, Qiankun Gao, Renrui Zhang, Jian Zhang: Language-Assisted 3D Scene Understanding. arXiv23.12
PTv3 ScanNet2000.393 10.592 10.330 10.216 10.520 10.109 20.108 110.000 10.337 10.000 10.310 90.394 60.494 90.753 80.848 10.256 20.717 30.000 30.842 10.192 20.065 20.449 60.346 20.546 40.190 80.000 50.384 40.000 10.000 30.218 10.505 10.791 10.000 10.136 20.000 20.903 10.073 100.687 40.000 50.168 10.551 30.387 60.941 10.000 10.000 20.397 80.654 30.000 80.714 30.759 100.752 50.118 40.264 20.926 10.000 10.048 30.575 20.000 70.597 10.366 10.755 10.469 10.474 10.798 10.140 60.617 10.692 40.000 40.592 20.971 10.188 30.000 10.133 50.593 10.349 10.650 20.717 50.699 10.455 10.790 10.523 30.636 10.301 10.000 10.622 20.000 70.017 100.259 20.000 30.921 20.337 10.733 10.210 10.514 10.860 60.407 10.000 10.688 10.109 60.000 100.000 40.000 10.151 20.671 40.782 10.115 80.641 10.903 10.349 10.616 20.088 40.832 30.000 30.480 20.000 10.428 10.000 20.497 70.000 10.000 50.000 10.662 20.690 10.612 10.828 10.575 10.000 10.404 40.644 10.325 40.887 20.728 10.009 110.134 50.026 120.000 10.761 10.731 10.172 40.077 20.528 30.727 30.000 10.603 40.220 20.022 20.000 10.740 10.000 20.000 10.661 20.586 10.566 10.436 40.531 20.978 10.457 10.708 20.583 30.141 70.748 10.000 10.026 10.822 10.871 30.879 50.000 10.851 10.405 20.914 10.000 10.682 20.000 100.281 20.738 10.463 5
Xiaoyang Wu, Li Jiang, Peng-Shuai Wang, Zhijian Liu, Xihui Liu, Yu Qiao, Wanli Ouyang, Tong He, Hengshuang Zhao: Point Transformer V3: Simpler, Faster, Stronger. CVPR 2024 (Oral)
CeCo0.340 40.551 60.247 80.181 30.475 80.057 120.142 90.000 10.000 30.000 10.387 30.463 30.499 70.924 20.774 70.213 40.257 80.000 30.546 100.100 80.006 50.615 10.177 120.534 50.246 40.000 50.400 20.000 10.338 10.006 110.484 30.609 20.000 10.083 80.000 20.873 70.089 50.661 90.000 50.048 110.560 20.408 50.892 50.000 10.000 20.586 10.616 50.000 80.692 60.900 30.721 70.162 10.228 30.860 60.000 10.000 80.575 20.083 30.550 30.347 20.624 80.410 80.360 40.740 20.109 80.321 100.660 50.000 40.121 40.939 80.143 70.000 10.400 10.003 80.190 70.564 30.652 70.615 60.421 20.304 100.579 10.547 40.000 30.000 10.296 90.000 70.030 60.096 40.000 30.916 30.037 80.551 70.171 40.376 50.865 50.286 30.000 10.633 20.102 90.027 60.011 30.000 10.000 60.474 90.742 20.133 50.311 80.824 70.242 80.503 90.068 60.828 40.000 30.429 40.000 10.063 30.000 20.781 10.000 10.000 50.000 10.665 10.633 40.450 40.818 20.000 70.000 10.429 20.532 50.226 80.825 60.510 80.377 30.709 10.079 90.000 10.753 30.683 30.102 110.063 30.401 110.620 90.000 10.619 20.000 110.000 50.000 10.595 100.000 20.000 10.345 90.564 30.411 50.603 10.384 40.945 50.266 60.643 40.367 90.304 10.663 70.000 10.010 30.726 100.767 60.898 30.000 10.784 80.435 10.861 50.000 10.447 70.000 100.257 50.656 80.377 8
Zhisheng Zhong, Jiequan Cui, Yibo Yang, Xiaoyang Wu, Xiaojuan Qi, Xiangyu Zhang, Jiaya Jia: Understanding Imbalanced Semantic Segmentation Through Neural Collapse. CVPR 2023
PonderV2 ScanNet2000.346 30.552 50.270 50.175 40.497 50.070 90.239 50.000 10.000 30.000 10.232 120.412 50.584 20.842 30.804 40.212 50.540 50.000 30.433 110.106 70.000 60.590 30.290 70.548 30.243 50.000 50.356 80.000 10.000 30.062 70.398 80.441 50.000 10.104 70.000 20.888 30.076 90.682 50.030 10.094 50.491 70.351 80.869 70.000 10.063 10.403 70.700 20.000 80.660 90.881 40.761 10.050 70.186 50.852 80.000 10.007 60.570 50.100 20.565 20.326 40.641 70.431 40.290 90.621 40.259 20.408 60.622 70.125 10.082 70.950 30.179 40.000 10.263 30.424 30.193 60.558 40.880 20.545 80.375 40.727 20.445 70.499 70.000 30.000 10.475 50.002 50.034 50.083 50.000 30.924 10.290 30.636 40.115 90.400 30.874 30.186 50.000 10.611 50.128 20.113 20.000 40.000 10.000 60.584 70.636 60.103 90.385 60.843 50.283 20.603 40.080 50.825 50.000 30.377 70.000 10.000 40.000 20.457 80.000 10.000 50.000 10.574 90.608 60.481 20.792 30.394 30.000 10.357 70.503 80.261 70.817 80.504 90.304 50.472 30.115 60.000 10.750 40.677 40.202 20.000 70.509 40.729 20.000 10.519 90.000 110.000 50.000 10.620 90.000 20.000 10.660 40.560 40.486 30.384 60.346 50.952 30.247 90.667 30.436 70.269 30.691 40.000 10.010 30.787 50.889 20.880 40.000 10.810 50.336 40.860 60.000 10.606 40.009 60.248 60.681 40.392 7
Haoyi Zhu, Honghui Yang, Xiaoyang Wu, Di Huang, Sha Zhang, Xianglong He, Tong He, Hengshuang Zhao, Chunhua Shen, Yu Qiao, Wanli Ouyang: PonderV2: Pave the Way for 3D Foundataion Model with A Universal Pre-training Paradigm.
OA-CNN-L_ScanNet2000.333 60.558 20.269 60.124 80.448 100.080 60.272 30.000 10.000 30.000 10.342 50.515 20.524 50.713 120.789 50.158 80.384 70.000 30.806 30.125 40.000 60.496 40.332 40.498 110.227 60.024 20.474 10.000 10.003 20.071 60.487 20.000 60.000 10.110 50.000 20.876 50.013 120.703 10.000 50.076 70.473 80.355 70.906 40.000 10.000 20.476 50.706 10.000 80.672 80.835 80.748 60.015 110.223 40.860 60.000 10.000 80.572 40.000 70.509 60.313 50.662 20.398 90.396 30.411 100.276 10.527 20.711 30.000 40.076 80.946 40.166 50.000 10.022 60.160 40.183 80.493 80.699 60.637 30.403 30.330 90.406 80.526 50.024 20.000 10.392 80.000 70.016 110.000 70.196 20.915 40.112 70.557 60.197 20.352 70.877 20.000 70.000 10.592 90.103 80.000 100.067 10.000 10.089 30.735 30.625 70.130 70.568 40.836 60.271 30.534 60.043 100.799 60.001 20.445 30.000 10.000 40.024 10.661 20.000 10.262 20.000 10.591 50.517 100.373 60.788 50.021 60.000 10.455 10.517 60.320 50.823 70.200 120.001 120.150 40.100 70.000 10.736 60.668 50.103 100.052 40.662 10.720 40.000 10.602 50.112 40.002 40.000 10.637 60.000 20.000 10.621 70.569 20.398 60.412 50.234 70.949 40.363 20.492 100.495 60.251 40.665 60.000 10.001 70.805 30.833 50.794 70.000 10.821 30.314 50.843 80.000 10.560 60.245 20.262 40.713 20.370 9
OctFormer ScanNet200permissive0.326 80.539 70.265 70.131 70.499 40.110 10.522 10.000 10.000 30.000 10.318 80.427 40.455 100.743 100.765 80.175 70.842 10.000 30.828 20.204 10.033 30.429 70.335 30.601 10.312 20.000 50.357 70.000 10.000 30.047 80.423 60.000 60.000 10.105 60.000 20.873 70.079 80.670 80.000 50.117 30.471 90.432 30.829 80.000 10.000 20.584 20.417 120.089 40.684 70.837 70.705 110.021 100.178 60.892 30.000 10.028 50.505 80.000 70.457 70.200 90.662 20.412 70.244 100.496 60.000 120.451 50.626 60.000 40.102 60.943 70.138 90.000 10.000 80.149 50.291 30.534 60.722 40.632 40.331 70.253 110.453 60.487 80.000 30.000 10.479 40.000 70.022 80.000 70.000 30.900 60.128 60.684 20.164 50.413 20.854 80.000 70.000 10.512 110.074 120.003 80.000 40.000 10.000 60.469 100.613 80.132 60.529 50.871 20.227 110.582 50.026 120.787 70.000 30.339 100.000 10.000 40.000 20.626 40.000 10.029 40.000 10.587 60.612 50.411 50.724 70.000 70.000 10.407 30.552 30.513 10.849 50.655 30.408 20.000 70.296 20.000 10.686 100.645 90.145 60.022 50.414 90.633 70.000 10.637 10.224 10.000 50.000 10.650 50.000 20.000 10.622 60.535 70.343 70.483 30.230 80.943 60.289 50.618 50.596 20.140 80.679 50.000 10.022 20.783 60.620 90.906 10.000 10.806 60.137 90.865 30.000 10.378 80.000 100.168 120.680 50.227 11
Peng-Shuai Wang: OctFormer: Octree-based Transformers for 3D Point Clouds. SIGGRAPH 2023
PPT-SpUNet-F.T.0.332 70.556 30.270 40.123 90.519 20.091 40.349 20.000 10.000 30.000 10.339 60.383 70.498 80.833 40.807 30.241 30.584 40.000 30.755 40.124 50.000 60.608 20.330 50.530 70.314 10.000 50.374 50.000 10.000 30.197 20.459 40.000 60.000 10.117 30.000 20.876 50.095 20.682 50.000 50.086 60.518 50.433 20.930 20.000 10.000 20.563 30.542 90.077 50.715 20.858 60.756 30.008 120.171 70.874 50.000 10.039 40.550 60.000 70.545 40.256 60.657 60.453 30.351 50.449 80.213 30.392 70.611 80.000 40.037 100.946 40.138 90.000 10.000 80.063 60.308 20.537 50.796 30.673 20.323 80.392 70.400 90.509 60.000 30.000 10.649 10.000 70.023 70.000 70.000 30.914 50.002 110.506 110.163 60.359 60.872 40.000 70.000 10.623 40.112 40.001 90.000 40.000 10.021 40.753 10.565 110.150 20.579 20.806 80.267 40.616 20.042 110.783 80.000 30.374 80.000 10.000 40.000 20.620 50.000 10.000 50.000 10.572 100.634 30.350 70.792 30.000 70.000 10.376 60.535 40.378 30.855 40.672 20.074 80.000 70.185 50.000 10.727 70.660 70.076 120.000 70.432 70.646 60.000 10.594 60.006 100.000 50.000 10.658 40.000 20.000 10.661 20.549 50.300 90.291 80.045 90.942 70.304 40.600 60.572 40.135 110.695 30.000 10.008 50.793 40.942 10.899 20.000 10.816 40.181 70.897 20.000 10.679 30.223 30.264 30.691 30.345 10
Xiaoyang Wu, Zhuotao Tian, Xin Wen, Bohao Peng, Xihui Liu, Kaicheng Yu, Hengshuang Zhao: Towards Large-scale 3D Representation Learning with Multi-dataset Point Prompt Training. CVPR 2024
Minkowski 34Dpermissive0.253 110.463 110.154 120.102 110.381 120.084 50.134 100.000 10.000 30.000 10.386 40.141 120.279 120.737 110.703 110.014 120.164 100.000 30.663 50.092 110.000 60.224 110.291 60.531 60.056 120.000 50.242 110.000 10.000 30.013 100.331 110.000 60.000 10.035 120.001 10.858 100.059 110.650 110.000 50.056 100.353 110.299 100.670 100.000 10.000 20.284 110.484 100.071 60.594 110.720 110.710 100.027 90.068 120.813 90.000 10.005 70.492 90.164 10.274 110.111 110.571 110.307 120.293 80.307 120.150 50.163 120.531 110.002 30.545 30.932 100.093 120.000 10.000 80.002 90.159 100.368 120.581 100.440 120.228 120.406 60.282 120.294 110.000 30.000 10.189 110.060 20.036 40.000 70.000 30.897 70.000 120.525 90.025 120.205 120.771 120.000 70.000 10.593 80.108 70.044 40.000 40.000 10.000 60.282 120.589 100.094 110.169 110.466 120.227 110.419 120.125 30.757 90.002 10.334 110.000 10.000 40.000 20.357 100.000 10.000 50.000 10.582 70.513 110.337 80.612 120.000 70.000 10.250 110.352 120.136 120.724 110.655 30.280 60.000 70.046 110.000 10.606 120.559 100.159 50.102 10.445 50.655 50.000 10.310 120.117 30.000 50.000 10.581 120.026 10.000 10.265 120.483 110.084 120.097 120.044 100.865 120.142 120.588 70.351 100.272 20.596 120.000 10.003 60.622 110.720 70.096 120.000 10.771 110.016 110.772 100.000 10.302 100.194 40.214 90.621 110.197 12
C. Choy, J. Gwak, S. Savarese: 4D Spatio-Temporal ConvNets: Minkowski Convolutional Neural Networks. CVPR 2019
LGroundpermissive0.272 100.485 100.184 100.106 100.476 70.077 70.218 60.000 10.000 30.000 10.547 10.295 80.540 40.746 90.745 100.058 110.112 110.005 10.658 60.077 120.000 60.322 100.178 110.512 90.190 80.199 10.277 100.000 10.000 30.173 40.399 70.000 60.000 10.039 110.000 20.858 100.085 60.676 70.002 30.103 40.498 60.323 90.703 90.000 10.000 20.296 100.549 70.216 10.702 40.768 90.718 90.028 80.092 110.786 110.000 10.000 80.453 110.022 50.251 120.252 70.572 100.348 100.321 60.514 50.063 100.279 110.552 100.000 40.019 110.932 100.132 110.000 10.000 80.000 100.156 120.457 100.623 80.518 90.265 110.358 80.381 100.395 100.000 30.000 10.127 120.012 40.051 10.000 70.000 30.886 90.014 90.437 120.179 30.244 100.826 100.000 70.000 10.599 70.136 10.085 30.000 40.000 10.000 60.565 80.612 90.143 30.207 100.566 100.232 100.446 100.127 20.708 100.000 30.384 60.000 10.000 40.000 20.402 90.000 10.059 30.000 10.525 120.566 80.229 90.659 100.000 70.000 10.265 100.446 90.147 110.720 120.597 50.066 90.000 70.187 40.000 10.726 80.467 120.134 80.000 70.413 100.629 80.000 10.363 110.055 70.022 20.000 10.626 80.000 20.000 10.323 100.479 120.154 110.117 100.028 110.901 100.243 100.415 110.295 120.143 60.610 110.000 10.000 80.777 70.397 120.324 110.000 10.778 100.179 80.702 110.000 10.274 120.404 10.233 70.622 100.398 6
David Rozenberszki, Or Litany, Angela Dai: Language-Grounded Indoor 3D Semantic Segmentation in the Wild. arXiv
AWCS0.305 90.508 90.225 90.142 60.463 90.063 100.195 70.000 10.000 30.000 10.467 20.551 10.504 60.773 60.764 90.142 90.029 120.000 30.626 80.100 80.000 60.360 90.179 100.507 100.137 100.006 40.300 90.000 10.000 30.172 50.364 100.512 40.000 10.056 90.000 20.865 90.093 40.634 120.000 50.071 90.396 100.296 110.876 60.000 10.000 20.373 90.436 110.063 70.749 10.877 50.721 70.131 30.124 90.804 100.000 10.000 80.515 70.010 60.452 80.252 70.578 90.417 60.179 120.484 70.171 40.337 90.606 90.000 40.115 50.937 90.142 80.000 10.008 70.000 100.157 110.484 90.402 120.501 100.339 60.553 40.529 20.478 90.000 30.000 10.404 70.001 60.022 80.077 60.000 30.894 80.219 40.628 50.093 100.305 90.886 10.233 40.000 10.603 60.112 40.023 70.000 40.000 10.000 60.741 20.664 50.097 100.253 90.782 90.264 60.523 80.154 10.707 110.000 30.411 50.000 10.000 40.000 20.332 110.000 10.000 50.000 10.602 40.595 70.185 100.656 110.159 40.000 10.355 80.424 100.154 100.729 100.516 70.220 70.620 20.084 80.000 10.707 90.651 80.173 30.014 60.381 120.582 100.000 10.619 20.049 90.000 50.000 10.702 20.000 20.000 10.302 110.489 100.317 80.334 70.392 30.922 90.254 80.533 90.394 80.129 120.613 100.000 10.000 80.820 20.649 80.749 90.000 10.782 90.282 60.863 40.000 10.288 110.006 70.220 80.633 90.542 2
CSC-Pretrainpermissive0.249 120.455 120.171 110.079 120.418 110.059 110.186 80.000 10.000 30.000 10.335 70.250 100.316 110.766 70.697 120.142 90.170 90.003 20.553 90.112 60.097 10.201 120.186 90.476 120.081 110.000 50.216 120.000 10.000 30.001 120.314 120.000 60.000 10.055 100.000 20.832 120.094 30.659 100.002 30.076 70.310 120.293 120.664 110.000 10.000 20.175 120.634 40.130 20.552 120.686 120.700 120.076 60.110 100.770 120.000 10.000 80.430 120.000 70.319 100.166 100.542 120.327 110.205 110.332 110.052 110.375 80.444 120.000 40.012 120.930 120.203 20.000 10.000 80.046 70.175 90.413 110.592 90.471 110.299 100.152 120.340 110.247 120.000 30.000 10.225 100.058 30.037 30.000 70.207 10.862 110.014 90.548 80.033 110.233 110.816 110.000 70.000 10.542 100.123 30.121 10.019 20.000 10.000 60.463 110.454 120.045 120.128 120.557 110.235 90.441 110.063 80.484 120.000 30.308 120.000 10.000 40.000 20.318 120.000 10.000 50.000 10.545 110.543 90.164 110.734 60.000 70.000 10.215 120.371 110.198 90.743 90.205 110.062 100.000 70.079 90.000 10.683 110.547 110.142 70.000 70.441 60.579 110.000 10.464 100.098 60.041 10.000 10.590 110.000 20.000 10.373 80.494 90.174 100.105 110.001 120.895 110.222 110.537 80.307 110.180 50.625 90.000 10.000 80.591 120.609 100.398 100.000 10.766 120.014 120.638 120.000 10.377 90.004 80.206 100.609 120.465 4
Ji Hou, Benjamin Graham, Matthias Nießner, Saining Xie: Exploring Data-Efficient 3D Scene Understanding with Contrastive Scene Contexts. CVPR 2021


This table lists the benchmark results for the ScanNet200 3D semantic instance scenario.




Method Infoavg ap 25%head ap 25%common ap 25%tail ap 25%alarm clockarmchairbackpackbagballbarbasketbathroom cabinetbathroom counterbathroom stallbathroom stall doorbathroom vanitybathtubbedbenchbicyclebinblackboardblanketblindsboardbookbookshelfbottlebowlboxbroombucketbulletin boardcabinetcalendarcandlecartcase of water bottlescd caseceilingceiling lightchairclockclosetcloset doorcloset rodcloset wallclothesclothes dryercoat rackcoffee kettlecoffee makercoffee tablecolumncomputer towercontainercopiercouchcountercratecupcurtaincushiondecorationdeskdining tabledish rackdishwasherdividerdoordoorframedresserdumbbelldustpanend tablefanfile cabinetfire alarmfire extinguisherfireplacefolded chairfurnitureguitarguitar casehair dryerhandicap barhatheadphonesironing boardjacketkeyboardkeyboard pianokitchen cabinetkitchen counterladderlamplaptoplaundry basketlaundry detergentlaundry hamperledgelightlight switchluggagemachinemailboxmatmattressmicrowavemini fridgemirrormonitormousemusic standnightstandobjectoffice chairottomanovenpaperpaper bagpaper cutterpaper towel dispenserpaper towel rollpersonpianopicturepillarpillowpipeplantplateplungerposterpotted plantpower outletpower stripprinterprojectorprojector screenpurserackradiatorrailrange hoodrecycling binrefrigeratorscaleseatshelfshoeshowershower curtainshower curtain rodshower doorshower floorshower headshower wallsignsinksoap dishsoap dispensersofa chairspeakerstair railstairsstandstoolstorage binstorage containerstorage organizerstovestructurestuffed animalsuitcasetabletelephonetissue boxtoastertoaster oventoilettoilet papertoilet paper dispensertoilet paper holdertoilet seat cover dispensertoweltrash bintrash cantraytubetvtv standvacuum cleanerventwardrobewashing machinewater bottlewater coolerwater pitcherwhiteboardwindowwindowsill
sort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
TD3D Scannet200permissive0.379 20.603 20.306 20.190 20.635 20.073 20.500 10.000 10.000 10.000 10.495 30.735 20.275 51.000 10.979 20.590 20.000 40.021 20.000 30.146 30.000 20.356 20.173 50.795 10.226 20.000 10.173 20.000 10.000 20.226 20.390 20.000 20.000 10.250 10.000 10.706 20.061 30.885 10.093 20.186 20.259 40.200 10.667 10.000 20.000 10.667 20.825 10.250 40.834 41.000 10.958 10.553 10.111 30.748 10.220 20.051 20.866 20.792 10.390 50.045 50.800 20.302 50.517 10.533 30.113 20.427 10.843 20.000 20.458 10.600 10.000 10.101 20.000 10.259 10.717 20.500 20.615 20.520 20.526 20.457 10.270 40.000 10.000 10.400 20.088 20.294 20.181 20.000 11.000 10.400 10.710 50.103 30.477 50.905 20.061 20.000 10.906 20.102 20.232 10.125 20.000 20.003 20.792 31.000 10.000 20.102 30.125 40.559 50.523 30.075 20.715 10.000 20.424 50.000 10.396 20.250 10.638 10.000 10.000 20.000 10.622 50.833 20.221 10.970 10.250 20.038 10.260 20.415 10.125 21.000 11.000 10.857 20.000 20.908 10.012 10.869 30.836 10.635 10.111 10.625 11.000 10.020 20.510 10.003 30.009 21.000 10.778 10.000 10.000 10.370 30.755 10.288 20.333 30.274 21.000 10.557 10.731 20.456 20.433 30.769 50.000 10.000 20.621 41.000 10.458 40.000 10.196 20.817 10.000 10.472 10.222 30.205 50.689 20.274 3
Maksim Kolodiazhnyi, Anna Vorontsova, Anton Konushin, Danila Rukhovich: Top-Down Beats Bottom-Up in 3D Instance Segmentation. WACV 2024
LGround Inst.permissive0.314 30.529 30.225 30.155 30.578 50.010 30.500 10.000 10.000 10.000 10.515 20.556 30.696 11.000 10.927 30.400 30.083 30.000 31.000 10.252 10.000 20.167 30.350 20.731 20.067 30.000 10.123 40.000 10.000 20.036 30.372 30.000 20.000 10.250 10.000 10.569 40.031 50.810 30.000 30.000 40.630 10.183 20.278 30.000 20.000 10.582 40.589 50.500 20.863 31.000 10.940 20.000 40.144 10.716 30.000 30.000 30.484 30.000 30.500 30.400 30.798 30.500 20.278 40.750 10.093 30.166 40.783 30.000 20.200 20.400 20.000 10.000 30.000 10.219 20.539 30.500 20.578 30.413 30.181 50.457 20.375 20.000 10.000 10.050 50.000 40.077 40.000 30.000 10.500 50.000 50.743 30.250 20.488 40.846 30.000 30.000 10.800 30.069 30.000 30.000 30.000 20.000 31.000 10.607 40.000 20.200 10.500 10.694 20.528 20.063 30.659 20.000 20.594 20.000 10.000 30.000 20.571 20.000 10.000 20.000 10.716 40.647 50.221 20.857 40.000 30.000 30.217 30.346 30.071 50.530 51.000 10.429 30.000 20.286 30.000 30.826 50.706 30.208 40.000 30.250 40.744 50.000 30.500 20.042 10.000 30.000 20.746 30.000 10.000 10.517 10.625 30.085 50.333 30.000 41.000 10.378 40.533 50.376 40.042 50.814 30.000 10.000 20.765 31.000 10.600 30.000 10.000 40.667 30.000 10.472 10.333 20.337 30.605 30.305 2
David Rozenberszki, Or Litany, Angela Dai: Language-Grounded Indoor 3D Semantic Segmentation in the Wild.
Mask3D Scannet2000.445 10.653 10.392 10.254 10.648 10.097 10.125 50.000 10.000 10.000 10.657 10.971 10.451 21.000 11.000 10.640 10.500 10.045 11.000 10.241 20.409 10.363 10.440 10.686 30.300 10.000 10.201 10.000 10.009 10.290 10.556 11.000 10.000 10.063 30.000 10.830 10.573 10.844 20.333 10.204 10.058 50.158 50.552 20.056 10.000 11.000 10.725 40.750 10.927 11.000 10.888 40.042 30.120 20.615 40.226 10.250 10.890 10.792 10.677 20.510 20.818 10.699 10.512 20.167 50.125 10.315 20.943 10.309 10.017 30.200 30.000 10.188 10.000 10.183 30.815 11.000 10.827 10.741 10.442 30.414 40.600 10.000 10.000 10.458 10.049 30.321 10.381 10.000 10.908 20.400 10.841 10.260 10.710 10.966 10.265 10.000 10.924 10.152 10.025 20.500 10.027 10.028 11.000 10.556 50.016 10.080 50.500 10.694 30.608 10.084 10.604 30.194 10.538 30.000 10.500 10.000 20.354 40.000 11.000 10.000 10.761 20.930 10.053 40.890 31.000 10.008 20.262 10.358 21.000 11.000 10.792 40.966 11.000 10.765 20.004 20.930 10.780 20.330 20.027 20.625 10.974 40.050 10.412 50.021 20.000 30.000 20.778 10.000 10.000 10.493 20.746 20.454 10.335 20.396 10.930 50.551 21.000 10.552 10.606 10.853 10.000 10.004 10.806 11.000 10.727 20.000 10.042 30.745 20.000 10.399 40.391 10.630 10.721 10.619 1
Jonas Schult, Francis Engelmann, Alexander Hermans, Or Litany, Siyu Tang, Bastian Leibe: Mask3D for 3D Semantic Instance Segmentation. ICRA 2023
Minkowski 34D Inst.permissive0.280 40.488 40.192 50.124 40.593 40.010 40.500 10.000 10.000 10.000 10.447 40.535 40.445 31.000 10.861 40.400 30.225 20.000 30.000 30.142 40.000 20.074 40.342 30.467 50.067 30.000 10.119 50.000 10.000 20.000 40.337 50.000 20.000 10.000 40.000 10.506 50.070 20.804 40.000 30.000 40.333 30.172 30.150 50.000 20.000 10.479 50.745 30.000 50.830 51.000 10.904 30.167 20.090 40.732 20.000 30.000 30.443 40.000 30.500 30.542 10.772 50.396 40.077 50.385 40.044 40.118 50.777 40.000 20.000 40.200 30.000 10.000 30.000 10.148 40.502 40.500 20.419 40.159 50.281 40.404 50.317 30.000 10.000 10.200 30.000 40.077 30.000 30.000 10.750 30.200 30.715 40.021 40.551 20.828 50.000 30.000 10.743 40.059 50.000 30.000 30.000 20.000 30.125 50.648 30.000 20.191 20.500 10.669 40.502 40.000 50.568 40.000 20.516 40.000 10.000 30.000 20.305 50.000 10.000 20.000 10.825 10.833 20.021 50.918 20.000 30.000 30.191 40.346 40.100 40.981 31.000 10.286 40.000 20.000 50.000 30.868 40.648 50.292 30.000 30.375 31.000 10.000 30.500 20.000 40.333 10.000 20.538 50.000 10.000 10.213 50.518 40.098 40.528 10.250 30.997 30.284 50.677 30.398 30.167 40.790 40.000 10.000 20.618 50.903 50.200 50.000 10.333 10.333 40.000 10.442 30.083 40.213 40.587 40.131 5
C. Choy, J. Gwak, S. Savarese: 4D Spatio-Temporal ConvNets: Minkowski Convolutional Neural Networks. CVPR 2019
CSC-Pretrain Inst.permissive0.275 50.466 50.218 40.110 50.625 30.007 50.500 10.000 10.000 10.000 10.000 50.222 50.377 41.000 10.661 50.400 30.000 40.000 30.000 30.119 50.000 20.000 50.277 40.685 40.067 30.000 10.132 30.000 10.000 20.000 40.367 40.000 20.000 10.000 40.000 10.591 30.055 40.783 50.000 30.014 30.500 20.161 40.278 30.000 20.000 10.667 20.768 20.500 20.866 21.000 10.829 50.000 40.019 50.555 50.000 30.000 30.305 50.000 30.750 10.200 40.783 40.429 30.395 30.677 20.020 50.286 30.584 50.000 20.000 40.115 50.000 10.000 30.000 10.145 50.423 50.500 20.364 50.369 40.571 10.448 30.206 50.000 10.000 10.200 30.106 10.065 50.000 30.000 10.750 30.200 30.774 20.000 50.501 30.841 40.000 30.000 10.692 50.063 40.000 30.000 30.000 20.000 30.500 40.649 20.000 20.084 40.125 40.719 10.413 50.004 40.450 50.000 20.638 10.000 10.000 30.000 20.505 30.000 10.000 20.000 10.727 30.833 20.221 20.779 50.000 30.000 30.168 50.311 50.125 20.571 40.500 50.143 50.000 20.250 40.000 30.869 20.667 40.162 50.000 30.250 41.000 10.000 30.500 20.000 40.000 30.000 20.689 40.000 10.000 10.312 40.383 50.114 30.333 30.000 40.997 30.420 30.613 40.212 50.500 20.819 20.000 10.000 20.768 21.000 10.918 10.000 10.000 40.278 50.000 10.333 50.000 50.353 20.546 50.258 4
Ji Hou, Benjamin Graham, Matthias Nießner, Saining Xie: Exploring Data-Efficient 3D Scene Understanding with Contrastive Scene Contexts. CVPR 2021


ScanNet Benchmark

This table lists the benchmark results for the 3D semantic label scenario.


Method Infoavg ioubathtubbedbookshelfcabinetchaircountercurtaindeskdoorfloorotherfurniturepicturerefrigeratorshower curtainsinksofatabletoiletwallwindow
sorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
PTv3 ScanNet0.794 10.941 30.813 190.851 70.782 60.890 20.597 10.916 20.696 80.713 30.979 10.635 10.384 20.793 20.907 80.821 40.790 310.696 110.967 30.903 10.805 1
Xiaoyang Wu, Li Jiang, Peng-Shuai Wang, Zhijian Liu, Xihui Liu, Yu Qiao, Wanli Ouyang, Tong He, Hengshuang Zhao: Point Transformer V3: Simpler, Faster, Stronger. CVPR 2024 (Oral)
PonderV20.785 20.978 10.800 270.833 230.788 40.853 160.545 160.910 50.713 10.705 40.979 10.596 70.390 10.769 120.832 410.821 40.792 300.730 10.975 10.897 40.785 4
Haoyi Zhu, Honghui Yang, Xiaoyang Wu, Di Huang, Sha Zhang, Xianglong He, Tong He, Hengshuang Zhao, Chunhua Shen, Yu Qiao, Wanli Ouyang: PonderV2: Pave the Way for 3D Foundataion Model with A Universal Pre-training Paradigm.
Mix3Dpermissive0.781 30.964 20.855 10.843 160.781 70.858 120.575 60.831 330.685 140.714 20.979 10.594 80.310 260.801 10.892 160.841 20.819 40.723 40.940 130.887 60.725 24
Alexey Nekrasov, Jonas Schult, Or Litany, Bastian Leibe, Francis Engelmann: Mix3D: Out-of-Context Data Augmentation for 3D Scenes. 3DV 2021 (Oral)
Swin3Dpermissive0.779 40.861 200.818 140.836 200.790 30.875 40.576 50.905 60.704 50.739 10.969 100.611 20.349 100.756 220.958 10.702 450.805 140.708 70.916 320.898 30.801 2
TTT-KD0.773 50.646 910.818 140.809 350.774 90.878 30.581 20.943 10.687 120.704 50.978 40.607 50.336 150.775 80.912 60.838 30.823 20.694 120.967 30.899 20.794 3
Lisa Weijler, Muhammad Jehanzeb Mirza, Leon Sick, Can Ekkazan, Pedro Hermosilla: TTT-KD: Test-Time Training for 3D Semantic Segmentation through Knowledge Distillation from Foundation Models.
ResLFE_HDS0.772 60.939 40.824 60.854 60.771 100.840 300.564 100.900 80.686 130.677 120.961 160.537 310.348 110.769 120.903 100.785 100.815 60.676 220.939 140.880 110.772 8
OctFormerpermissive0.766 70.925 70.808 230.849 90.786 50.846 260.566 90.876 150.690 100.674 140.960 170.576 170.226 670.753 240.904 90.777 120.815 60.722 50.923 270.877 130.776 7
Peng-Shuai Wang: OctFormer: Octree-based Transformers for 3D Point Clouds. SIGGRAPH 2023
PPT-SpUNet-Joint0.766 70.932 50.794 330.829 250.751 220.854 140.540 200.903 70.630 340.672 150.963 140.565 210.357 80.788 30.900 120.737 250.802 150.685 170.950 70.887 60.780 5
Xiaoyang Wu, Zhuotao Tian, Xin Wen, Bohao Peng, Xihui Liu, Kaicheng Yu, Hengshuang Zhao: Towards Large-scale 3D Representation Learning with Multi-dataset Point Prompt Training. CVPR 2024
OccuSeg+Semantic0.764 90.758 580.796 310.839 180.746 250.907 10.562 110.850 250.680 160.672 150.978 40.610 30.335 170.777 60.819 450.847 10.830 10.691 140.972 20.885 80.727 22
CU-Hybrid Net0.764 90.924 80.819 120.840 170.757 170.853 160.580 30.848 260.709 30.643 240.958 210.587 120.295 330.753 240.884 200.758 190.815 60.725 30.927 240.867 220.743 15
O-CNNpermissive0.762 110.924 80.823 70.844 150.770 110.852 180.577 40.847 280.711 20.640 280.958 210.592 90.217 730.762 170.888 170.758 190.813 100.726 20.932 220.868 210.744 14
Peng-Shuai Wang, Yang Liu, Yu-Xiao Guo, Chun-Yu Sun, Xin Tong: O-CNN: Octree-based Convolutional Neural Networks for 3D Shape Analysis. SIGGRAPH 2017
DTC0.757 120.843 260.820 100.847 120.791 20.862 100.511 330.870 170.707 40.652 200.954 350.604 60.279 440.760 180.942 20.734 260.766 440.701 100.884 540.874 190.736 16
OA-CNN-L_ScanNet200.756 130.783 440.826 50.858 40.776 80.837 330.548 150.896 110.649 260.675 130.962 150.586 130.335 170.771 110.802 490.770 150.787 330.691 140.936 170.880 110.761 10
PNE0.755 140.786 420.835 40.834 220.758 150.849 210.570 80.836 320.648 270.668 170.978 40.581 160.367 60.683 350.856 290.804 60.801 190.678 190.961 50.889 50.716 29
P. Hermosilla: Point Neighborhood Embeddings.
ConDaFormer0.755 140.927 60.822 80.836 200.801 10.849 210.516 300.864 220.651 250.680 110.958 210.584 150.282 410.759 200.855 310.728 280.802 150.678 190.880 590.873 200.756 12
Lunhao Duan, Shanshan Zhao, Nan Xue, Mingming Gong, Guisong Xia, Dacheng Tao: ConDaFormer : Disassembled Transformer with Local Structure Enhancement for 3D Point Cloud Understanding. Neurips, 2023
DMF-Net0.752 160.906 120.793 350.802 410.689 400.825 460.556 120.867 180.681 150.602 440.960 170.555 270.365 70.779 50.859 260.747 220.795 270.717 60.917 310.856 300.764 9
C.Yang, Y.Yan, W.Zhao, J.Ye, X.Yang, A.Hussain, B.Dong, K.Huang: Towards Deeper and Better Multi-view Feature Fusion for 3D Semantic Segmentation. ICONIP 2023
PointTransformerV20.752 160.742 660.809 220.872 10.758 150.860 110.552 130.891 130.610 410.687 60.960 170.559 250.304 290.766 150.926 40.767 160.797 230.644 330.942 110.876 160.722 26
Xiaoyang Wu, Yixing Lao, Li Jiang, Xihui Liu, Hengshuang Zhao: Point Transformer V2: Grouped Vector Attention and Partition-based Pooling. NeurIPS 2022
PointConvFormer0.749 180.793 400.790 360.807 370.750 240.856 130.524 260.881 140.588 530.642 270.977 80.591 100.274 470.781 40.929 30.804 60.796 240.642 340.947 90.885 80.715 30
Wenxuan Wu, Qi Shan, Li Fuxin: PointConvFormer: Revenge of the Point-based Convolution.
BPNetcopyleft0.749 180.909 100.818 140.811 330.752 200.839 320.485 470.842 290.673 180.644 230.957 250.528 370.305 280.773 90.859 260.788 80.818 50.693 130.916 320.856 300.723 25
Wenbo Hu, Hengshuang Zhao, Li Jiang, Jiaya Jia, Tien-Tsin Wong: Bidirectional Projection Network for Cross Dimension Scene Understanding. CVPR 2021 (Oral)
MSP0.748 200.623 940.804 250.859 30.745 260.824 480.501 370.912 40.690 100.685 80.956 260.567 200.320 230.768 140.918 50.720 330.802 150.676 220.921 290.881 100.779 6
StratifiedFormerpermissive0.747 210.901 130.803 260.845 140.757 170.846 260.512 320.825 360.696 80.645 220.956 260.576 170.262 580.744 290.861 250.742 230.770 420.705 80.899 440.860 270.734 17
Xin Lai*, Jianhui Liu*, Li Jiang, Liwei Wang, Hengshuang Zhao, Shu Liu, Xiaojuan Qi, Jiaya Jia: Stratified Transformer for 3D Point Cloud Segmentation. CVPR 2022
VMNetpermissive0.746 220.870 180.838 20.858 40.729 310.850 200.501 370.874 160.587 540.658 190.956 260.564 220.299 310.765 160.900 120.716 360.812 110.631 390.939 140.858 280.709 31
Zeyu HU, Xuyang Bai, Jiaxiang Shang, Runze Zhang, Jiayu Dong, Xin Wang, Guangyuan Sun, Hongbo Fu, Chiew-Lan Tai: VMNet: Voxel-Mesh Network for Geodesic-Aware 3D Semantic Segmentation. ICCV 2021 (Oral)
Virtual MVFusion0.746 220.771 520.819 120.848 110.702 370.865 90.397 850.899 90.699 60.664 180.948 550.588 110.330 190.746 280.851 350.764 170.796 240.704 90.935 180.866 230.728 20
Abhijit Kundu, Xiaoqi Yin, Alireza Fathi, David Ross, Brian Brewington, Thomas Funkhouser, Caroline Pantofaru: Virtual Multi-view Fusion for 3D Semantic Segmentation. ECCV 2020
DiffSeg3D20.745 240.725 750.814 180.837 190.751 220.831 400.514 310.896 110.674 170.684 90.960 170.564 220.303 300.773 90.820 440.713 390.798 220.690 160.923 270.875 170.757 11
Retro-FPN0.744 250.842 270.800 270.767 550.740 270.836 350.541 180.914 30.672 190.626 320.958 210.552 280.272 490.777 60.886 190.696 460.801 190.674 250.941 120.858 280.717 27
Peng Xiang*, Xin Wen*, Yu-Shen Liu, Hui Zhang, Yi Fang, Zhizhong Han: Retrospective Feature Pyramid Network for Point Cloud Semantic Segmentation. ICCV 2023
EQ-Net0.743 260.620 950.799 300.849 90.730 300.822 500.493 440.897 100.664 200.681 100.955 290.562 240.378 30.760 180.903 100.738 240.801 190.673 260.907 360.877 130.745 13
Zetong Yang*, Li Jiang*, Yanan Sun, Bernt Schiele, Jiaya JIa: A Unified Query-based Paradigm for Point Cloud Understanding. CVPR 2022
LRPNet0.742 270.816 350.806 240.807 370.752 200.828 440.575 60.839 310.699 60.637 290.954 350.520 400.320 230.755 230.834 390.760 180.772 390.676 220.915 340.862 250.717 27
SAT0.742 270.860 210.765 490.819 280.769 120.848 230.533 220.829 340.663 210.631 310.955 290.586 130.274 470.753 240.896 140.729 270.760 500.666 280.921 290.855 320.733 18
LargeKernel3D0.739 290.909 100.820 100.806 390.740 270.852 180.545 160.826 350.594 520.643 240.955 290.541 300.263 570.723 330.858 280.775 140.767 430.678 190.933 200.848 370.694 36
Yukang Chen*, Jianhui Liu*, Xiangyu Zhang, Xiaojuan Qi, Jiaya Jia: LargeKernel3D: Scaling up Kernels in 3D Sparse CNNs. CVPR 2023
RPN0.736 300.776 480.790 360.851 70.754 190.854 140.491 460.866 200.596 510.686 70.955 290.536 320.342 130.624 500.869 220.787 90.802 150.628 400.927 240.875 170.704 33
MinkowskiNetpermissive0.736 300.859 220.818 140.832 240.709 350.840 300.521 280.853 240.660 230.643 240.951 450.544 290.286 390.731 310.893 150.675 550.772 390.683 180.874 660.852 350.727 22
C. Choy, J. Gwak, S. Savarese: 4D Spatio-Temporal ConvNets: Minkowski Convolutional Neural Networks. CVPR 2019
IPCA0.731 320.890 140.837 30.864 20.726 320.873 50.530 250.824 370.489 870.647 210.978 40.609 40.336 150.624 500.733 580.758 190.776 370.570 650.949 80.877 130.728 20
PointTransformer++0.725 330.727 740.811 210.819 280.765 130.841 290.502 360.814 420.621 370.623 340.955 290.556 260.284 400.620 520.866 230.781 110.757 540.648 310.932 220.862 250.709 31
SparseConvNet0.725 330.647 900.821 90.846 130.721 330.869 60.533 220.754 580.603 470.614 360.955 290.572 190.325 210.710 340.870 210.724 310.823 20.628 400.934 190.865 240.683 39
MatchingNet0.724 350.812 370.812 200.810 340.735 290.834 370.495 430.860 230.572 610.602 440.954 350.512 420.280 430.757 210.845 370.725 300.780 350.606 500.937 160.851 360.700 35
INS-Conv-semantic0.717 360.751 610.759 520.812 320.704 360.868 70.537 210.842 290.609 430.608 400.953 390.534 340.293 340.616 530.864 240.719 350.793 280.640 350.933 200.845 410.663 45
PointMetaBase0.714 370.835 280.785 380.821 260.684 420.846 260.531 240.865 210.614 380.596 480.953 390.500 450.246 630.674 360.888 170.692 470.764 460.624 420.849 810.844 420.675 41
contrastBoundarypermissive0.705 380.769 550.775 430.809 350.687 410.820 530.439 730.812 430.661 220.591 500.945 630.515 410.171 910.633 470.856 290.720 330.796 240.668 270.889 510.847 380.689 37
Liyao Tang, Yibing Zhan, Zhe Chen, Baosheng Yu, Dacheng Tao: Contrastive Boundary Learning for Point Cloud Segmentation. CVPR2022
ClickSeg_Semantic0.703 390.774 500.800 270.793 460.760 140.847 250.471 510.802 460.463 940.634 300.968 120.491 480.271 510.726 320.910 70.706 410.815 60.551 770.878 600.833 430.570 77
RFCR0.702 400.889 150.745 630.813 310.672 450.818 570.493 440.815 410.623 350.610 380.947 570.470 570.249 620.594 560.848 360.705 420.779 360.646 320.892 490.823 490.611 60
Jingyu Gong, Jiachen Xu, Xin Tan, Haichuan Song, Yanyun Qu, Yuan Xie, Lizhuang Ma: Omni-Supervised Point Cloud Segmentation via Gradual Receptive Field Component Reasoning. CVPR2021
One Thing One Click0.701 410.825 320.796 310.723 620.716 340.832 390.433 750.816 390.634 320.609 390.969 100.418 830.344 120.559 680.833 400.715 370.808 130.560 710.902 410.847 380.680 40
JSENetpermissive0.699 420.881 170.762 500.821 260.667 460.800 690.522 270.792 490.613 390.607 410.935 830.492 470.205 780.576 610.853 330.691 490.758 520.652 300.872 690.828 460.649 49
Zeyu HU, Mingmin Zhen, Xuyang BAI, Hongbo Fu, Chiew-lan Tai: JSENet: Joint Semantic Segmentation and Edge Detection Network for 3D Point Clouds. ECCV 2020
One-Thing-One-Click0.693 430.743 650.794 330.655 850.684 420.822 500.497 420.719 680.622 360.617 350.977 80.447 700.339 140.750 270.664 740.703 440.790 310.596 550.946 100.855 320.647 50
Zhengzhe Liu, Xiaojuan Qi, Chi-Wing Fu: One Thing One Click: A Self-Training Approach for Weakly Supervised 3D Semantic Segmentation. CVPR 2021
PicassoNet-IIpermissive0.692 440.732 700.772 440.786 470.677 440.866 80.517 290.848 260.509 800.626 320.952 430.536 320.225 690.545 740.704 650.689 520.810 120.564 700.903 400.854 340.729 19
Huan Lei, Naveed Akhtar, Mubarak Shah, and Ajmal Mian: Geometric feature learning for 3D meshes.
Feature_GeometricNetpermissive0.690 450.884 160.754 560.795 440.647 530.818 570.422 770.802 460.612 400.604 420.945 630.462 600.189 860.563 670.853 330.726 290.765 450.632 380.904 380.821 520.606 64
Kangcheng Liu, Ben M. Chen: https://arxiv.org/abs/2012.09439. arXiv Preprint
FusionNet0.688 460.704 800.741 670.754 590.656 480.829 420.501 370.741 630.609 430.548 580.950 490.522 390.371 40.633 470.756 530.715 370.771 410.623 430.861 770.814 550.658 46
Feihu Zhang, Jin Fang, Benjamin Wah, Philip Torr: Deep FusionNet for Point Cloud Semantic Segmentation. ECCV 2020
Feature-Geometry Netpermissive0.685 470.866 190.748 600.819 280.645 550.794 720.450 630.802 460.587 540.604 420.945 630.464 590.201 810.554 700.840 380.723 320.732 640.602 530.907 360.822 510.603 67
KP-FCNN0.684 480.847 250.758 540.784 490.647 530.814 600.473 500.772 520.605 450.594 490.935 830.450 680.181 890.587 570.805 480.690 500.785 340.614 460.882 560.819 530.632 56
H. Thomas, C. Qi, J. Deschaud, B. Marcotegui, F. Goulette, L. Guibas.: KPConv: Flexible and Deformable Convolution for Point Clouds. ICCV 2019
VACNN++0.684 480.728 730.757 550.776 520.690 380.804 670.464 560.816 390.577 600.587 510.945 630.508 440.276 460.671 370.710 630.663 600.750 580.589 600.881 570.832 450.653 48
DGNet0.684 480.712 790.784 390.782 510.658 470.835 360.499 410.823 380.641 290.597 470.950 490.487 500.281 420.575 620.619 780.647 680.764 460.620 450.871 720.846 400.688 38
PointContrast_LA_SEM0.683 510.757 590.784 390.786 470.639 570.824 480.408 800.775 510.604 460.541 600.934 870.532 350.269 530.552 710.777 510.645 710.793 280.640 350.913 350.824 480.671 42
Superpoint Network0.683 510.851 240.728 710.800 430.653 500.806 650.468 530.804 440.572 610.602 440.946 600.453 670.239 660.519 790.822 420.689 520.762 490.595 570.895 470.827 470.630 57
VI-PointConv0.676 530.770 540.754 560.783 500.621 610.814 600.552 130.758 560.571 630.557 560.954 350.529 360.268 550.530 770.682 690.675 550.719 670.603 520.888 520.833 430.665 44
Xingyi Li, Wenxuan Wu, Xiaoli Z. Fern, Li Fuxin: The Devils in the Point Clouds: Studying the Robustness of Point Cloud Convolutions.
ROSMRF3D0.673 540.789 410.748 600.763 570.635 590.814 600.407 820.747 600.581 580.573 530.950 490.484 510.271 510.607 540.754 540.649 650.774 380.596 550.883 550.823 490.606 64
SALANet0.670 550.816 350.770 470.768 540.652 510.807 640.451 600.747 600.659 240.545 590.924 930.473 560.149 1010.571 640.811 470.635 740.746 590.623 430.892 490.794 680.570 77
O3DSeg0.668 560.822 330.771 460.496 1050.651 520.833 380.541 180.761 550.555 690.611 370.966 130.489 490.370 50.388 990.580 810.776 130.751 560.570 650.956 60.817 540.646 51
PointConvpermissive0.666 570.781 450.759 520.699 700.644 560.822 500.475 490.779 500.564 660.504 760.953 390.428 770.203 800.586 590.754 540.661 610.753 550.588 610.902 410.813 570.642 52
Wenxuan Wu, Zhongang Qi, Li Fuxin: PointConv: Deep Convolutional Networks on 3D Point Clouds. CVPR 2019
PointASNLpermissive0.666 570.703 810.781 410.751 610.655 490.830 410.471 510.769 530.474 900.537 620.951 450.475 550.279 440.635 450.698 680.675 550.751 560.553 760.816 880.806 590.703 34
Xu Yan, Chaoda Zheng, Zhen Li, Sheng Wang, Shuguang Cui: PointASNL: Robust Point Clouds Processing using Nonlocal Neural Networks with Adaptive Sampling. CVPR 2020
PPCNN++permissive0.663 590.746 630.708 740.722 630.638 580.820 530.451 600.566 960.599 490.541 600.950 490.510 430.313 250.648 420.819 450.616 790.682 820.590 590.869 730.810 580.656 47
Pyunghwan Ahn, Juyoung Yang, Eojindl Yi, Chanho Lee, Junmo Kim: Projection-based Point Convolution for Efficient Point Cloud Segmentation. IEEE Access
MVF-GNN0.658 600.558 1020.751 580.655 850.690 380.722 940.453 590.867 180.579 590.576 520.893 1050.523 380.293 340.733 300.571 830.692 470.659 890.606 500.875 630.804 610.668 43
DCM-Net0.658 600.778 460.702 770.806 390.619 620.813 630.468 530.693 760.494 830.524 680.941 750.449 690.298 320.510 810.821 430.675 550.727 660.568 680.826 860.803 620.637 54
Jonas Schult*, Francis Engelmann*, Theodora Kontogianni, Bastian Leibe: DualConvMesh-Net: Joint Geodesic and Euclidean Convolutions on 3D Meshes. CVPR 2020 [Oral]
HPGCNN0.656 620.698 830.743 650.650 870.564 790.820 530.505 350.758 560.631 330.479 800.945 630.480 530.226 670.572 630.774 520.690 500.735 620.614 460.853 800.776 830.597 70
Jisheng Dang, Qingyong Hu, Yulan Guo, Jun Yang: HPGCNN.
SAFNet-segpermissive0.654 630.752 600.734 690.664 830.583 740.815 590.399 840.754 580.639 300.535 640.942 730.470 570.309 270.665 380.539 850.650 640.708 720.635 370.857 790.793 700.642 52
Linqing Zhao, Jiwen Lu, Jie Zhou: Similarity-Aware Fusion Network for 3D Semantic Segmentation. IROS 2021
RandLA-Netpermissive0.645 640.778 460.731 700.699 700.577 750.829 420.446 650.736 640.477 890.523 700.945 630.454 640.269 530.484 890.749 570.618 770.738 600.599 540.827 850.792 730.621 59
PointConv-SFPN0.641 650.776 480.703 760.721 640.557 820.826 450.451 600.672 810.563 670.483 790.943 720.425 800.162 960.644 430.726 590.659 620.709 710.572 640.875 630.786 780.559 83
MVPNetpermissive0.641 650.831 290.715 720.671 800.590 700.781 780.394 860.679 780.642 280.553 570.937 800.462 600.256 590.649 410.406 990.626 750.691 790.666 280.877 610.792 730.608 63
Maximilian Jaritz, Jiayuan Gu, Hao Su: Multi-view PointNet for 3D Scene Understanding. GMDL Workshop, ICCV 2019
PointMRNet0.640 670.717 780.701 780.692 730.576 760.801 680.467 550.716 690.563 670.459 860.953 390.429 760.169 930.581 600.854 320.605 800.710 690.550 780.894 480.793 700.575 75
FPConvpermissive0.639 680.785 430.760 510.713 680.603 650.798 700.392 870.534 1010.603 470.524 680.948 550.457 620.250 610.538 750.723 610.598 840.696 770.614 460.872 690.799 630.567 80
Yiqun Lin, Zizheng Yan, Haibin Huang, Dong Du, Ligang Liu, Shuguang Cui, Xiaoguang Han: FPConv: Learning Local Flattening for Point Convolution. CVPR 2020
PD-Net0.638 690.797 390.769 480.641 930.590 700.820 530.461 570.537 1000.637 310.536 630.947 570.388 900.206 770.656 390.668 720.647 680.732 640.585 620.868 740.793 700.473 103
PointSPNet0.637 700.734 690.692 850.714 670.576 760.797 710.446 650.743 620.598 500.437 910.942 730.403 860.150 1000.626 490.800 500.649 650.697 760.557 740.846 820.777 820.563 81
SConv0.636 710.830 300.697 810.752 600.572 780.780 800.445 670.716 690.529 730.530 650.951 450.446 710.170 920.507 840.666 730.636 730.682 820.541 840.886 530.799 630.594 71
Supervoxel-CNN0.635 720.656 880.711 730.719 650.613 630.757 890.444 700.765 540.534 720.566 540.928 910.478 540.272 490.636 440.531 870.664 590.645 930.508 910.864 760.792 730.611 60
joint point-basedpermissive0.634 730.614 960.778 420.667 820.633 600.825 460.420 780.804 440.467 920.561 550.951 450.494 460.291 360.566 650.458 940.579 900.764 460.559 730.838 830.814 550.598 69
Hung-Yueh Chiang, Yen-Liang Lin, Yueh-Cheng Liu, Winston H. Hsu: A Unified Point-Based Framework for 3D Segmentation. 3DV 2019
PointMTL0.632 740.731 710.688 880.675 770.591 690.784 770.444 700.565 970.610 410.492 770.949 530.456 630.254 600.587 570.706 640.599 830.665 880.612 490.868 740.791 760.579 74
3DSM_DMMF0.631 750.626 930.745 630.801 420.607 640.751 900.506 340.729 670.565 650.491 780.866 1080.434 720.197 840.595 550.630 770.709 400.705 740.560 710.875 630.740 930.491 98
PointNet2-SFPN0.631 750.771 520.692 850.672 780.524 870.837 330.440 720.706 740.538 710.446 880.944 690.421 820.219 720.552 710.751 560.591 860.737 610.543 830.901 430.768 850.557 84
APCF-Net0.631 750.742 660.687 900.672 780.557 820.792 750.408 800.665 820.545 700.508 730.952 430.428 770.186 870.634 460.702 660.620 760.706 730.555 750.873 670.798 650.581 73
Haojia, Lin: Adaptive Pyramid Context Fusion for Point Cloud Perception. GRSL
FusionAwareConv0.630 780.604 980.741 670.766 560.590 700.747 910.501 370.734 650.503 820.527 660.919 970.454 640.323 220.550 730.420 980.678 540.688 800.544 810.896 460.795 670.627 58
Jiazhao Zhang, Chenyang Zhu, Lintao Zheng, Kai Xu: Fusion-Aware Point Convolution for Online Semantic 3D Scene Segmentation. CVPR 2020
DenSeR0.628 790.800 380.625 1010.719 650.545 840.806 650.445 670.597 900.448 970.519 710.938 790.481 520.328 200.489 880.499 920.657 630.759 510.592 580.881 570.797 660.634 55
SegGroup_sempermissive0.627 800.818 340.747 620.701 690.602 660.764 860.385 910.629 870.490 850.508 730.931 900.409 850.201 810.564 660.725 600.618 770.692 780.539 850.873 670.794 680.548 87
An Tao, Yueqi Duan, Yi Wei, Jiwen Lu, Jie Zhou: SegGroup: Seg-Level Supervision for 3D Instance and Semantic Segmentation. TIP 2022
SIConv0.625 810.830 300.694 830.757 580.563 800.772 840.448 640.647 850.520 760.509 720.949 530.431 750.191 850.496 860.614 790.647 680.672 860.535 870.876 620.783 790.571 76
dtc_net0.625 810.703 810.751 580.794 450.535 850.848 230.480 480.676 800.528 740.469 830.944 690.454 640.004 1140.464 910.636 760.704 430.758 520.548 800.924 260.787 770.492 97
HPEIN0.618 830.729 720.668 910.647 890.597 680.766 850.414 790.680 770.520 760.525 670.946 600.432 730.215 740.493 870.599 800.638 720.617 980.570 650.897 450.806 590.605 66
Li Jiang, Hengshuang Zhao, Shu Liu, Xiaoyong Shen, Chi-Wing Fu, Jiaya Jia: Hierarchical Point-Edge Interaction Network for Point Cloud Semantic Segmentation. ICCV 2019
SPH3D-GCNpermissive0.610 840.858 230.772 440.489 1060.532 860.792 750.404 830.643 860.570 640.507 750.935 830.414 840.046 1110.510 810.702 660.602 820.705 740.549 790.859 780.773 840.534 90
Huan Lei, Naveed Akhtar, and Ajmal Mian: Spherical Kernel for Efficient Graph Convolution on 3D Point Clouds. TPAMI 2020
AttAN0.609 850.760 570.667 920.649 880.521 880.793 730.457 580.648 840.528 740.434 930.947 570.401 870.153 990.454 920.721 620.648 670.717 680.536 860.904 380.765 860.485 99
Gege Zhang, Qinghua Ma, Licheng Jiao, Fang Liu and Qigong Sun: AttAN: Attention Adversarial Networks for 3D Point Cloud Semantic Segmentation. IJCAI2020
wsss-transformer0.600 860.634 920.743 650.697 720.601 670.781 780.437 740.585 930.493 840.446 880.933 880.394 880.011 1130.654 400.661 750.603 810.733 630.526 880.832 840.761 880.480 100
LAP-D0.594 870.720 760.692 850.637 940.456 980.773 830.391 890.730 660.587 540.445 900.940 770.381 910.288 370.434 950.453 960.591 860.649 910.581 630.777 920.749 920.610 62
DPC0.592 880.720 760.700 790.602 980.480 940.762 880.380 920.713 720.585 570.437 910.940 770.369 930.288 370.434 950.509 910.590 880.639 960.567 690.772 940.755 900.592 72
Francis Engelmann, Theodora Kontogianni, Bastian Leibe: Dilated Point Convolutions: On the Receptive Field Size of Point Convolutions on 3D Point Clouds. ICRA 2020
CCRFNet0.589 890.766 560.659 960.683 750.470 970.740 930.387 900.620 890.490 850.476 810.922 950.355 960.245 640.511 800.511 900.571 910.643 940.493 950.872 690.762 870.600 68
ROSMRF0.580 900.772 510.707 750.681 760.563 800.764 860.362 940.515 1020.465 930.465 850.936 820.427 790.207 760.438 930.577 820.536 940.675 850.486 960.723 1000.779 800.524 93
SD-DETR0.576 910.746 630.609 1050.445 1100.517 890.643 1050.366 930.714 710.456 950.468 840.870 1070.432 730.264 560.558 690.674 700.586 890.688 800.482 970.739 980.733 950.537 89
SQN_0.1%0.569 920.676 850.696 820.657 840.497 900.779 810.424 760.548 980.515 780.376 980.902 1040.422 810.357 80.379 1000.456 950.596 850.659 890.544 810.685 1030.665 1060.556 85
TextureNetpermissive0.566 930.672 870.664 930.671 800.494 920.719 950.445 670.678 790.411 1030.396 960.935 830.356 950.225 690.412 970.535 860.565 920.636 970.464 990.794 910.680 1030.568 79
Jingwei Huang, Haotian Zhang, Li Yi, Thomas Funkerhouser, Matthias Niessner, Leonidas Guibas: TextureNet: Consistent Local Parametrizations for Learning from High-Resolution Signals on Meshes. CVPR
DVVNet0.562 940.648 890.700 790.770 530.586 730.687 990.333 980.650 830.514 790.475 820.906 1010.359 940.223 710.340 1020.442 970.422 1050.668 870.501 920.708 1010.779 800.534 90
Pointnet++ & Featurepermissive0.557 950.735 680.661 950.686 740.491 930.744 920.392 870.539 990.451 960.375 990.946 600.376 920.205 780.403 980.356 1020.553 930.643 940.497 930.824 870.756 890.515 94
GMLPs0.538 960.495 1070.693 840.647 890.471 960.793 730.300 1010.477 1030.505 810.358 1010.903 1030.327 990.081 1080.472 900.529 880.448 1030.710 690.509 890.746 960.737 940.554 86
PanopticFusion-label0.529 970.491 1080.688 880.604 970.386 1030.632 1060.225 1110.705 750.434 1000.293 1070.815 1090.348 970.241 650.499 850.669 710.507 960.649 910.442 1050.796 900.602 1100.561 82
Gaku Narita, Takashi Seno, Tomoya Ishikawa, Yohsuke Kaji: PanopticFusion: Online Volumetric Semantic Mapping at the Level of Stuff and Things. IROS 2019 (to appear)
subcloud_weak0.516 980.676 850.591 1080.609 950.442 990.774 820.335 970.597 900.422 1020.357 1020.932 890.341 980.094 1070.298 1040.528 890.473 1010.676 840.495 940.602 1090.721 980.349 110
Online SegFusion0.515 990.607 970.644 990.579 1000.434 1000.630 1070.353 950.628 880.440 980.410 940.762 1130.307 1010.167 940.520 780.403 1000.516 950.565 1010.447 1030.678 1040.701 1000.514 95
Davide Menini, Suryansh Kumar, Martin R. Oswald, Erik Sandstroem, Cristian Sminchisescu, Luc van Gool: A Real-Time Learning Framework for Joint 3D Reconstruction and Semantic Segmentation. Robotics and Automation Letters Submission
3DMV, FTSDF0.501 1000.558 1020.608 1060.424 1120.478 950.690 980.246 1070.586 920.468 910.450 870.911 990.394 880.160 970.438 930.212 1090.432 1040.541 1070.475 980.742 970.727 960.477 101
PCNN0.498 1010.559 1010.644 990.560 1020.420 1020.711 970.229 1090.414 1040.436 990.352 1030.941 750.324 1000.155 980.238 1090.387 1010.493 970.529 1080.509 890.813 890.751 910.504 96
Weakly-Openseg v30.489 1020.749 620.664 930.646 910.496 910.559 1110.122 1140.577 940.257 1140.364 1000.805 1100.198 1120.096 1060.510 810.496 930.361 1090.563 1020.359 1120.777 920.644 1070.532 92
3DMV0.484 1030.484 1090.538 1100.643 920.424 1010.606 1100.310 990.574 950.433 1010.378 970.796 1110.301 1020.214 750.537 760.208 1100.472 1020.507 1110.413 1080.693 1020.602 1100.539 88
Angela Dai, Matthias Niessner: 3DMV: Joint 3D-Multi-View Prediction for 3D Semantic Scene Segmentation. ECCV'18
PointCNN with RGBpermissive0.458 1040.577 1000.611 1040.356 1140.321 1110.715 960.299 1030.376 1080.328 1100.319 1050.944 690.285 1040.164 950.216 1120.229 1070.484 990.545 1060.456 1010.755 950.709 990.475 102
Yangyan Li, Rui Bu, Mingchao Sun, Baoquan Chen: PointCNN. NeurIPS 2018
FCPNpermissive0.447 1050.679 840.604 1070.578 1010.380 1040.682 1000.291 1040.106 1140.483 880.258 1120.920 960.258 1080.025 1120.231 1110.325 1030.480 1000.560 1040.463 1000.725 990.666 1050.231 114
Dario Rethage, Johanna Wald, Jürgen Sturm, Nassir Navab, Federico Tombari: Fully-Convolutional Point Networks for Large-Scale Point Clouds. ECCV 2018
DGCNN_reproducecopyleft0.446 1060.474 1100.623 1020.463 1080.366 1060.651 1030.310 990.389 1070.349 1080.330 1040.937 800.271 1060.126 1030.285 1050.224 1080.350 1110.577 1000.445 1040.625 1070.723 970.394 106
Yue Wang, Yongbin Sun, Ziwei Liu, Sanjay E. Sarma, Michael M. Bronstein, Justin M. Solomon: Dynamic Graph CNN for Learning on Point Clouds. TOG 2019
PNET20.442 1070.548 1040.548 1090.597 990.363 1070.628 1080.300 1010.292 1090.374 1050.307 1060.881 1060.268 1070.186 870.238 1090.204 1110.407 1060.506 1120.449 1020.667 1050.620 1090.462 104
SurfaceConvPF0.442 1070.505 1060.622 1030.380 1130.342 1090.654 1020.227 1100.397 1060.367 1060.276 1090.924 930.240 1090.198 830.359 1010.262 1050.366 1070.581 990.435 1060.640 1060.668 1040.398 105
Hao Pan, Shilin Liu, Yang Liu, Xin Tong: Convolutional Neural Networks on 3D Surfaces Using Parallel Frames.
Tangent Convolutionspermissive0.438 1090.437 1120.646 980.474 1070.369 1050.645 1040.353 950.258 1110.282 1120.279 1080.918 980.298 1030.147 1020.283 1060.294 1040.487 980.562 1030.427 1070.619 1080.633 1080.352 109
Maxim Tatarchenko, Jaesik Park, Vladlen Koltun, Qian-Yi Zhou: Tangent convolutions for dense prediction in 3d. CVPR 2018
3DWSSS0.425 1100.525 1050.647 970.522 1030.324 1100.488 1140.077 1150.712 730.353 1070.401 950.636 1150.281 1050.176 900.340 1020.565 840.175 1150.551 1050.398 1090.370 1150.602 1100.361 108
SPLAT Netcopyleft0.393 1110.472 1110.511 1110.606 960.311 1120.656 1010.245 1080.405 1050.328 1100.197 1130.927 920.227 1110.000 1160.001 1160.249 1060.271 1140.510 1090.383 1110.593 1100.699 1010.267 112
Hang Su, Varun Jampani, Deqing Sun, Subhransu Maji, Evangelos Kalogerakis, Ming-Hsuan Yang, Jan Kautz: SPLATNet: Sparse Lattice Networks for Point Cloud Processing. CVPR 2018
ScanNet+FTSDF0.383 1120.297 1140.491 1120.432 1110.358 1080.612 1090.274 1050.116 1130.411 1030.265 1100.904 1020.229 1100.079 1090.250 1070.185 1120.320 1120.510 1090.385 1100.548 1110.597 1130.394 106
PointNet++permissive0.339 1130.584 990.478 1130.458 1090.256 1140.360 1150.250 1060.247 1120.278 1130.261 1110.677 1140.183 1130.117 1040.212 1130.145 1140.364 1080.346 1150.232 1150.548 1110.523 1140.252 113
Charles R. Qi, Li Yi, Hao Su, Leonidas J. Guibas: pointnet++: deep hierarchical feature learning on point sets in a metric space.
SSC-UNetpermissive0.308 1140.353 1130.290 1150.278 1150.166 1150.553 1120.169 1130.286 1100.147 1150.148 1150.908 1000.182 1140.064 1100.023 1150.018 1160.354 1100.363 1130.345 1130.546 1130.685 1020.278 111
ScanNetpermissive0.306 1150.203 1150.366 1140.501 1040.311 1120.524 1130.211 1120.002 1160.342 1090.189 1140.786 1120.145 1150.102 1050.245 1080.152 1130.318 1130.348 1140.300 1140.460 1140.437 1150.182 115
Angela Dai, Angel X. Chang, Manolis Savva, Maciej Halber, Thomas Funkhouser, Matthias Nießner: ScanNet: Richly-annotated 3D Reconstructions of Indoor Scenes. CVPR'17
ERROR0.054 1160.000 1160.041 1160.172 1160.030 1160.062 1160.001 1160.035 1150.004 1160.051 1160.143 1160.019 1160.003 1150.041 1140.050 1150.003 1160.054 1160.018 1160.005 1160.264 1160.082 116


This table lists the benchmark results for the 3D semantic instance scenario.




Method Infoavg ap 25%bathtubbedbookshelfcabinetchaircountercurtaindeskdoorotherfurniturepicturerefrigeratorshower curtainsinksofatabletoiletwindow
sorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
OneFormer3Dcopyleft0.896 11.000 11.000 10.913 50.858 50.951 50.786 110.837 160.916 110.908 10.778 50.803 40.750 121.000 10.976 30.926 40.882 50.995 430.849 1
Maxim Kolodiazhnyi, Anna Vorontsova, Anton Konushin, Danila Rukhovich: OneFormer3D: One Transformer for Unified Point Cloud Segmentation.
MG-Former0.887 21.000 10.991 110.837 220.801 190.935 140.887 20.857 90.946 30.891 60.748 130.805 30.739 141.000 10.993 20.809 530.876 121.000 10.842 2
UniPerception0.884 31.000 10.979 170.872 150.869 20.892 230.806 80.890 50.835 260.892 50.755 100.811 10.779 90.955 430.951 40.876 210.914 10.997 360.840 3
InsSSM0.883 41.000 10.996 30.800 350.865 30.960 20.808 70.852 130.940 50.899 40.785 30.810 20.700 181.000 10.912 150.851 380.895 20.997 360.827 5
TST3D0.879 51.000 10.994 60.921 40.807 180.939 110.771 120.887 60.923 90.862 130.722 180.768 110.756 111.000 10.910 250.904 60.836 220.999 350.824 7
SIM3D0.878 61.000 10.972 210.863 170.817 160.952 40.821 50.783 270.890 150.902 30.735 160.797 50.799 81.000 10.931 120.893 120.853 181.000 10.792 13
EV3D0.877 71.000 10.996 50.873 130.854 60.950 60.691 210.783 280.926 60.889 90.754 110.794 80.820 21.000 10.912 150.900 80.860 161.000 10.779 16
TD3Dpermissive0.875 81.000 10.976 200.877 110.783 250.970 10.889 10.828 170.945 40.803 180.713 200.720 200.709 161.000 10.936 100.934 30.873 131.000 10.791 14
Maksim Kolodiazhnyi, Anna Vorontsova, Anton Konushin, Danila Rukhovich: Top-Down Beats Bottom-Up in 3D Instance Segmentation. WACV 2024
Spherical Mask(CtoF)0.875 81.000 10.991 120.873 130.850 70.946 80.691 210.752 320.926 60.889 80.759 80.794 70.820 21.000 10.912 150.900 80.878 91.000 10.769 18
Queryformer0.874 101.000 10.978 190.809 330.876 10.936 130.702 180.716 370.920 100.875 120.766 60.772 100.818 51.000 10.995 10.916 50.892 31.000 10.767 19
SoftGroup++0.874 101.000 10.972 220.947 10.839 100.898 220.556 360.913 20.881 180.756 200.828 20.748 150.821 11.000 10.937 90.937 10.887 41.000 10.821 8
Mask3D0.870 121.000 10.985 140.782 420.818 150.938 120.760 130.749 330.923 80.877 110.760 70.785 90.820 21.000 10.912 150.864 320.878 90.983 490.825 6
Jonas Schult, Francis Engelmann, Alexander Hermans, Or Litany, Siyu Tang, Bastian Leibe: Mask3D for 3D Semantic Instance Segmentation. ICRA 2023
ExtMask3D0.867 131.000 11.000 10.756 490.816 170.940 100.795 90.760 310.862 200.888 100.739 140.763 120.774 101.000 10.929 130.878 200.879 71.000 10.819 10
SoftGrouppermissive0.865 141.000 10.969 230.860 180.860 40.913 180.558 330.899 30.911 120.760 190.828 10.736 170.802 70.981 400.919 140.875 220.877 111.000 10.820 9
Thang Vu, Kookhoi Kim, Tung M. Luu, Xuan Thanh Nguyen, Chang D. Yoo: SoftGroup for 3D Instance Segmentaiton on Point Clouds. CVPR 2022 [Oral]
MAFT0.860 151.000 10.990 130.810 320.829 110.949 70.809 60.688 430.836 250.904 20.751 120.796 60.741 131.000 10.864 350.848 400.837 201.000 10.828 4
IPCA-Inst0.851 161.000 10.968 240.884 100.842 90.862 350.693 200.812 220.888 170.677 320.783 40.698 210.807 61.000 10.911 220.865 310.865 151.000 10.757 22
SPFormerpermissive0.851 161.000 10.994 70.806 340.774 270.942 90.637 250.849 140.859 220.889 70.720 190.730 180.665 231.000 10.911 220.868 300.873 141.000 10.796 12
Sun Jiahao, Qing Chunmei, Tan Junpeng, Xu Xiangmin: Superpoint Transformer for 3D Scene Instance Segmentation. AAAI 2023 [Oral]
Mask3D_evaluation0.843 181.000 10.955 290.847 200.795 210.932 150.750 150.780 290.891 140.818 150.737 150.633 300.703 171.000 10.902 270.870 260.820 230.941 570.805 11
ISBNetpermissive0.835 191.000 10.950 300.731 510.819 130.918 160.790 100.740 340.851 240.831 140.661 280.742 160.650 261.000 10.937 80.814 520.836 211.000 10.765 20
Tuan Duc Ngo, Binh-Son Hua, Khoi Nguyen: ISBNet: a 3D Point Cloud Instance Segmentation Network with Instance-aware Sampling and Box-aware Dynamic Convolution. CVPR 2023
SphereSeg0.835 191.000 10.963 270.891 80.794 220.954 30.822 40.710 380.961 20.721 240.693 260.530 430.653 251.000 10.867 340.857 350.859 170.991 460.771 17
TopoSeg0.832 211.000 10.981 160.933 20.819 140.826 440.524 420.841 150.811 300.681 310.759 90.687 220.727 150.981 400.911 220.883 160.853 191.000 10.756 23
GraphCut0.832 211.000 10.922 440.724 530.798 200.902 210.701 190.856 110.859 210.715 250.706 210.748 140.640 371.000 10.934 110.862 330.880 61.000 10.729 25
PBNetpermissive0.825 231.000 10.963 260.837 240.843 80.865 300.822 30.647 460.878 190.733 220.639 350.683 230.650 261.000 10.853 360.870 270.820 241.000 10.744 24
W.Zhao, Y.Yan, C.Yang, J.Ye,X.Yang,K.Huang: Divide and Conquer: 3D Instance Segmentation With Point-Wise Binarization. ICCV 2023
SSEC0.820 241.000 10.983 150.924 30.826 120.817 470.415 510.899 40.793 340.673 330.731 170.636 280.653 241.000 10.939 70.804 550.878 81.000 10.780 15
DKNet0.815 251.000 10.930 360.844 210.765 310.915 170.534 400.805 240.805 320.807 170.654 290.763 130.650 261.000 10.794 480.881 170.766 281.000 10.758 21
Yizheng Wu, Min Shi, Shuaiyuan Du, Hao Lu, Zhiguo Cao, Weicai Zhong: 3D Instances as 1D Kernels. ECCV 2022
RPGN0.806 261.000 10.992 90.789 370.723 440.891 240.650 240.810 230.832 270.665 350.699 240.658 240.700 181.000 10.881 290.832 440.774 260.997 360.613 45
Shichao Dong, Guosheng Lin, Tzu-Yi Hung: Learning Regional Purity for Instance Segmentation on 3D Point Clouds. ECCV 2022
Box2Mask0.803 271.000 10.962 280.874 120.707 480.887 270.686 230.598 510.961 10.715 260.694 250.469 480.700 181.000 10.912 150.902 70.753 330.997 360.637 39
Julian Chibane, Francis Engelmann, Tuan Anh Tran, Gerard Pons-Moll: Box2Mask: Weakly Supervised 3D Semantic Instance Segmentation Using Bounding Boxes. ECCV 2022
HAISpermissive0.803 271.000 10.994 70.820 280.759 320.855 360.554 370.882 70.827 290.615 410.676 270.638 270.646 351.000 10.912 150.797 580.767 270.994 440.726 26
Shaoyu Chen, Jiemin Fang, Qian Zhang, Wenyu Liu, Xinggang Wang: Hierarchical Aggregation for 3D Instance Segmentation. ICCV 2021
Mask-Group0.792 291.000 10.968 250.812 290.766 300.864 310.460 450.815 210.888 160.598 450.651 320.639 260.600 430.918 460.941 50.896 110.721 401.000 10.723 27
Min Zhong, Xinghao Chen, Xiaokang Chen, Gang Zeng, Yunhe Wang: MaskGroup: Hierarchical Point Grouping and Masking for 3D Instance Segmentation. ICME 2022
CSC-Pretrained0.791 301.000 10.996 30.829 270.767 290.889 260.600 280.819 200.770 390.594 460.620 390.541 400.700 181.000 10.941 50.889 140.763 291.000 10.526 55
SSTNetpermissive0.789 311.000 10.840 580.888 90.717 450.835 400.717 170.684 440.627 540.724 230.652 310.727 190.600 431.000 10.912 150.822 470.757 321.000 10.691 33
Zhihao Liang, Zhihao Li, Songcen Xu, Mingkui Tan, Kui Jia: Instance Segmentation in 3D Scenes using Semantic Superpoint Tree Networks. ICCV2021
GICN0.788 321.000 10.978 180.867 160.781 260.833 410.527 410.824 180.806 310.549 540.596 420.551 360.700 181.000 10.853 360.935 20.733 371.000 10.651 36
DENet0.786 331.000 10.929 370.736 500.750 380.720 600.755 140.934 10.794 330.590 470.561 480.537 410.650 261.000 10.882 280.804 560.789 251.000 10.719 28
DANCENET0.786 331.000 10.936 330.783 400.737 410.852 380.742 160.647 460.765 410.811 160.624 380.579 330.632 401.000 10.909 260.898 100.696 450.944 530.601 48
DualGroup0.782 351.000 10.927 380.811 300.772 280.853 370.631 270.805 240.773 360.613 420.611 400.610 310.650 260.835 570.881 290.879 190.750 351.000 10.675 34
PointGroup0.778 361.000 10.900 480.798 360.715 460.863 320.493 430.706 390.895 130.569 520.701 220.576 340.639 381.000 10.880 310.851 370.719 410.997 360.709 30
Li Jiang, Hengshuang Zhao, Shaoshuai Shi, Shu Liu, Chi-Wing Fu, Jiaya Jia: PointGroup: Dual-Set Point Grouping for 3D Instance Segmentation. CVPR 2020 [oral]
PE0.776 371.000 10.900 490.860 180.728 430.869 280.400 520.857 100.774 350.568 530.701 230.602 320.646 350.933 450.843 390.890 130.691 490.997 360.709 29
Biao Zhang, Peter Wonka: Point Cloud Instance Segmentation using Probabilistic Embeddings. CVPR 2021
AOIA0.767 381.000 10.937 320.810 310.740 400.906 190.550 380.800 260.706 460.577 510.624 370.544 390.596 480.857 490.879 330.880 180.750 340.992 450.658 35
DD-UNet+Group0.764 391.000 10.897 510.837 230.753 350.830 430.459 470.824 180.699 480.629 390.653 300.438 510.650 261.000 10.880 310.858 340.690 501.000 10.650 37
H. Liu, R. Liu, K. Yang, J. Zhang, K. Peng, R. Stiefelhagen: HIDA: Towards Holistic Indoor Understanding for the Visually Impaired via Semantic Instance Segmentation with a Wearable Solid-State LiDAR Sensor. ICCVW 2021
INS-Conv-instance0.762 401.000 10.923 410.765 450.785 240.905 200.600 280.655 450.646 530.683 300.647 330.530 420.650 261.000 10.824 410.830 450.693 480.944 530.644 38
Dyco3Dcopyleft0.761 411.000 10.935 340.893 70.752 370.863 330.600 280.588 520.742 430.641 370.633 360.546 380.550 500.857 490.789 500.853 360.762 300.987 470.699 31
Tong He; Chunhua Shen; Anton van den Hengel: DyCo3D: Robust Instance Segmentation of 3D Point Clouds through Dynamic Convolution. CVPR2021
OccuSeg+instance0.742 421.000 10.923 410.785 380.745 390.867 290.557 340.578 550.729 440.670 340.644 340.488 460.577 491.000 10.794 480.830 450.620 581.000 10.550 51
Lei Han, Tian Zheng, Lan Xu, Lu Fang: OccuSeg: Occupancy-aware 3D Instance Segmentation. CVPR2020
RWSeg0.739 431.000 10.899 500.759 470.753 360.823 450.282 570.691 420.658 510.582 500.594 430.547 370.628 411.000 10.795 470.868 290.728 391.000 10.692 32
3D-MPA0.737 441.000 10.933 350.785 380.794 230.831 420.279 590.588 520.695 490.616 400.559 490.556 350.650 261.000 10.809 450.875 230.696 461.000 10.608 47
Francis Engelmann, Martin Bokeloh, Alireza Fathi, Bastian Leibe, Matthias Nießner: 3D-MPA: Multi Proposal Aggregation for 3D Semantic Instance Segmentation. CVPR 2020
MTML0.731 451.000 10.992 90.779 440.609 570.746 550.308 560.867 80.601 570.607 430.539 520.519 440.550 501.000 10.824 410.869 280.729 381.000 10.616 43
Jean Lahoud, Bernard Ghanem, Marc Pollefeys, Martin R. Oswald: 3D Instance Segmentation via Multi-task Metric Learning. ICCV 2019 [oral]
OSIS0.725 461.000 10.885 540.653 590.657 540.801 480.576 320.695 410.828 280.698 280.534 530.457 500.500 570.857 490.831 400.841 420.627 561.000 10.619 42
SSEN0.724 471.000 10.926 390.781 430.661 520.845 390.596 310.529 580.764 420.653 360.489 590.461 490.500 570.859 480.765 510.872 250.761 311.000 10.577 49
Dongsu Zhang, Junha Chun, Sang Kyun Cha, Young Min Kim: Spatial Semantic Embedding Network: Fast 3D Instance Segmentation with Deep Metric Learning. Arxiv
NeuralBF0.718 481.000 10.945 310.901 60.754 340.817 460.460 450.700 400.772 370.688 290.568 470.000 700.500 570.981 400.606 610.872 240.740 361.000 10.614 44
Weiwei Sun, Daniel Rebain, Renjie Liao, Vladimir Tankovich, Soroosh Yazdani, Kwang Moo Yi, Andrea Tagliasacchi: NeuralBF: Neural Bilateral Filtering for Top-down Instance Segmentation on Point Clouds. WACV 2023
Sparse R-CNN0.714 491.000 10.926 400.694 540.699 500.890 250.636 260.516 590.693 500.743 210.588 440.369 550.601 420.594 630.800 460.886 150.676 510.986 480.546 52
SALoss-ResNet0.695 501.000 10.855 560.579 640.589 590.735 580.484 440.588 520.856 230.634 380.571 460.298 560.500 571.000 10.824 410.818 480.702 440.935 600.545 53
Zhidong Liang, Ming Yang, Hao Li, Chunxiang Wang: 3D Instance Embedding Learning With a Structure-Aware Loss Function for Point Cloud Segmentation. IEEE Robotics and Automation Letters (IROS2020)
PanopticFusion-inst0.693 511.000 10.852 570.655 580.616 560.788 500.334 540.763 300.771 380.457 640.555 500.652 250.518 540.857 490.765 510.732 640.631 540.944 530.577 50
Gaku Narita, Takashi Seno, Tomoya Ishikawa, Yohsuke Kaji: PanopticFusion: Online Volumetric Semantic Mapping at the Level of Stuff and Things. IROS 2019 (to appear)
Occipital-SCS0.688 521.000 10.913 450.730 520.737 420.743 570.442 480.855 120.655 520.546 550.546 510.263 580.508 560.889 470.568 620.771 610.705 430.889 630.625 41
3D-BoNet0.687 531.000 10.887 530.836 250.587 600.643 670.550 380.620 480.724 450.522 590.501 570.243 590.512 551.000 10.751 530.807 540.661 530.909 620.612 46
Bo Yang, Jianan Wang, Ronald Clark, Qingyong Hu, Sen Wang, Andrew Markham, Niki Trigoni: Learning Object Bounding Boxes for 3D Instance Segmentation on Point Clouds. NeurIPS 2019 Spotlight
ClickSeg_Instance0.685 541.000 10.818 600.600 620.715 470.795 490.557 340.533 570.591 590.601 440.519 550.429 530.638 390.938 440.706 560.817 500.624 570.944 530.502 57
PCJC0.684 551.000 10.895 520.757 480.659 530.862 340.189 660.739 350.606 560.712 270.581 450.515 450.650 260.857 490.357 670.785 590.631 550.889 630.635 40
SPG_WSIS0.678 561.000 10.880 550.836 250.701 490.727 590.273 610.607 500.706 470.541 570.515 560.174 620.600 430.857 490.716 550.846 410.711 421.000 10.506 56
One_Thing_One_Clickpermissive0.675 571.000 10.823 590.782 410.621 550.766 520.211 630.736 360.560 610.586 480.522 540.636 290.453 610.641 610.853 360.850 390.694 470.997 360.411 62
Zhengzhe Liu, Xiaojuan Qi, Chi-Wing Fu: One Thing One Click: A Self-Training Approach for Weakly Supervised 3D Semantic Segmentation. CVPR 2021
SegGroup_inspermissive0.637 581.000 10.923 430.593 630.561 610.746 560.143 680.504 600.766 400.485 620.442 600.372 540.530 530.714 580.815 440.775 600.673 521.000 10.431 61
An Tao, Yueqi Duan, Yi Wei, Jiwen Lu, Jie Zhou: SegGroup: Seg-Level Supervision for 3D Instance and Semantic Segmentation. TIP 2022
MASCpermissive0.615 590.711 660.802 610.540 650.757 330.777 510.029 690.577 560.588 600.521 600.600 410.436 520.534 520.697 590.616 600.838 430.526 600.980 500.534 54
Chen Liu, Yasutaka Furukawa: MASC: Multi-scale Affinity with Sparse Convolution for 3D Instance Segmentation.
UNet-backbone0.605 601.000 10.909 460.764 460.603 580.704 610.415 500.301 650.548 620.461 630.394 610.267 570.386 630.857 490.649 590.817 490.504 620.959 510.356 65
3D-SISpermissive0.558 611.000 10.773 620.614 610.503 640.691 630.200 640.412 610.498 650.546 560.311 660.103 660.600 430.857 490.382 640.799 570.445 680.938 590.371 63
Ji Hou, Angela Dai, Matthias Niessner: 3D-SIS: 3D Semantic Instance Segmentation of RGB-D Scans. CVPR 2019
R-PointNet0.544 620.500 690.655 680.661 570.663 510.765 530.432 490.214 680.612 550.584 490.499 580.204 610.286 670.429 660.655 580.650 690.539 590.950 520.499 58
Hier3Dcopyleft0.540 631.000 10.727 630.626 600.467 670.693 620.200 640.412 610.480 660.528 580.318 650.077 690.600 430.688 600.382 640.768 620.472 640.941 570.350 66
Tan: HCFS3D: Hierarchical Coupled Feature Selection Network for 3D Semantic and Instance Segmentation.
Region-18class0.497 640.250 710.902 470.689 550.540 620.747 540.276 600.610 490.268 700.489 610.348 620.000 700.243 700.220 690.663 570.814 510.459 660.928 610.496 59
Sem_Recon_ins0.484 650.764 650.608 700.470 670.521 630.637 680.311 550.218 670.348 690.365 680.223 670.222 600.258 680.629 620.734 540.596 700.509 610.858 660.444 60
tmp0.474 661.000 10.727 630.433 690.481 660.673 650.022 710.380 630.517 640.436 660.338 640.128 640.343 650.429 660.291 690.728 650.473 630.833 670.300 68
SemRegionNet-20cls0.470 671.000 10.727 630.447 680.481 650.678 640.024 700.380 630.518 630.440 650.339 630.128 640.350 640.429 660.212 700.711 660.465 650.833 670.290 69
ASIS0.422 680.333 700.707 660.676 560.401 680.650 660.350 530.177 690.594 580.376 670.202 680.077 680.404 620.571 640.197 710.674 680.447 670.500 700.260 70
3D-BEVIS0.401 690.667 670.687 670.419 700.137 710.587 690.188 670.235 660.359 680.211 700.093 710.080 670.311 660.571 640.382 640.754 630.300 700.874 650.357 64
Cathrin Elich, Francis Engelmann, Jonas Schult, Theodora Kontogianni, Bastian Leibe: 3D-BEVIS: Birds-Eye-View Instance Segmentation.
Sgpn_scannet0.390 700.556 680.636 690.493 660.353 690.539 700.271 620.160 700.450 670.359 690.178 690.146 630.250 690.143 700.347 680.698 670.436 690.667 690.331 67
MaskRCNN 2d->3d Proj0.261 710.903 640.081 710.008 710.233 700.175 710.280 580.106 710.150 710.203 710.175 700.480 470.218 710.143 700.542 630.404 710.153 710.393 710.049 71


This table lists the benchmark results for the 2D semantic label scenario.


Method Infoavg ioubathtubbedbookshelfcabinetchaircountercurtaindeskdoorfloorotherfurniturepicturerefrigeratorshower curtainsinksofatabletoiletwallwindow
sorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
Virtual MVFusion (R)0.745 10.861 10.839 10.881 10.672 20.512 10.422 170.898 10.723 10.714 10.954 20.454 10.509 10.773 10.895 10.756 10.820 10.653 10.935 10.891 10.728 1
Abhijit Kundu, Xiaoqi Yin, Alireza Fathi, David Ross, Brian Brewington, Thomas Funkhouser, Caroline Pantofaru: Virtual Multi-view Fusion for 3D Semantic Segmentation. ECCV 2020
BPNet_2Dcopyleft0.670 20.822 30.795 30.836 20.659 30.481 20.451 130.769 40.656 30.567 40.931 30.395 60.390 50.700 40.534 40.689 100.770 20.574 30.865 90.831 30.675 5
Wenbo Hu, Hengshuang Zhao, Li Jiang, Jiaya Jia and Tien-Tsin Wong: Bidirectional Projection Network for Cross Dimension Scene Understanding. CVPR 2021 (Oral)
MVF-GNN(2D)0.636 30.606 140.794 40.434 160.688 10.337 80.464 120.798 30.632 50.589 30.908 80.420 20.329 120.743 20.594 20.738 20.676 50.527 40.906 20.818 60.715 3
CU-Hybrid-2D Net0.636 30.825 20.820 20.179 230.648 40.463 30.549 20.742 70.676 20.628 20.961 10.420 20.379 60.684 80.381 180.732 30.723 30.599 20.827 160.851 20.634 7
CMX0.613 50.681 80.725 120.502 120.634 60.297 180.478 100.830 20.651 40.537 70.924 40.375 70.315 140.686 70.451 140.714 50.543 210.504 60.894 70.823 50.688 4
DMMF_3d0.605 60.651 90.744 100.782 30.637 50.387 40.536 30.732 80.590 70.540 60.856 210.359 110.306 150.596 140.539 30.627 200.706 40.497 80.785 210.757 190.476 22
EMSANet0.600 70.716 40.746 90.395 180.614 90.382 50.523 40.713 110.571 110.503 100.922 60.404 50.397 40.655 90.400 160.626 210.663 60.469 130.900 40.827 40.577 14
Seichter, Daniel and Fischedick, Söhnke and Köhler, Mona and Gross, Horst-Michael: EMSANet: Efficient Multi-Task RGB-D Scene Analysis for Indoor Environments. IJCNN 2022
MCA-Net0.595 80.533 200.756 80.746 40.590 100.334 100.506 70.670 150.587 80.500 120.905 100.366 100.352 90.601 130.506 80.669 160.648 90.501 70.839 150.769 150.516 21
RFBNet0.592 90.616 110.758 70.659 50.581 110.330 110.469 110.655 180.543 140.524 80.924 40.355 130.336 110.572 170.479 100.671 140.648 90.480 100.814 190.814 70.614 10
FAN_NV_RVC0.586 100.510 210.764 60.079 260.620 80.330 110.494 80.753 50.573 90.556 50.884 160.405 40.303 160.718 30.452 130.672 130.658 70.509 50.898 50.813 80.727 2
DCRedNet0.583 110.682 70.723 130.542 110.510 200.310 150.451 130.668 160.549 130.520 90.920 70.375 70.446 20.528 200.417 150.670 150.577 180.478 110.862 100.806 90.628 9
MIX6D_RVC0.582 120.695 50.687 170.225 210.632 70.328 130.550 10.748 60.623 60.494 150.890 140.350 150.254 230.688 60.454 120.716 40.597 170.489 90.881 80.768 160.575 15
SSMAcopyleft0.577 130.695 50.716 150.439 140.563 140.314 140.444 150.719 90.551 120.503 100.887 150.346 160.348 100.603 120.353 200.709 60.600 150.457 140.901 30.786 110.599 13
Abhinav Valada, Rohit Mohan, Wolfram Burgard: Self-Supervised Model Adaptation for Multimodal Semantic Segmentation. International Journal of Computer Vision, 2019
DMMF0.567 140.623 100.767 50.238 200.571 130.347 60.413 190.719 90.472 200.418 220.895 130.357 120.260 220.696 50.523 70.666 170.642 110.437 180.895 60.793 100.603 12
UNIV_CNP_RVC_UE0.566 150.569 190.686 190.435 150.524 170.294 190.421 180.712 120.543 140.463 170.872 170.320 170.363 80.611 110.477 110.686 110.627 120.443 170.862 100.775 140.639 6
EMSAFormer0.564 160.581 160.736 110.564 100.546 160.219 230.517 50.675 140.486 190.427 210.904 110.352 140.320 130.589 150.528 50.708 70.464 240.413 220.847 140.786 110.611 11
SN_RN152pyrx8_RVCcopyleft0.546 170.572 170.663 210.638 70.518 180.298 170.366 240.633 210.510 170.446 190.864 190.296 200.267 190.542 190.346 210.704 80.575 190.431 190.853 130.766 170.630 8
UDSSEG_RVC0.545 180.610 130.661 220.588 80.556 150.268 210.482 90.642 200.572 100.475 160.836 230.312 180.367 70.630 100.189 230.639 190.495 230.452 150.826 170.756 200.541 17
segfomer with 6d0.542 190.594 150.687 170.146 240.579 120.308 160.515 60.703 130.472 200.498 130.868 180.369 90.282 170.589 150.390 170.701 90.556 200.416 210.860 120.759 180.539 19
FuseNetpermissive0.535 200.570 180.681 200.182 220.512 190.290 200.431 160.659 170.504 180.495 140.903 120.308 190.428 30.523 210.365 190.676 120.621 140.470 120.762 220.779 130.541 17
Caner Hazirbas, Lingni Ma, Csaba Domokos, Daniel Cremers: FuseNet: Incorporating Depth into Semantic Segmentation via Fusion-based CNN Architecture. ACCV 2016
AdapNet++copyleft0.503 210.613 120.722 140.418 170.358 260.337 80.370 230.479 240.443 220.368 240.907 90.207 230.213 250.464 240.525 60.618 220.657 80.450 160.788 200.721 230.408 25
Abhinav Valada, Rohit Mohan, Wolfram Burgard: Self-Supervised Model Adaptation for Multimodal Semantic Segmentation. International Journal of Computer Vision, 2019
3DMV (2d proj)0.498 220.481 240.612 230.579 90.456 220.343 70.384 210.623 220.525 160.381 230.845 220.254 220.264 210.557 180.182 240.581 240.598 160.429 200.760 230.661 250.446 24
Angela Dai, Matthias Niessner: 3DMV: Joint 3D-Multi-View Prediction for 3D Semantic Scene Segmentation. ECCV'18
MSeg1080_RVCpermissive0.485 230.505 220.709 160.092 250.427 230.241 220.411 200.654 190.385 260.457 180.861 200.053 260.279 180.503 220.481 90.645 180.626 130.365 240.748 240.725 220.529 20
John Lambert*, Zhuang Liu*, Ozan Sener, James Hays, Vladlen Koltun: MSeg: A Composite Dataset for Multi-domain Semantic Segmentation. CVPR 2020
ILC-PSPNet0.475 240.490 230.581 240.289 190.507 210.067 260.379 220.610 230.417 240.435 200.822 250.278 210.267 190.503 220.228 220.616 230.533 220.375 230.820 180.729 210.560 16
Enet (reimpl)0.376 250.264 260.452 260.452 130.365 240.181 240.143 260.456 250.409 250.346 250.769 260.164 240.218 240.359 250.123 260.403 260.381 260.313 260.571 250.685 240.472 23
Re-implementation of Adam Paszke, Abhishek Chaurasia, Sangpil Kim, Eugenio Culurciello: ENet: A Deep Neural Network Architecture for Real-Time Semantic Segmentation.
ScanNet (2d proj)permissive0.330 260.293 250.521 250.657 60.361 250.161 250.250 250.004 260.440 230.183 260.836 230.125 250.060 260.319 260.132 250.417 250.412 250.344 250.541 260.427 260.109 26
Angela Dai, Angel X. Chang, Manolis Savva, Maciej Halber, Thomas Funkhouser, Matthias Nießner: ScanNet: Richly-annotated 3D Reconstructions of Indoor Scenes. CVPR'17


This table lists the benchmark results for the 2D semantic instance scenario.




Method Infoavg apbathtubbedbookshelfcabinetchaircountercurtaindeskdoorotherfurniturepicturerefrigeratorshower curtainsinksofatabletoiletwindow
sorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
EMSANet (Instance)0.241 10.401 10.439 10.085 10.242 10.220 10.081 10.289 20.117 20.121 10.182 10.126 10.346 10.181 20.181 20.358 10.156 10.675 20.131 1
Seichter, Daniel and Fischedick, Söhnke and Köhler, Mona and Gross, Horst-Michael: EMSANet: Efficient Multi-Task RGB-D Scene Analysis for Indoor Environments. IJCNN 2022
UniDet_RVC0.205 20.381 20.323 30.037 30.226 30.177 30.063 20.277 30.120 10.067 30.131 30.074 30.317 20.080 30.235 10.289 30.141 30.678 10.080 3
FKNet0.204 30.334 30.358 20.038 20.234 20.184 20.025 30.318 10.042 40.088 20.141 20.053 40.300 30.207 10.171 30.292 20.149 20.636 30.109 2
MaskRCNN_ScanNetpermissive0.119 40.129 40.212 40.002 40.112 40.148 40.014 40.205 40.044 30.066 40.078 40.095 20.142 40.030 40.128 40.139 40.080 40.459 40.057 4
Re-implementation of Kaiming He, Georgia Gkioxari, Piotr Dollár, Ross Girshick: Mask R-CNN. ICCV'17


This table lists the benchmark results for the scene type classification scenario.




Method Infoavg recallapartmentbathroombedroom / hotelbookstore / libraryconference roomcopy/mail roomhallwaykitchenlaundry roomliving room / loungemiscofficestorage / basement / garage
sorted bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort bysort by
LAST-PCL-type0.780 10.250 31.000 11.000 11.000 11.000 11.000 10.500 21.000 10.500 20.889 10.000 21.000 11.000 1
Yanmin Wu, Qiankun Gao, Renrui Zhang, and Jian Zhang: Language-Assisted 3D Scene Understanding. arxiv23.12
multi-taskpermissive0.700 20.500 11.000 10.882 30.500 31.000 11.000 10.500 21.000 11.000 10.778 20.000 20.938 20.000 3
Shengyu Huang, Mikhail Usvyatsov, Konrad Schindler: Indoor Scene Recognition in 3D. IROS 2020
3DASPP-SCE0.691 30.500 10.938 30.824 41.000 11.000 10.500 31.000 10.857 30.500 20.556 40.000 20.812 30.500 2
SE-ResNeXt-SSMA0.498 40.000 50.812 40.941 20.500 30.500 40.500 30.500 20.429 50.500 20.667 30.500 10.625 40.000 3
Abhinav Valada, Rohit Mohan, Wolfram Burgard: Self-Supervised Model Adaptation for Multimodal Semantic Segmentation. arXiv
resnet50_scannet0.353 50.250 30.812 40.529 50.500 30.500 40.000 50.500 20.571 40.000 50.556 40.000 20.375 50.000 3