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ModelNet-O: A Large-Scale Synthetic Dataset for Occlusion-Aware Point Cloud Classification

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Recently, 3D point cloud classification has made significant progress with the help of many datasets. However, these datasets do not reflect the incomplete nature of real-world point clouds caused by occlusion, which limits the practical application of current methods. To bridge this gap, we propose ModelNet-O, a large-scale synthetic dataset of 123,041 samples that emulate real-world point clouds with self-occlusion caused by scanning from monocular cameras. ModelNet-O is 10 times larger than existing datasets and offers more challenging cases to evaluate the robustness of existing methods. Our observation on ModelNet-O reveals that well-designed sparse structures can preserve structural information of point clouds under occlusion, motivating us to propose a robust point cloud processing method that leverages a critical point sampling (CPS) strategy in a multi-level manner. We term our method PointMLS. Through extensive experiments, we demonstrate that our PointMLS achieves state-of-the-art results on ModelNet-O and competitive results on regular datasets, and it is robust and effective. More experiments also demonstrate the robustness and effectiveness of PointMLS.

Zhongbin Fang, Xia Li, Xiangtai Li, Shen Zhao, Mengyuan Liu• 2024

Related benchmarks

TaskDatasetResultRank
3D Point Cloud ClassificationScanObjectNN
Accuracy86.6
76
3D Point Cloud ClassificationModelNet40-C (test)
Robustness to Jitter Corruption0.417
25
3D Point Cloud ClassificationModelNet40
Overall Accuracy (OA)94
19
Point Cloud ClassificationModelNet40 (test)
mCE (Error Rate)0.784
17
3D Point Cloud ClassificationModelNet-O Clean
mAcc77.6
13
3D Point Cloud ClassificationModelNet-O η=0.5%
OA78.7
13
3D Point Cloud ClassificationModelNet-O η=2.5%
OA76.7
13
3D Point Cloud ClassificationModelNet-O η=5.0%
OA72.5
13
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