ModelNet-O: A Large-Scale Synthetic Dataset for Occlusion-Aware Point Cloud Classification
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...
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Zusammenfassung: | 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. |
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DOI: | 10.48550/arxiv.2401.08210 |