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Papers/PointSCNet: Point Cloud Structure and Correlation Learning...

PointSCNet: Point Cloud Structure and Correlation Learning Based on Space Filling Curve-Guided Sampling

Xingye Chen, Yiqi Wu, Wenjie Xu, Jin Li, Huaiyi Dong, Yilin Chen

2022-02-21Semantic Segmentation3D Point Cloud Classification
PaperPDFCode(official)

Abstract

Geometrical structures and the internal local region relationship, such as symmetry, regular array, junction, etc., are essential for understanding a 3D shape. This paper proposes a point cloud feature extraction network named PointSCNet, to capture the geometrical structure information and local region correlation information of a point cloud. The PointSCNet consists of three main modules: the space-filling curve-guided sampling module, the information fusion module, and the channel-spatial attention module. The space-filling curve-guided sampling module uses Z-order curve coding to sample points that contain geometrical correlation. The information fusion module uses a correlation tensor and a set of skip connections to fuse the structure and correlation information. The channel-spatial attention module enhances the representation of key points and crucial feature channels to refine the network. The proposed PointSCNet is evaluated on shape classification and part segmentation tasks. The experimental results demonstrate that the PointSCNet outperforms or is on par with state-of-the-art methods by learning the structure and correlation of point clouds effectively.

Results

TaskDatasetMetricValueModel
Shape Representation Of 3D Point CloudsModelNet40Mean Accuracy91.4PointSCNet
Shape Representation Of 3D Point CloudsModelNet40Overall Accuracy93.7PointSCNet
3D Point Cloud ClassificationModelNet40Mean Accuracy91.4PointSCNet
3D Point Cloud ClassificationModelNet40Overall Accuracy93.7PointSCNet
3D Point Cloud ReconstructionModelNet40Mean Accuracy91.4PointSCNet
3D Point Cloud ReconstructionModelNet40Overall Accuracy93.7PointSCNet

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