Graph Regulation Network for Point Cloud Segmentation.

Zijin Du, Jianqing Liang, Jiye Liang, Kaixuan Yao, Feilong Cao
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Abstract

In point cloud, some regions typically exist nodes from multiple categories, i.e., these regions have both homophilic and heterophilic nodes. However, most existing methods ignore the heterophily of edges during the aggregation of the neighborhood node features, which inevitably mixes unnecessary information of heterophilic nodes and leads to blurred boundaries of segmentation. To address this problem, we model the point cloud as a homophilic-heterophilic graph and propose a graph regulation network (GRN) to produce finer segmentation boundaries. The proposed method can adaptively adjust the propagation mechanism with the degree of neighborhood homophily. Moreover, we build a prototype feature extraction module, which is utilised to mine the homophily features of nodes from the global prototype space. Theoretically, we prove that our convolution operation can constrain the similarity of representations between nodes based on their degree of homophily. Extensive experiments on fully and weakly supervised point cloud semantic segmentation tasks demonstrate that our method achieves satisfactory performance. Especially in the case of weak supervision, that is, each sample has only 1%-10% labeled points, the proposed method has a significant improvement in segmentation performance.

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用于点云分割的图形调节网络
在点云中,有些区域通常存在多个类别的节点,即这些区域既有同亲节点,也有异亲节点。然而,现有的大多数方法在聚合邻域节点特征时忽略了边缘的异嗜性,这就不可避免地混入了不必要的异嗜性节点信息,导致分割边界模糊。为解决这一问题,我们将点云建模为同亲-异亲图,并提出了一种图调节网络(GRN)来生成更精细的分割边界。所提出的方法可以根据邻域同亲程度自适应地调整传播机制。此外,我们还建立了一个原型特征提取模块,用于从全局原型空间中挖掘节点的同亲特征。从理论上讲,我们证明了我们的卷积操作可以根据节点的同源性程度来约束节点之间的表征相似性。在完全监督和弱监督的点云语义分割任务中进行的大量实验证明,我们的方法取得了令人满意的性能。特别是在弱监督的情况下,即每个样本只有 1%-10%的标注点,所提出的方法在分割性能上有显著提高。
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