基于核主成分分析和几何加权卷积的旋转不变点云分割

Yuqi Li, Qin Yang, Wenrui Dai, Chenglin Li, Junni Zou, H. Xiong
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引用次数: 0

摘要

学习旋转不变量(RI)表示对于受任意旋转干扰的现实世界点云分割具有重要意义。近年来基于主成分分析(PCA)的方法提供了一种有效的方法来对齐点云,并在全局信息保存的情况下生成RI表示。然而,传统的三维坐标PCA不能完全表示高维几何结构,如曲面和曲线,也不能统一对齐这些结构来学习RI表示。在本文中,我们提出了一种新的旋转不变点云分割方法,该方法利用核主成分分析(KPCA)通过非线性映射在投影的高维空间中对齐点云,并开发了一种基于几何的加权卷积(GWConv)来区分分割过程中的部分边界。具体来说,KPCA产生一个具有多项式核的RI表示,用于有效地表示点云中的复杂几何结构。此外,GWConv将几何结构融合到卷积中,并基于RI表示增强具有相似几何形状的相邻点进行细粒度分割。实验结果表明,该方法在ShapeNet上的零件分割性能优于现有的基于pca的零件分割方法。此外,它在复杂的三维形状(如Earphone和Car)上取得了明显的性能提升,并便于围绕零件边界进行分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rotation-Invariant Point Cloud Segmentation With Kernel Principal Component Analysis and Geometry-Based Weighted Convolution
Learning a rotation-invariant (RI) representation is of significant importance for real-world point cloud segmentation that is perturbed by arbitrary rotations. Recent principal component analysis (PCA)-based methods provide an effective alternative to align point clouds and produce the RI representation under the preservation of global information. However, conventional PCA with 3-D coordinates cannot fully represent high-dimensional geometric structures like surfaces and curves and cannot uniformly align these structures for learning RI representation. In this paper, we propose a novel rotation-invariant method for point cloud segmentation, which leverages kernel PCA (KPCA) for aligning point clouds in a projected high-dimensional space via non-linear mapping and develops a Geometry-based Weighted Convolution (GWConv) to distinguish part boundaries during segmentation. Specifically, the KPCA produces a RI representation with polynomial kernels for effectively representing complicated geometric structures in point clouds. Moreover, the GWConv incorporates geometric structures into convolution and enhances neighboring points with similar geometry for fine-grained segmentation based on the RI representation. Experimental results demonstrate that the proposed method can achieve competitive performance with the state-of-the-arts and outperforms existing PCA-based methods in part segmentation on ShapeNet. Furthermore, it achieves evident performance gains on complicated 3-D shapes such as Earphone and Car and facilitates segmentation around the part boundaries.
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