Feature encoding is essential for point cloud analysis. In this paper, we propose a novel point convolution operator named Shell Point Convolution (SPConv) for shape encoding and local context learning. Specifically, SPConv splits 3D neighborhood space into shells, aggregates local features on manually designed kernel points, and performs convolution on the shells. Moreover, SPConv incorporates a simple yet effective attention module that enhances local feature aggregation. Based upon SPConv, a deep neural network named SPNet is constructed to process large-scale point clouds. Poisson disk sampling and feature propagation are incorporated in SPNet for better efficiency and accuracy. We provided details of the shell design and conducted extensive experiments on challenging large-scale point cloud datasets. Experimental results show that SPConv is effective in local shape encoding, and our SPNet is able to achieve top-ranking performances in semantic segmentation tasks.
翻译:特征编码是点云分析的关键。 在本文中, 我们提议了名为壳点变迁( SPConv) 的新点变换操作器, 用于形状编码和本地背景学习。 具体来说, SPConv 将三维相邻空间分割成贝壳, 集成在手工设计的内核点上的本地特征, 并进行贝壳变换。 此外, SPConv 包含一个简单而有效的关注模块, 增强本地特征聚合。 基于 SPConv, 一个名为 SPNet 的深层神经网络被构建来处理大型点云。 Poisson 磁盘取样和特征传播被纳入 SPNet 。 我们提供了贝壳设计的细节, 并对挑战大型点云集数据集进行了广泛的实验。 实验结果显示, SPConv 在本地形状编码中有效, 我们的SPNet 能够在语系分割任务中实现最高级性表现 。