Abstract

Shape classification and segmentation of point cloud data are two of the most demanding tasks in photogrammetry and remote sensing applications, which aim to recognize object categories or point labels. Point convolution is an essential operation when designing a network on point clouds for these tasks, which helps to explore 3D local points for feature learning. In this paper, we propose a novel point convolution (PSConv) using separable weights learned with polynomials for 3D point cloud analysis. Specifically, we generalize the traditional convolution defined on the regular data to a 3D point cloud by learning the point convolution kernels based on the polynomials of transformed local point coordinates. We further propose a separable assumption on the convolution kernels to reduce the parameter size and computational cost for our point convolution. Using this novel point convolution, a hierarchical network (PSNet) defined on the point cloud is proposed for 3D shape analysis tasks such as 3D shape classification and segmentation. Experiments are conducted on standard datasets, including synthetic and real scanned ones, and our PSNet achieves state-of-the-art accuracies for shape classification, as well as competitive results for shape segmentation compared with previous methods.

Highlights

  • With the development of 3D sensors, point clouds are becoming an important data type in applications such as autonomous driving, archaeology, robotics, augmented reality [1,2,3]

  • We propose a novel point convolution, i.e., Polynomial-based Separable Convolution (PSConv), to process points, with the convolution constructed based on polynomials

  • We apply our model to two fundamental 3D point cloud analysis tasks: shape classification and segmentation

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Summary

Introduction

With the development of 3D sensors, point clouds are becoming an important data type in applications such as autonomous driving, archaeology, robotics, augmented reality [1,2,3]. For these applications, shape classification and segmentation are two of the fundamental research topics, which aim to automatically recognize 3D object categories or predict point labels [4,5,6,7], and they are the topics of our work. We focus on the processing of irregular and orderless point clouds, and we aim to extract effective point features with a novel point convolution for object categorization and point cloud segmentation

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