Hausdorff point convolution with geometric priors

Liqiang Lin, Pengdi Huang, Fuyou Xue, Kai Xu, Daniel Cohen-Or, Hui Huang*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Developing point convolution for irregular point clouds to extract deep features remains challenging. Current methods evaluate the response by computing point set distances which account only for the spatial alignment between two point sets, but not quite for their underlying shapes. Without a shape-aware response, it is hard to characterize the 3D geometry of a point cloud efficiently with a compact set of kernels. In this paper, we advocate the use of modified Hausdorff distance as a shape-aware distance measure for calculating point convolutional responses. The technique we present, coined Hausdorff point convolution (HPC), is shape-aware. We show that HPC constitutes a powerful point feature learning with a rather compact set of only four types of geometric priors as kernels. We further develop an HPC-based deep neural network (HPC-DNN). Task-specific learning can be achieved by tuning the network weights for combining the shortest distances between the input and the kernel point sets. We also realize hierarchical feature learning by designing a multi-kernel HPC for multi-scale feature encoding. Extensive experiments demonstrate that HPC-DNN outperforms strong point convolution baselines (e.g., KPConv), achieving 2.8% mIoU performance boost on S3DIS and 1.5% on SemanticKITTI for semantic segmentation task.

Original languageEnglish
Article number210105
JournalScience China Information Sciences
Volume64
Issue number11
DOIs
StatePublished - Nov 2021
Externally publishedYes

Funding

FundersFunder number
Guangdong Laboratory of Artificial Intelligence and Digital Economy
Guangdong Talent Program2019JC05X328
National Engineering Laboratory for Big Data System Computing Technology
National Natural Science Foundation of China61902254, U2001206
Science, Technology and Innovation Commission of Shenzhen MunicipalityRCJC20200714114435012
Guangdong Provincial Applied Science and Technology Research and Development Program2015A030312015, 2020SFKC059, 2018KZDXM058, 2020A0505100064

    Keywords

    • Hausdorff distance
    • deep neural network
    • geometric prior
    • point convolution

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