2021
DOI: 10.48550/arxiv.2104.01754
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Potential Convolution: Embedding Point Clouds into Potential Fields

Dengsheng Chen,
Haowen Deng,
Jun Li
et al.

Abstract: Recently, various convolutions based on continuous or discrete kernels for point cloud processing have been widely studied, and achieve impressive performance in many applications, such as shape classification, scene segmentation and so on. However, they still suffer from some drawbacks. For continuous kernels, the inaccurate estimation of the kernel weights constitutes a bottleneck for further improving the performance; while for discrete ones, the kernels represented as the points located in the 3D space are… Show more

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