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Ye et al., 2022 - Google Patents

Efficient point cloud segmentation with geometry-aware sparse networks

Ye et al., 2022

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Document ID
11728123164899120438
Author
Ye M
Wan R
Xu S
Cao T
Chen Q
Publication year
Publication venue
European conference on computer vision

External Links

Snippet

In point cloud learning, sparsity and geometry are two core properties. Recently, many approaches have been proposed through single or multiple representations to improve the performance of point cloud semantic segmentation. However, these works fail to maintain …
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