2023
DOI: 10.3390/s23229042
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RST: Rough Set Transformer for Point Cloud Learning

Xinwei Sun,
Kai Zeng

Abstract: Point cloud data generated by LiDAR sensors play a critical role in 3D sensing systems, with applications encompassing object classification, part segmentation, and point cloud recognition. Leveraging the global learning capacity of dot product attention, transformers have recently exhibited outstanding performance in point cloud learning tasks. Nevertheless, existing transformer models inadequately address the challenges posed by uncertainty features in point clouds, which can introduce errors in the dot prod… Show more

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