Point Transformer
Point Transformer Figure 1. The Point Transformer can serve as the backbone for var-ious 3D point cloud understanding tasks such as object classifica-tion, object part segmentation, and semantic scene segmentation. in natural language processing [39,45,5,4,51] and image analysis [10,28,54]. The transformer family of models is
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