NeurIPS2022
Geodesic Self-Attention for 3D Point Clouds
Zhengyu Li, Xuan Tang, Zihao Xu, Xihao Wang, Hui Yu, Mingsong Chen, Xian Wei
被引用 17 次
摘要
Due to the outstanding competence in capturing long-range relationships, self-attention mechanism has achieved remarkable progress in point cloud tasks. Never-theless, point cloud object often has complex non-Euclidean spatial structures, with the behavior changing dynamically and unpredictably. Most current self-attention modules highly rely on the dot product multiplication in Euclidean space, which cannot capture internal non-Euclidean structures of point cloud objects, especially the long-range relationships along the curve of the implicit manifold surface represented by point cloud objects. To address this problem, in this paper, we introduce a novel metric on the Riemannian manifold to capture the long-range geometrical dependencies of point cloud objects to replace traditional self-attention modules, namely, the G eodesic S elf-A ttention (GSA) module. Our approach achieves state-of-the-art performance compared to point cloud Transformers [13, 10, 44, 26] on object classification, few-shot classification and part segmentation benchmarks.