Convolution has played a prominent role in various applications in science and engineering for many years and has become a key operation in many neural networks. There has been a recent growth of interest in generalizing convolutions on three-dimensional surfaces, often represented as compact manifolds. However, existing approaches cannot preserve all the desirable properties of Euclidean convolutions, namely, compactly supported filters, directionality, and transferability across different manifolds. This paper develops a new generalization of the convolution operation, referred to as parallel transport convolution (PTC), on Riemannian manifolds and their discrete counterparts. PTC is designed based on parallel transportation that can translate information along a manifold and intrinsically preserve directionality. Furthermore, PTC allows for the construction of compactly supported filters and is also robust to manifold deformations. This enables us to perform waveletlike operations and to define convolutional neural networks on curved domains.
机构:
Peking Univ, Beijing Int Ctr Math Res, Beijing, Peoples R ChinaPeking Univ, Beijing Int Ctr Math Res, Beijing, Peoples R China
Jin, Pengfei
Lai, Tianhao
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Peking Univ, Beijing Int Ctr Math Res, Beijing, Peoples R ChinaPeking Univ, Beijing Int Ctr Math Res, Beijing, Peoples R China
Lai, Tianhao
Lai, Rongjie
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Rensselaer Polytech Inst, Dept Math, Troy, NY USAPeking Univ, Beijing Int Ctr Math Res, Beijing, Peoples R China
Lai, Rongjie
Dong, Bin
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Peking Univ, Beijing Int Ctr Math Res, Beijing, Peoples R China
Peking Univ, Ctr Data Sci, Beijing, Peoples R China
Beijing Inst Big Data Res, Beijing, Peoples R ChinaPeking Univ, Beijing Int Ctr Math Res, Beijing, Peoples R China