Learning Coordinate-based Convolutional Kernels for Continuous SE(3) Equivariant and Efficient Point Cloud Analysis explores ECKConv introduces a novel kernel architecture for efficient SE(3) equivariant learning in point cloud tasks.. Commercial viability score: 3/10 in Point Cloud Analysis.
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