14/06/2020

Going Deeper With Lean Point Networks

Eric-Tuan Le, Iasonas Kokkinos, Niloy J. Mitra

Keywords: geometric deep learning, point processing networks, point cloud segmentation, memory-efficient architectures, point convolution

Abstract: In this work we introduce Lean Point Networks (LPNs) to train deeper and more accurate point processing networks by relying on three novel point processing blocks that improve memory consumption, inference time, and accuracy: a convolution-type block for point sets that blends neighborhood information in a memory-efficient manner. a crosslink block that efficiently shares information across low- and high-resolution processing branches. and a multi-resolution point cloud processing block for faster diffusion of information. By combining these blocks, we design wider and deeper point-based architectures. We report systematic accuracy and memory consumption improvements on multiple publicly available segmentation tasks by using our generic modules as drop-in replacements for the blocks of multiple architectures (PointNet++, DGCNN, SpiderNet, PointCNN).

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