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ShellNet: Efficient Point Cloud Convolutional Neural Networks using Concentric Shells Statistics
Deep learning with 3D data has progressed significantly since the
introduction of convolutional neural networks that can handle point order
ambiguity in point cloud data. While being able to achieve good accuracies in
various scene understanding tasks, previous methods often have low training
speed and complex network architecture. In this paper, we address these
problems by proposing an efficient end-to-end permutation invariant convolution
for point cloud deep learning. Our simple yet effective convolution operator
named ShellConv uses statistics from concentric spherical shells to define
representative features and resolve the point order ambiguity, allowing
traditional convolution to perform on such features. Based on ShellConv we
further build an efficient neural network named ShellNet to directly consume
the point clouds with larger receptive fields while maintaining less layers. We
demonstrate the efficacy of ShellNet by producing state-of-the-art results on
object classification, object part segmentation, and semantic scene
segmentation while keeping the network very fast to train.Comment: International Conference on Computer Vision (ICCV) 2019 Ora
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