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Interpreting Representation Quality of DNNs for 3D Point Cloud Processing

2021-11-05NeurIPS 2021Unverified0· sign in to hype

Wen Shen, Qihan Ren, Dongrui Liu, Quanshi Zhang

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Abstract

In this paper, we evaluate the quality of knowledge representations encoded in deep neural networks (DNNs) for 3D point cloud processing. We propose a method to disentangle the overall model vulnerability into the sensitivity to the rotation, the translation, the scale, and local 3D structures. Besides, we also propose metrics to evaluate the spatial smoothness of encoding 3D structures, and the representation complexity of the DNN. Based on such analysis, experiments expose representation problems with classic DNNs, and explain the utility of the adversarial training.

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