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Generating Band-Limited Adversarial Surfaces Using Neural Networks

2021-11-14 19:16:05
Roee Ben Shlomo, Yevgeniy Men, Ido Imanuel

Abstract

Generating adversarial examples is the art of creating a noise that is added to an input signal of a classifying neural network, and thus changing the network's classification, while keeping the noise as tenuous as possible. While the subject is well-researched in the 2D regime, it is lagging behind in the 3D regime, i.e. attacking a classifying network that works on 3D point-clouds or meshes and, for example, classifies the pose of people's 3D scans. As of now, the vast majority of papers that describe adversarial attacks in this regime work by methods of optimization. In this technical report we suggest a neural network that generates the attacks. This network utilizes PointNet's architecture with some alterations. While the previous articles on which we based our work on have to optimize each shape separately, i.e. tailor an attack from scratch for each individual input without any learning, we attempt to create a unified model that can deduce the needed adversarial example with a single forward run.

Abstract (translated)

URL

https://arxiv.org/abs/2111.07424

PDF

https://arxiv.org/pdf/2111.07424.pdf


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