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Generating 3D Adversarial Point Clouds

About

Deep neural networks are known to be vulnerable to adversarial examples which are carefully crafted instances to cause the models to make wrong predictions. While adversarial examples for 2D images and CNNs have been extensively studied, less attention has been paid to 3D data such as point clouds. Given many safety-critical 3D applications such as autonomous driving, it is important to study how adversarial point clouds could affect current deep 3D models. In this work, we propose several novel algorithms to craft adversarial point clouds against PointNet, a widely used deep neural network for point cloud processing. Our algorithms work in two ways: adversarial point perturbation and adversarial point generation. For point perturbation, we shift existing points negligibly. For point generation, we generate either a set of independent and scattered points or a small number (1-3) of point clusters with meaningful shapes such as balls and airplanes which could be hidden in the human psyche. In addition, we formulate six perturbation measurement metrics tailored to the attacks in point clouds and conduct extensive experiments to evaluate the proposed algorithms on the ModelNet40 3D shape classification dataset. Overall, our attack algorithms achieve a success rate higher than 99% for all targeted attacks

Chong Xiang, Charles R. Qi, Bo Li• 2018

Related benchmarks

TaskDatasetResultRank
Point Cloud ClassificationModelNet40
ASR14.03
100
Point Cloud Adversarial AttackModelNet40 (test)
ASR100
83
Point Cloud ClassificationShapeNet part
Accuracy100
80
Point Cloud ClassificationModelNet40 v1 (test)
ASR100
76
Point Cloud Adversarial AttackShapeNetPart
ASR100
46
Adversarial AttackModelNet40
ASR26.6
40
3D Object DetectionWaymo (val)--
38
Adversarial AttackNCALTECH
Success Rate100
26
Adversarial AttackN-MNIST
ASR100
26
Adversarial AttackDVSGesture
Success Rate100
26
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