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SMART: Skeletal Motion Action Recognition aTtack

About

Adversarial attack has inspired great interest in computer vision, by showing that classification-based solutions are prone to imperceptible attack in many tasks. In this paper, we propose a method, SMART, to attack action recognizers which rely on 3D skeletal motions. Our method involves an innovative perceptual loss which ensures the imperceptibility of the attack. Empirical studies demonstrate that SMART is effective in both white-box and black-box scenarios. Its generalizability is evidenced on a variety of action recognizers and datasets. Its versatility is shown in different attacking strategies. Its deceitfulness is proven in extensive perceptual studies. Finally, SMART shows that adversarial attack on 3D skeletal motion, one type of time-series data, is significantly different from traditional adversarial attack problems.

He Wang, Feixiang He, Zhexi Peng, Yongliang Yang, Tianjia Shao, Kun Zhou, David Hogg• 2019

Related benchmarks

TaskDatasetResultRank
Targeted Adversarial AttackHDM05
Attack Success Rate30.31
12
Targeted Adversarial AttackNTU
Attack Success Rate2.27
12
Untargeted Adversarial AttackHDM05
Attack Success Rate8.93e+3
9
Untargeted Adversarial AttackNTU
Attack Success Rate99.33
9
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