Physics-constrained Attack against Convolution-based Human Motion
Prediction
- URL: http://arxiv.org/abs/2306.11990v3
- Date: Mon, 15 Jan 2024 02:09:08 GMT
- Title: Physics-constrained Attack against Convolution-based Human Motion
Prediction
- Authors: Chengxu Duan, Zhicheng Zhang, Xiaoli Liu, Yonghao Dang and Jianqin Yin
- Abstract summary: We propose a new adversarial attack method that generates the worst-case perturbation by maximizing the human motion predictor's prediction error with physical constraints.
Specifically, we introduce a novel adaptable scheme that facilitates the attack to suit the scale of the target pose and two physical constraints to enhance the naturalness of the adversarial example.
- Score: 10.57307572170918
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Human motion prediction has achieved a brilliant performance with the help of
convolution-based neural networks. However, currently, there is no work
evaluating the potential risk in human motion prediction when facing
adversarial attacks. The adversarial attack will encounter problems against
human motion prediction in naturalness and data scale. To solve the problems
above, we propose a new adversarial attack method that generates the worst-case
perturbation by maximizing the human motion predictor's prediction error with
physical constraints. Specifically, we introduce a novel adaptable scheme that
facilitates the attack to suit the scale of the target pose and two physical
constraints to enhance the naturalness of the adversarial example. The
evaluating experiments on three datasets show that the prediction errors of all
target models are enlarged significantly, which means current convolution-based
human motion prediction models are vulnerable to the proposed attack. Based on
the experimental results, we provide insights on how to enhance the adversarial
robustness of the human motion predictor and how to improve the adversarial
attack against human motion prediction.
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