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Diffusion Policy Attacker: Crafting Adversarial Attacks for Diffusion-based Policies

About

Diffusion models (DMs) have emerged as a promising approach for behavior cloning (BC). Diffusion policies (DP) based on DMs have elevated BC performance to new heights, demonstrating robust efficacy across diverse tasks, coupled with their inherent flexibility and ease of implementation. Despite the increasing adoption of DP as a foundation for policy generation, the critical issue of safety remains largely unexplored. While previous attempts have targeted deep policy networks, DP used diffusion models as the policy network, making it ineffective to be attacked using previous methods because of its chained structure and randomness injected. In this paper, we undertake a comprehensive examination of DP safety concerns by introducing adversarial scenarios, encompassing offline and online attacks, and global and patch-based attacks. We propose DP-Attacker, a suite of algorithms that can craft effective adversarial attacks across all aforementioned scenarios. We conduct attacks on pre-trained diffusion policies across various manipulation tasks. Through extensive experiments, we demonstrate that DP-Attacker has the capability to significantly decrease the success rate of DP for all scenarios. Particularly in offline scenarios, DP-Attacker can generate highly transferable perturbations applicable to all frames. Furthermore, we illustrate the creation of adversarial physical patches that, when applied to the environment, effectively deceive the model. Video results are put in: https://sites.google.com/view/diffusion-policy-attacker.

Yipu Chen, Haotian Xue, Yongxin Chen• 2024

Related benchmarks

TaskDatasetResultRank
Robotic Manipulation (Square)Square PH
Success Rate4
16
Robotic Manipulation (Lift)Lift PH
Success Rate94
11
Robotic Manipulation (PushT)PushT PH 1.0 (test)
Success Rate46
11
Robotic Manipulation (Can)Can PH 1.0 (test)
Success Rate10
6
Robotic Manipulation (Can)Can MH
Success Rate46
6
Robotic Manipulation (Lift)Lift MH
Success Rate70
6
Robotic Manipulation (Square)Square MH
Success Rate0.00e+0
6
Robotic Manipulation (Toolhang)Toolhang PH
Success Rate0.00e+0
6
Robotic Manipulation (Transport)Transport PH
Success Rate0.00e+0
6
Robotic Manipulation (Transport)Transport MH
Success Rate2
6
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