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Self-supervised Adversarial Training of Monocular Depth Estimation against Physical-World Attacks

Self-supervised Adversarial Training of Monocular Depth Estimation against Physical-World Attacks

来源:Arxiv_logoArxiv
英文摘要

Monocular Depth Estimation (MDE) plays a vital role in applications such as autonomous driving. However, various attacks target MDE models, with physical attacks posing significant threats to system security. Traditional adversarial training methods, which require ground-truth labels, are not directly applicable to MDE models that lack ground-truth depth. Some self-supervised model hardening techniques (e.g., contrastive learning) overlook the domain knowledge of MDE, resulting in suboptimal performance. In this work, we introduce a novel self-supervised adversarial training approach for MDE models, leveraging view synthesis without the need for ground-truth depth. We enhance adversarial robustness against real-world attacks by incorporating L_0-norm-bounded perturbation during training. We evaluate our method against supervised learning-based and contrastive learning-based approaches specifically designed for MDE. Our experiments with two representative MDE networks demonstrate improved robustness against various adversarial attacks, with minimal impact on benign performance.

James Liang、Xiangyu Zhang、Qifan Wang、Dongfang Liu、Cheng Han、Zhiyuan Cheng

10.1109/TPAMI.2024.3412632

计算技术、计算机技术

James Liang,Xiangyu Zhang,Qifan Wang,Dongfang Liu,Cheng Han,Zhiyuan Cheng.Self-supervised Adversarial Training of Monocular Depth Estimation against Physical-World Attacks[EB/OL].(2024-06-09)[2025-07-21].https://arxiv.org/abs/2406.05857.点此复制

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