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Main Authors: Wang, Pengfei, Hui, Xiaofei, Lu, Beijia, Lilith, Nimrod, Liu, Jun, Alam, Sameer
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.07188
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author Wang, Pengfei
Hui, Xiaofei
Lu, Beijia
Lilith, Nimrod
Liu, Jun
Alam, Sameer
author_facet Wang, Pengfei
Hui, Xiaofei
Lu, Beijia
Lilith, Nimrod
Liu, Jun
Alam, Sameer
contents Stereo matching neural networks often involve a Siamese structure to extract intermediate features from left and right images. The similarity between these intermediate left-right features significantly impacts the accuracy of disparity estimation. In this paper, we introduce a novel adversarial attack approach that generates perturbation noise specifically designed to maximize the discrepancy between left and right image features. Extensive experiments demonstrate the superior capability of our method to induce larger prediction errors in stereo neural networks, e.g. outperforming existing state-of-the-art attack methods by 219% MAE on the KITTI dataset and 85% MAE on the Scene Flow dataset. Additionally, we extend our approach to include a proxy network black-box attack method, eliminating the need for access to stereo neural network. This method leverages an arbitrary network from a different vision task as a proxy to generate adversarial noise, effectively causing the stereo network to produce erroneous predictions. Our findings highlight a notable sensitivity of stereo networks to discrepancies in shallow layer features, offering valuable insights that could guide future research in enhancing the robustness of stereo vision systems.
format Preprint
id arxiv_https___arxiv_org_abs_2401_07188
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Left-right Discrepancy for Adversarial Attack on Stereo Networks
Wang, Pengfei
Hui, Xiaofei
Lu, Beijia
Lilith, Nimrod
Liu, Jun
Alam, Sameer
Computer Vision and Pattern Recognition
Stereo matching neural networks often involve a Siamese structure to extract intermediate features from left and right images. The similarity between these intermediate left-right features significantly impacts the accuracy of disparity estimation. In this paper, we introduce a novel adversarial attack approach that generates perturbation noise specifically designed to maximize the discrepancy between left and right image features. Extensive experiments demonstrate the superior capability of our method to induce larger prediction errors in stereo neural networks, e.g. outperforming existing state-of-the-art attack methods by 219% MAE on the KITTI dataset and 85% MAE on the Scene Flow dataset. Additionally, we extend our approach to include a proxy network black-box attack method, eliminating the need for access to stereo neural network. This method leverages an arbitrary network from a different vision task as a proxy to generate adversarial noise, effectively causing the stereo network to produce erroneous predictions. Our findings highlight a notable sensitivity of stereo networks to discrepancies in shallow layer features, offering valuable insights that could guide future research in enhancing the robustness of stereo vision systems.
title Left-right Discrepancy for Adversarial Attack on Stereo Networks
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.07188