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Hauptverfasser: Nokabadi, Fatemeh Nourilenjan, Lalonde, Jean-Francois, Gagné, Christian
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2411.17468
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author Nokabadi, Fatemeh Nourilenjan
Lalonde, Jean-Francois
Gagné, Christian
author_facet Nokabadi, Fatemeh Nourilenjan
Lalonde, Jean-Francois
Gagné, Christian
contents Adversarial perturbations aim to deceive neural networks into predicting inaccurate results. For visual object trackers, adversarial attacks have been developed to generate perturbations by manipulating the outputs. However, transformer trackers predict a specific bounding box instead of an object candidate list, which limits the applicability of many existing attack scenarios. To address this issue, we present a novel white-box approach to attack visual object trackers with transformer backbones using only one bounding box. From the tracker predicted bounding box, we generate a list of adversarial bounding boxes and compute the adversarial loss for those bounding boxes. Experimental results demonstrate that our simple yet effective attack outperforms existing attacks against several robust transformer trackers, including TransT-M, ROMTrack, and MixFormer, on popular benchmark tracking datasets such as GOT-10k, UAV123, and VOT2022STS.
format Preprint
id arxiv_https___arxiv_org_abs_2411_17468
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Adversarial Bounding Boxes Generation (ABBG) Attack against Visual Object Trackers
Nokabadi, Fatemeh Nourilenjan
Lalonde, Jean-Francois
Gagné, Christian
Computer Vision and Pattern Recognition
Adversarial perturbations aim to deceive neural networks into predicting inaccurate results. For visual object trackers, adversarial attacks have been developed to generate perturbations by manipulating the outputs. However, transformer trackers predict a specific bounding box instead of an object candidate list, which limits the applicability of many existing attack scenarios. To address this issue, we present a novel white-box approach to attack visual object trackers with transformer backbones using only one bounding box. From the tracker predicted bounding box, we generate a list of adversarial bounding boxes and compute the adversarial loss for those bounding boxes. Experimental results demonstrate that our simple yet effective attack outperforms existing attacks against several robust transformer trackers, including TransT-M, ROMTrack, and MixFormer, on popular benchmark tracking datasets such as GOT-10k, UAV123, and VOT2022STS.
title Adversarial Bounding Boxes Generation (ABBG) Attack against Visual Object Trackers
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.17468