Enregistré dans:
Détails bibliographiques
Auteurs principaux: Nguyen, Khoi Nguyen Tiet, Zhang, Wenyu, Lu, Kangkang, Wu, Yuhuan, Zheng, Xingjian, Tan, Hui Li, Zhen, Liangli
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2408.01934
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866909582765326336
author Nguyen, Khoi Nguyen Tiet
Zhang, Wenyu
Lu, Kangkang
Wu, Yuhuan
Zheng, Xingjian
Tan, Hui Li
Zhen, Liangli
author_facet Nguyen, Khoi Nguyen Tiet
Zhang, Wenyu
Lu, Kangkang
Wu, Yuhuan
Zheng, Xingjian
Tan, Hui Li
Zhen, Liangli
contents Deep learning models achieve remarkable accuracy in computer vision tasks, yet remain vulnerable to adversarial examples--carefully crafted perturbations to input images that can deceive these models into making confident but incorrect predictions. This vulnerability pose significant risks in high-stakes applications such as autonomous vehicles, security surveillance, and safety-critical inspection systems. While the existing literature extensively covers adversarial attacks in image classification, comprehensive analyses of such attacks on object detection systems remain limited. This paper presents a novel taxonomic framework for categorizing adversarial attacks specific to object detection architectures, synthesizes existing robustness metrics, and provides a comprehensive empirical evaluation of state-of-the-art attack methodologies on popular object detection models, including both traditional detectors and modern detectors with vision-language pretraining. Through rigorous analysis of open-source attack implementations and their effectiveness across diverse detection architectures, we derive key insights into attack characteristics. Furthermore, we delineate critical research gaps and emerging challenges to guide future investigations in securing object detection systems against adversarial threats. Our findings establish a foundation for developing more robust detection models while highlighting the urgent need for standardized evaluation protocols in this rapidly evolving domain.
format Preprint
id arxiv_https___arxiv_org_abs_2408_01934
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Survey and Evaluation of Adversarial Attacks for Object Detection
Nguyen, Khoi Nguyen Tiet
Zhang, Wenyu
Lu, Kangkang
Wu, Yuhuan
Zheng, Xingjian
Tan, Hui Li
Zhen, Liangli
Computer Vision and Pattern Recognition
Deep learning models achieve remarkable accuracy in computer vision tasks, yet remain vulnerable to adversarial examples--carefully crafted perturbations to input images that can deceive these models into making confident but incorrect predictions. This vulnerability pose significant risks in high-stakes applications such as autonomous vehicles, security surveillance, and safety-critical inspection systems. While the existing literature extensively covers adversarial attacks in image classification, comprehensive analyses of such attacks on object detection systems remain limited. This paper presents a novel taxonomic framework for categorizing adversarial attacks specific to object detection architectures, synthesizes existing robustness metrics, and provides a comprehensive empirical evaluation of state-of-the-art attack methodologies on popular object detection models, including both traditional detectors and modern detectors with vision-language pretraining. Through rigorous analysis of open-source attack implementations and their effectiveness across diverse detection architectures, we derive key insights into attack characteristics. Furthermore, we delineate critical research gaps and emerging challenges to guide future investigations in securing object detection systems against adversarial threats. Our findings establish a foundation for developing more robust detection models while highlighting the urgent need for standardized evaluation protocols in this rapidly evolving domain.
title A Survey and Evaluation of Adversarial Attacks for Object Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.01934