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Autores principales: Li, Jiachun, Feng, Jianan, Huang, Jianjun, Liang, Bin
Formato: Preprint
Publicado: 2021
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Acceso en línea:https://arxiv.org/abs/2106.05261
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author Li, Jiachun
Feng, Jianan
Huang, Jianjun
Liang, Bin
author_facet Li, Jiachun
Feng, Jianan
Huang, Jianjun
Liang, Bin
contents Recently, object detection has proven vulnerable to adversarial patch attacks. The attackers holding a specially crafted patch can hide themselves from state-of-the-art detectors, e.g., YOLO, even in the physical world. This attack can bring serious security threats, such as escaping from surveillance cameras. How to effectively detect this kind of adversarial examples to catch potential attacks has become an important problem. In this paper, we propose two detection methods: the signature-based method and the signature-independent method. First, we identify two signatures of existing adversarial patches that can be utilized to precisely locate patches within adversarial examples. By employing the signatures, a fast signature-based method is developed to detect the adversarial objects. Second, we present a robust signature-independent method based on the \textit{content semantics consistency} of model outputs. Adversarial objects violate this consistency, appearing locally but disappearing globally, while benign ones remain consistently present. The experiments demonstrate that two proposed methods can effectively detect attacks both in the digital and physical world. These methods each offer distinct advantage. Specifically, the signature-based method is capable of real-time detection, while the signature-independent method can detect unknown adversarial patch attacks and makes defense-aware attacks almost impossible to perform.
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publishDate 2021
record_format arxiv
spellingShingle We Can Always Catch You: Detecting Adversarial Patched Objects WITH or WITHOUT Signature
Li, Jiachun
Feng, Jianan
Huang, Jianjun
Liang, Bin
Computer Vision and Pattern Recognition
Cryptography and Security
Recently, object detection has proven vulnerable to adversarial patch attacks. The attackers holding a specially crafted patch can hide themselves from state-of-the-art detectors, e.g., YOLO, even in the physical world. This attack can bring serious security threats, such as escaping from surveillance cameras. How to effectively detect this kind of adversarial examples to catch potential attacks has become an important problem. In this paper, we propose two detection methods: the signature-based method and the signature-independent method. First, we identify two signatures of existing adversarial patches that can be utilized to precisely locate patches within adversarial examples. By employing the signatures, a fast signature-based method is developed to detect the adversarial objects. Second, we present a robust signature-independent method based on the \textit{content semantics consistency} of model outputs. Adversarial objects violate this consistency, appearing locally but disappearing globally, while benign ones remain consistently present. The experiments demonstrate that two proposed methods can effectively detect attacks both in the digital and physical world. These methods each offer distinct advantage. Specifically, the signature-based method is capable of real-time detection, while the signature-independent method can detect unknown adversarial patch attacks and makes defense-aware attacks almost impossible to perform.
title We Can Always Catch You: Detecting Adversarial Patched Objects WITH or WITHOUT Signature
topic Computer Vision and Pattern Recognition
Cryptography and Security
url https://arxiv.org/abs/2106.05261