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A survey of machine learning techniques in adversarial image forensics

机译:对抗性图像取证中机器学习技术调查

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摘要

Image forensic plays a crucial role in both criminal investigations (e.g., dissemination of fake images to spread racial hate or false narratives about specific ethnicity groups or political campaigns) and civil litigation (e.g., defamation). Increasingly, machine learning approaches are also utilized in image forensics. However, there are also a number of limitations and vulnerabilities associated with machine learning-based approaches (e.g., how to detect adversarial (image) examples), and there are associated real-world consequences (e.g., inadmissible evidence, or wrongful conviction). Therefore, with a focus on image forensics, this paper surveys techniques that can be used to enhance the robustness of machine learning-based binary manipulation detectors in various adversarial scenarios.
机译:图像取证在刑事调查中起着至关重要的作用(例如,对虚假图像传播种族仇恨或虚假叙事对特定的种族群体或政治运动)和民事诉讼(例如,诽谤)传播的种族仇恨或假叙事。越来越多地,机器学习方法也用于图像取证。然而,还存在许多与基于机器学习的方法相关的局限性和漏洞(例如,如何检测对抗性(图像)示例),并且存在相关的真实后果(例如,不可受理的证据或错误的信念)。因此,在图像取证上专注于图像取证,该纸张调查技术可用于增强各种对抗方案中基于机器学习的二元操作检测器的鲁棒性。

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