Family Reunion: Adversarial Machine Learning meets Digital Watermarking

Konrad Rieck
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Abstract

Artificial intelligence is increasingly employed in security-critical systems, such as autonomous cars and drones. Unfortunately, many machine learning techniques suffer from vulnerabilities that enable an adversary to thwart their successful application, either during the training or prediction phase. In this talk, we investigate this threat and discuss attacks against machine learning, such as ad- versarial perturbations and data poisoning. Surprisingly, several of the attacks are not entirely novel, and similar concepts have been developed independently for attacking digital watermarks in multimedia security. We review these similarities and provide links between the two research areas that may open new directions for improving both, machine learning and multimedia security.
家庭团聚:对抗性机器学习与数字水印
人工智能越来越多地应用于安全关键系统,如自动驾驶汽车和无人机。不幸的是,许多机器学习技术都存在漏洞,这些漏洞使攻击者能够在训练或预测阶段阻止它们的成功应用。在这次演讲中,我们调查了这种威胁,并讨论了针对机器学习的攻击,如对抗性扰动和数据中毒。令人惊讶的是,其中一些攻击并不是完全新颖的,并且已经独立开发了类似的概念来攻击多媒体安全中的数字水印。我们回顾了这些相似之处,并提供了两个研究领域之间的联系,这些研究领域可能为改进机器学习和多媒体安全开辟新的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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