Assured Deep Learning: Practical Defense Against Adversarial Attacks

B. Rouhani, Mohammad Samragh, Mojan Javaheripi, T. Javidi, F. Koushanfar
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Abstract

Deep Learning (DL) models have been shown to be vulnerable to adversarial attacks. In light of the adversarial attacks, it is critical to reliably quantify the confidence of the prediction in a neural network to enable safe adoption of DL models in autonomous sensitive tasks (e.g., unmanned vehicles and drones). This article discusses recent research advances for unsupervised model assurance against the strongest adversarial attacks known to date and quantitatively compare their performance. Given the widespread usage of DL models, it is imperative to provide model assurance by carefully looking into the feature maps automatically learned within D1 models instead of looking back with regret when deep learning systems are compromised by adversaries.
有保证的深度学习:对抗性攻击的实用防御
深度学习(DL)模型已被证明容易受到对抗性攻击。鉴于对抗性攻击,可靠地量化神经网络预测的置信度是至关重要的,这样才能在自主敏感任务(例如,无人驾驶车辆和无人机)中安全地采用深度学习模型。本文讨论了针对迄今为止已知的最强对抗性攻击的无监督模型保证的最新研究进展,并定量地比较了它们的性能。鉴于深度学习模型的广泛使用,必须通过仔细研究在D1模型中自动学习的特征映射来提供模型保证,而不是在深度学习系统被对手破坏时后悔地回头看。
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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