RTA3: A Real Time Adversarial Attack on Recurrent Neural Networks

Chris R. Serrano, Pape Sylla, Sicun Gao, Michael A. Warren
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引用次数: 3

Abstract

Recurrent neural networks are widely used in machine learning systems that process time series data including health monitoring, object tracking in video, and automatic speech recognition (ASR). While much work has been done demonstrating the vulnerability of deep neural networks to socalled adversarial perturbations, the majority of this work has focused on convolutional neural networks that process non-sequential data for tasks like image recognition. We propose that the unique memory and parameter sharing properties of recurrent neural networks make them susceptible to periodic adversarial perturbations that can exploit these unique features. In this paper, we demonstrate a general application of deep reinforcement learning to the generation of periodic adversarial perturbations in a black-box approach to attack recurrent neural networks processing sequential data. We successfully learn an attack policy to generate adversarial perturbations against the DeepSpeech ASR system and further demonstrate that this attack policy generalizes to a set of unseen examples in real time.
RTA3:递归神经网络的实时对抗性攻击
递归神经网络广泛应用于处理时间序列数据的机器学习系统,包括健康监测、视频中的对象跟踪和自动语音识别(ASR)。虽然已经做了很多工作来证明深度神经网络对所谓的对抗性扰动的脆弱性,但大部分工作都集中在卷积神经网络上,卷积神经网络处理图像识别等任务的非顺序数据。我们提出递归神经网络独特的记忆和参数共享特性使它们容易受到可以利用这些独特特征的周期性对抗性扰动的影响。在本文中,我们展示了深度强化学习在黑箱方法中生成周期性对抗性扰动的一般应用,以攻击处理顺序数据的循环神经网络。我们成功地学习了一种针对DeepSpeech ASR系统产生对抗性扰动的攻击策略,并进一步证明了这种攻击策略可以实时推广到一组看不见的示例。
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