Novel Defense Method against Audio Adversarial Example for Speech-to-Text Transcription Neural Networks

Keiichi Tamura, Akitada Omagari, Shuichi Hashida
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引用次数: 13

Abstract

With the developments in deep learning, the security of neural networks against vulnerabilities has become one of the most urgent research topics in deep learning. There are many types of security countermeasures. Adversarial examples and their defense methods, in particular, have been well-studied in recent years. An adversarial example is designed to make neural networks misclassify or produce inaccurate output. Audio adversarial examples are a type of adversarial example where the main target of attack is a speech-to-text transcription neural network. In this study, we propose a new defense method against audio adversarial examples for the speech-to-text transcription neural networks. It is difficult to determine whether an input waveform data representing the sound of voice is an audio adversarial example. Therefore, the main framework of the proposed defense method is based on a sandbox approach. To evaluate the proposed defense method, we used actual audio adversarial examples that were created on Deep Speech, which is a speech-to-text transcription neural network. We confirmed that our defense method can identify audio adversarial examples to protect speech-to-text systems.
基于语音到文本转录神经网络的音频对抗性防御新方法
随着深度学习的发展,神经网络对漏洞的安全防范已成为深度学习领域最迫切的研究课题之一。安全对策有很多种。特别是对抗性例子及其防御方法,近年来得到了很好的研究。设计了一个对抗性示例,使神经网络错误分类或产生不准确的输出。音频对抗性示例是一种对抗性示例,其主要攻击目标是语音到文本转录神经网络。在这项研究中,我们提出了一种新的针对语音到文本转录神经网络的音频对抗性示例的防御方法。很难确定表示声音的输入波形数据是否是音频对抗示例。因此,提出的防御方法的主要框架是基于沙盒方法。为了评估提出的防御方法,我们使用了在Deep Speech上创建的实际音频对抗性示例,Deep Speech是一种语音到文本转录神经网络。我们证实,我们的防御方法可以识别音频对抗性示例,以保护语音到文本系统。
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