A wide variety of adversarial attacks have been proposed and explored using image and audio data. These attacks are notoriously easy to generate digitally when the attacker can directly manipulate the input to a model, but are much more difficult to implement in the real-world. In this paper we present a universal, time invariant attack for general time series data such that the attack has a frequency spectrum primarily composed of the frequencies present in the original data. The universality of the attack makes it fast and easy to implement as no computation is required to add it to an input, while time invariance is useful for real-world deployment. Additionally, the frequency constraint ensures the attack can withstand filtering. We demonstrate the effectiveness of the attack in two different domains, speech recognition and unintended radiated emission, and show that the attack is robust against common transform-and-compare defense pipelines.
翻译:利用图像和音频数据提出并探索了各种各样的对抗性攻击。当攻击者能够直接操纵对模型的输入时,这些攻击在数字上很容易生成,但更难以在现实世界中执行。在本文中,我们提出了一个通用的、时间变化式攻击,用于一般时间序列数据,因此攻击的频谱主要由原始数据中的频率组成。攻击的普遍性使得它能够快速和容易实施,因为不需要计算将其添加到输入中,而时间变化对于现实世界的部署是有用的。此外,频率限制确保攻击能够经受过滤。我们展示了攻击在两个不同领域的效力,即语音识别和意外辐射排放,并表明攻击对通用的变换和相防御管道是强大的。