LGAICRSDASMLSep 28, 2018

Characterizing Audio Adversarial Examples Using Temporal Dependency

arXiv:1809.10875v2180 citations
AI Analysis

This work addresses security vulnerabilities in speech recognition systems, offering a domain-specific defense against adversarial attacks.

The paper tackled the problem of adversarial examples in audio data by exploiting temporal dependency to improve robustness in automatic speech recognition systems, showing resistance to adaptive attacks.

Recent studies have highlighted adversarial examples as a ubiquitous threat to different neural network models and many downstream applications. Nonetheless, as unique data properties have inspired distinct and powerful learning principles, this paper aims to explore their potentials towards mitigating adversarial inputs. In particular, our results reveal the importance of using the temporal dependency in audio data to gain discriminate power against adversarial examples. Tested on the automatic speech recognition (ASR) tasks and three recent audio adversarial attacks, we find that (i) input transformation developed from image adversarial defense provides limited robustness improvement and is subtle to advanced attacks; (ii) temporal dependency can be exploited to gain discriminative power against audio adversarial examples and is resistant to adaptive attacks considered in our experiments. Our results not only show promising means of improving the robustness of ASR systems, but also offer novel insights in exploiting domain-specific data properties to mitigate negative effects of adversarial examples.

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