English

Transferable Adversarial Attacks against ASR

Audio and Speech Processing 2024-11-15 v1 Artificial Intelligence Signal Processing

Abstract

Given the extensive research and real-world applications of automatic speech recognition (ASR), ensuring the robustness of ASR models against minor input perturbations becomes a crucial consideration for maintaining their effectiveness in real-time scenarios. Previous explorations into ASR model robustness have predominantly revolved around evaluating accuracy on white-box settings with full access to ASR models. Nevertheless, full ASR model details are often not available in real-world applications. Therefore, evaluating the robustness of black-box ASR models is essential for a comprehensive understanding of ASR model resilience. In this regard, we thoroughly study the vulnerability of practical black-box attacks in cutting-edge ASR models and propose to employ two advanced time-domain-based transferable attacks alongside our differentiable feature extractor. We also propose a speech-aware gradient optimization approach (SAGO) for ASR, which forces mistranscription with minimal impact on human imperceptibility through voice activity detection rule and a speech-aware gradient-oriented optimizer. Our comprehensive experimental results reveal performance enhancements compared to baseline approaches across five models on two databases.

Keywords

Cite

@article{arxiv.2411.09220,
  title  = {Transferable Adversarial Attacks against ASR},
  author = {Xiaoxue Gao and Zexin Li and Yiming Chen and Cong Liu and Haizhou Li},
  journal= {arXiv preprint arXiv:2411.09220},
  year   = {2024}
}

Comments

IEEE SPL

R2 v1 2026-06-28T19:59:30.525Z