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Privacy-Utility Balanced Voice De-Identification Using Adversarial Examples

Sound 2022-11-11 v1 Cryptography and Security Machine Learning Audio and Speech Processing

Abstract

Faced with the threat of identity leakage during voice data publishing, users are engaged in a privacy-utility dilemma when enjoying convenient voice services. Existing studies employ direct modification or text-based re-synthesis to de-identify users' voices, but resulting in inconsistent audibility in the presence of human participants. In this paper, we propose a voice de-identification system, which uses adversarial examples to balance the privacy and utility of voice services. Instead of typical additive examples inducing perceivable distortions, we design a novel convolutional adversarial example that modulates perturbations into real-world room impulse responses. Benefit from this, our system could preserve user identity from exposure by Automatic Speaker Identification (ASI) while remaining the voice perceptual quality for non-intrusive de-identification. Moreover, our system learns a compact speaker distribution through a conditional variational auto-encoder to sample diverse target embeddings on demand. Combining diverse target generation and input-specific perturbation construction, our system enables any-to-any identify transformation for adaptive de-identification. Experimental results show that our system could achieve 98% and 79% successful de-identification on mainstream ASIs and commercial systems with an objective Mel cepstral distortion of 4.31dB and a subjective mean opinion score of 4.48.

Keywords

Cite

@article{arxiv.2211.05446,
  title  = {Privacy-Utility Balanced Voice De-Identification Using Adversarial Examples},
  author = {Meng Chen and Li Lu and Jiadi Yu and Yingying Chen and Zhongjie Ba and Feng Lin and Kui Ren},
  journal= {arXiv preprint arXiv:2211.05446},
  year   = {2022}
}
R2 v1 2026-06-28T05:35:08.470Z