AI RESEARCH
Self Voice Conversion as an Attack against Neural Audio Watermarking
arXiv CS.AI
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ArXi:2601.20432v2 Announce Type: replace-cross Audio watermarking embeds auxiliary information into speech while maintaining speaker identity, linguistic content, and perceptual quality. Although recent advances in neural and digital signal processing-based watermarking methods have improved imperceptibility and embedding capacity, robustness is still primarily assessed against conventional distortions such as compression, additive noise, and resampling. However, the rise of deep learning-based attacks