Reversible Spectral Speech Watermarking with Variable Embedding Locations Against Spectrum-Based Attacks
Xuping Huang,
Akinori Ito
Abstract:To guarantee the reliability and integrity of audio, data have been focused on as an essential topic as the fast development of generative AI. Significant progress in machine learning and speech synthesis has increased the potential for audio tampering. In this paper, we focus on the digital watermarking method as a promising method to safeguard the authenticity of audio evidence. Due to the integrity of the original data with probative importance, the algorithm requires reversibility, imperceptibility, and re… Show more
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