AWARE: Audio Watermarking with Adversarial Resistance to Edits
arXiv:2510.17512v1 Announce Type: cross Abstract: Prevailing practice in learning-based audio watermarking is to pursue robustness by expanding the set of simulated distortions during training. However, such surrogates are narrow and prone to overfitting. This paper presents AWARE (Audio Watermarking with…
