Deep Active Speech Cancellation with Mamba-Masking Network
Abstract
We present a novel deep learning network for Active Speech Cancellation (ASC), advancing beyond Active Noise Cancellation (ANC) methods by effectively canceling both noise and speech signals. The proposed Mamba-Masking architecture introduces a masking mechanism that directly interacts with the encoded reference signal, enabling adaptive and precisely aligned anti-signal generation-even under rapidly changing, high-frequency conditions, as commonly found in speech. Complementing this, a multi-band segmentation strategy further improves phase alignment across frequency bands. Additionally, we introduce an optimization-driven loss function that provides near-optimal supervisory signals for anti-signal generation. Experimental results demonstrate substantial performance gains, achieving up to 7.2dB improvement in ANC scenarios and 6.2dB in ASC, significantly outperforming existing methods.
Keywords
Cite
@article{arxiv.2502.01185,
title = {Deep Active Speech Cancellation with Mamba-Masking Network},
author = {Yehuda Mishaly and Lior Wolf and Eliya Nachmani},
journal= {arXiv preprint arXiv:2502.01185},
year = {2025}
}