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UNet-Based Fusion and Exponential Moving Average Adaptation for Noise-Robust Speaker Recognition

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The joint training of speech enhancement and speaker embedding networks for speaker recognition is widely adopted under noisy acoustic environments. While effective, this paradigm often fails to leverage the generalization and robustness benefits inherent in large-scale speech enhancement pre-training. Moreover, maintaining the speaker information in the denoised speech is not an explicit objective of the speech enhancement process. To address these limitations, we proposed a scalable \textbf{U}Net-based \textbf{F}usion framework (UF-EMA) that considers the noisy and enhanced speech as a multi-channel input, thereby enabling the speaker encoder to exploit speaker information effectively. In addition, an \textbf{E}xponential \textbf{M}oving \textbf{A}verage strategy is applied to a speaker encoder pre-trained on clean speech to mitigate overfitting and facilitate a smooth transition from clean to noisy conditions. Experimental results on multiple noise-contaminated test sets showcase the superiority of the proposed approach.

Chong-Xin Gan, Peter Bell, Man-Wai Mak, Zhe Li, Zezhong Jin, Zilong Huang, Kong Aik Lee• 2026

Related benchmarks

TaskDatasetResultRank
Speaker VerificationVoxCeleb1-O Cleaned (Original)
EER (%)2.55
61
Speaker VerificationVox1-O Noise (test)
Error Rate (0 dB)5.36
18
Speaker VerificationVox1 Music O (test)
Error Rate (0 dB SNR)5.04
9
Speaker VerificationVox1 Overall O (test)
Average EER4.22
9
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