Taylor, Can You Hear Me Now? A Taylor-Unfolding Framework for Monaural Speech Enhancement
Andong Li, Shan You, Guochen Yu, Chengshi Zheng, Xiaodong Li

TL;DR
This paper introduces a Taylor-inspired interpretable speech enhancement framework that separates magnitude and phase estimation, achieving state-of-the-art results with improved interpretability and efficiency.
Contribution
It proposes a novel decoupling framework based on Taylor's approximation, enabling interpretable and effective monaural speech enhancement.
Findings
Achieves state-of-the-art performance on benchmark datasets.
Effectively disentangles magnitude and phase for better enhancement.
Provides a lightweight module replacing complex derivative operators.
Abstract
While the deep learning techniques promote the rapid development of the speech enhancement (SE) community, most schemes only pursue the performance in a black-box manner and lack adequate model interpretability. Inspired by Taylor's approximation theory, we propose an interpretable decoupling-style SE framework, which disentangles the complex spectrum recovery into two separate optimization problems \emph{i.e.}, magnitude and complex residual estimation. Specifically, serving as the 0th-order term in Taylor's series, a filter network is delicately devised to suppress the noise component only in the magnitude domain and obtain a coarse spectrum. To refine the phase distribution, we estimate the sparse complex residual, which is defined as the difference between target and coarse spectra, and measures the phase gap. In this study, we formulate the residual component as the combination of…
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Taxonomy
TopicsSpeech and Audio Processing · Indoor and Outdoor Localization Technologies · Advanced Adaptive Filtering Techniques
