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2025
Conference Paper
Title
Low-Complexity Neural Speech Dereverberation With Adaptive Target Control
Abstract
Existing neural network-based speech dereverberation approaches use a fixed-length early reflection part of the reverberant signal as the target for estimation, irrespective of the severity of reverberation. Such an approach often leads to distortions in the enhanced signals in highly reverberant scenarios. In practice, while some listeners prefer minimal speech distortions, others have a higher tolerance for distortions and prefer a clean signal. To address these points, we propose a novel target definition and a low-complexity neural network for user-controlled single-channel dereverberation. Our target definition is parameterized by the relative amount of reduction in the late reverberation energy. Further, the same parameter is passed as a control input to the dereverberation network for adaptability during inference. Objective and subjective evaluation shows the feasibility of the proposed dereverberation approach.
Author(s)
Mainwork
ICASSP IEEE International Conference on Acoustics Speech and Signal Processing Proceedings
Conference
2025 IEEE International Conference on Acoustics, Speech, and Signal Processing, ICASSP 2025