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Main Authors: Sun, Jingqi, He, Shulin, Pang, Ruizhe, Wang, Zhong-Qiu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.05757
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author Sun, Jingqi
He, Shulin
Pang, Ruizhe
Wang, Zhong-Qiu
author_facet Sun, Jingqi
He, Shulin
Pang, Ruizhe
Wang, Zhong-Qiu
contents We address monaural multi-speaker-image separation in reverberant conditions, aiming at separating mixed speakers but preserving the reverberation of each speaker. A straightforward approach for this task is to directly train end-to-end DNN systems to predict the reverberant speech of each speaker based on the input mixture. Although effective, this approach does not explicitly exploit the physical constraint that reverberant speech can be reproduced by convolving the direct-path signal with a linear filter. To address this, we propose CxNet, a two-DNN system with a neural forward filtering module in between. The first DNN is trained to jointly predict the direct-path signal and reverberant speech. Based on the direct-path estimate, the neural forward filtering module estimates the linear filter, and the estimated filter is then convolved with the direct-path estimate to obtain another estimate of reverberant speech, which is utilized as a discriminative feature to help the second DNN better estimate the reverberant speech. By explicitly modeling the linear filter, CxNet could leverage the physical constraint between the direct-path signal and reverberant speech to capture crucial information about reverberation tails. Evaluation results on the SMS-WSJ dataset show the effectiveness of the proposed algorithms.
format Preprint
id arxiv_https___arxiv_org_abs_2510_05757
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Neural Forward Filtering for Speaker-Image Separation
Sun, Jingqi
He, Shulin
Pang, Ruizhe
Wang, Zhong-Qiu
Audio and Speech Processing
We address monaural multi-speaker-image separation in reverberant conditions, aiming at separating mixed speakers but preserving the reverberation of each speaker. A straightforward approach for this task is to directly train end-to-end DNN systems to predict the reverberant speech of each speaker based on the input mixture. Although effective, this approach does not explicitly exploit the physical constraint that reverberant speech can be reproduced by convolving the direct-path signal with a linear filter. To address this, we propose CxNet, a two-DNN system with a neural forward filtering module in between. The first DNN is trained to jointly predict the direct-path signal and reverberant speech. Based on the direct-path estimate, the neural forward filtering module estimates the linear filter, and the estimated filter is then convolved with the direct-path estimate to obtain another estimate of reverberant speech, which is utilized as a discriminative feature to help the second DNN better estimate the reverberant speech. By explicitly modeling the linear filter, CxNet could leverage the physical constraint between the direct-path signal and reverberant speech to capture crucial information about reverberation tails. Evaluation results on the SMS-WSJ dataset show the effectiveness of the proposed algorithms.
title Neural Forward Filtering for Speaker-Image Separation
topic Audio and Speech Processing
url https://arxiv.org/abs/2510.05757