Exploring the time-domain deep attractor network with two-stream architectures in a reverberant environment
Hangting Chen, Pengyuan Zhang

TL;DR
This paper introduces a novel time-domain deep attractor network with two-stream architectures designed for speech separation and dereverberation in reverberant environments, outperforming existing methods.
Contribution
It proposes a two-stream TD-DAN that models speaker information and estimates early reflections, improving speech separation in reverberant conditions.
Findings
Achieved SI-SDR gains of 9.79/7.47 dB on reverberant 2/3-speaker sets.
Outperformed baseline DAN and Conv-TasNet by significant margins.
Demonstrated effectiveness of early reflection modeling for dereverberation.
Abstract
Deep attractor networks (DANs) perform speech separation with discriminative embeddings and speaker attractors. Compared with methods based on the permutation invariant training (PIT), DANs define a deep embedding space and deliver a more elaborate representation on each time-frequency (T-F) bin. However, it has been observed that the DANs achieve limited improvement on the signal quality if directly deployed in a reverberant environment. Following the success of time-domain separation networks on the clean mixture speech, we propose a time-domain DAN (TD-DAN) with two-streams of convolutional networks, which efficiently perform both dereverberation and separation tasks under the condition of a variable number of speakers. The speaker encoding stream (SES) of the TD-DAN is trained to model the speaker information in the embedding space. The speech decoding stream (SDS) accepts speaker…
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