SOTAVerified

On Time Domain Conformer Models for Monaural Speech Separation in Noisy Reverberant Acoustic Environments

2023-10-09Code Available1· sign in to hype

William Ravenscroft, Stefan Goetze, Thomas Hain

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Speech separation remains an important topic for multi-speaker technology researchers. Convolution augmented transformers (conformers) have performed well for many speech processing tasks but have been under-researched for speech separation. Most recent state-of-the-art (SOTA) separation models have been time-domain audio separation networks (TasNets). A number of successful models have made use of dual-path (DP) networks which sequentially process local and global information. Time domain conformers (TD-Conformers) are an analogue of the DP approach in that they also process local and global context sequentially but have a different time complexity function. It is shown that for realistic shorter signal lengths, conformers are more efficient when controlling for feature dimension. Subsampling layers are proposed to further improve computational efficiency. The best TD-Conformer achieves 14.6 dB and 21.2 dB SISDR improvement on the WHAMR and WSJ0-2Mix benchmarks, respectively.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
WHAMR!TD-Conformer (XL) + DMSI-SDRi14.6Unverified
WHAMR!TD-Conformer (L) + DMSI-SDRi13.4Unverified
WHAMR!TD-Confomer (M) + DMSI-SDRi12Unverified
WHAMR!TD-Confomer (S)SI-SDRi10.5Unverified
WSJ0-2mixTD-Conformer (XL) + DMSI-SDRi21.2Unverified

Reproductions