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Dual-Signal Transformation LSTM Network for Real-Time Noise Suppression

About

This paper introduces a dual-signal transformation LSTM network (DTLN) for real-time speech enhancement as part of the Deep Noise Suppression Challenge (DNS-Challenge). This approach combines a short-time Fourier transform (STFT) and a learned analysis and synthesis basis in a stacked-network approach with less than one million parameters. The model was trained on 500 h of noisy speech provided by the challenge organizers. The network is capable of real-time processing (one frame in, one frame out) and reaches competitive results. Combining these two types of signal transformations enables the DTLN to robustly extract information from magnitude spectra and incorporate phase information from the learned feature basis. The method shows state-of-the-art performance and outperforms the DNS-Challenge baseline by 0.24 points absolute in terms of the mean opinion score (MOS).

Nils L. Westhausen, Bernd T. Meyer• 2020

Related benchmarks

TaskDatasetResultRank
Speech EnhancementMultilingual low-SNR (evaluation set)
PESQ2.14
23
Speech EnhancementDNS no_reverb (test)
PESQ3.04
18
Speech EnhancementDNS with reverb (test)
STOI84.68
18
Speech DenoisingDNS no-reverb (test)--
16
Speech EnhancementDNS challenge blind 1 (test)
Score (No Reverb)3.58
14
Speech EnhancementDNS Challenge 2020
PESQ2.34
8
Speech EnhancementWHAMR corpus reverberant single mix (test)
PESQ2.23
7
Speech EnhancementDNS Challenge With Reverb 2020 (test)--
7
Speech EnhancementDNS Challenge INTERSPEECH Without Reverb 2020 (test)--
7
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Code

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