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Sudo rm -rf: Efficient Networks for Universal Audio Source Separation

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In this paper, we present an efficient neural network for end-to-end general purpose audio source separation. Specifically, the backbone structure of this convolutional network is the SUccessive DOwnsampling and Resampling of Multi-Resolution Features (SuDoRMRF) as well as their aggregation which is performed through simple one-dimensional convolutions. In this way, we are able to obtain high quality audio source separation with limited number of floating point operations, memory requirements, number of parameters and latency. Our experiments on both speech and environmental sound separation datasets show that SuDoRMRF performs comparably and even surpasses various state-of-the-art approaches with significantly higher computational resource requirements.

Efthymios Tzinis, Zhepei Wang, Paris Smaragdis• 2020

Related benchmarks

TaskDatasetResultRank
Speech SeparationWSJ0-2Mix (test)
SDRi (dB)19.1
160
Speech SeparationWSJ0-2Mix
SI-SNRi (dB)18.9
65
Speech SeparationLibri2Mix (test)
SI-SNRi (dB)14
60
Speech SeparationWHAM! (test)
SI-SNRi (dB)13.7
58
Target Sound ExtractionESC-50 (test)
SISDRi8.35
46
Speech EnhancementDNS (test)
SI-SDR (dB)18.6
23
Speech SeparationWSJ0-2Mix anechoic clean mixture (test)
SI-SNRi18.9
23
Source SeparationWSJ0-2Mix (test)
SI-SNRi18.9
17
Speech SeparationVoxCeleb2-2Mix (test)
SDRi6.9
12
Audio-visual speech separationLRS2-2Mix
SDRi9.5
12
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