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3 months ago
Sound Demixing Challenge 2023 Music Demixing Track Technical Report: TFC-TDF-UNet v3
Minseok Kim Jun Hyung Lee Soonyoung Jung

Abstract
In this report, we present our award-winning solutions for the Music Demixing Track of Sound Demixing Challenge 2023. First, we propose TFC-TDF-UNet v3, a time-efficient music source separation model that achieves state-of-the-art results on the MUSDB benchmark. We then give full details regarding our solutions for each Leaderboard, including a loss masking approach for noise-robust training. Code for reproducing model training and final submissions is available at github.com/kuielab/sdx23.
Code Repositories
kuielab/sdx23
Official
pytorch
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| music-source-separation-on-musdb18 | TFC-TDF-UNet (v3) | SDR (avg): 8.34 SDR (bass): 8.45 SDR (drums): 8.44 SDR (other): 6.86 SDR (vocals): 9.59 |
| music-source-separation-on-musdb18-hq | TFC-TDF-UNet (v3) | SDR (avg): 8.34 SDR (bass): 8.45 SDR (drums): 8.44 SDR (others): 6.86 SDR (vocals): 9.59 |
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