Hybrid Transformers for Music Source Separation
About
A natural question arising in Music Source Separation (MSS) is whether long range contextual information is useful, or whether local acoustic features are sufficient. In other fields, attention based Transformers have shown their ability to integrate information over long sequences. In this work, we introduce Hybrid Transformer Demucs (HT Demucs), an hybrid temporal/spectral bi-U-Net based on Hybrid Demucs, where the innermost layers are replaced by a cross-domain Transformer Encoder, using self-attention within one domain, and cross-attention across domains. While it performs poorly when trained only on MUSDB, we show that it outperforms Hybrid Demucs (trained on the same data) by 0.45 dB of SDR when using 800 extra training songs. Using sparse attention kernels to extend its receptive field, and per source fine-tuning, we achieve state-of-the-art results on MUSDB with extra training data, with 9.20 dB of SDR.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Music Source Separation | MUSDB18 HQ (test) | SDR (Drums)10.83 | 48 | |
| Text-prompted separation | Instr pro | SAJ4.48 | 11 | |
| Music Source Separation | MDX Challenge Leaderboard C 2021 1.0 (test) | SDR (Vocals)9.02 | 5 | |
| Music Source Separation | MoisesDb (test) | Bass Score10.9 | 5 | |
| Music Source Separation | MUSDB18 non-HQ (test) | -- | 5 | |
| Target Audio Extraction | AudioCaps 2-source mixture (test) | SI-SNRi7.7 | 4 | |
| Target Audio Extraction | AudioCaps 3-source mixture (test) | SI-SNRi6.8 | 4 | |
| Music Source Separation | MoisesDB | Overall Score9.91 | 2 |