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LaSAFT: Latent Source Attentive Frequency Transformation for Conditioned Source Separation
Woosung Choi Minseok Kim Jaehwa Chung Soonyoung Jung

Abstract
Recent deep-learning approaches have shown that Frequency Transformation (FT) blocks can significantly improve spectrogram-based single-source separation models by capturing frequency patterns. The goal of this paper is to extend the FT block to fit the multi-source task. We propose the Latent Source Attentive Frequency Transformation (LaSAFT) block to capture source-dependent frequency patterns. We also propose the Gated Point-wise Convolutional Modulation (GPoCM), an extension of Feature-wise Linear Modulation (FiLM), to modulate internal features. By employing these two novel methods, we extend the Conditioned-U-Net (CUNet) for multi-source separation, and the experimental results indicate that our LaSAFT and GPoCM can improve the CUNet's performance, achieving state-of-the-art SDR performance on several MUSDB18 source separation tasks.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| music-source-separation-on-musdb18 | LaSAFT+GPoCM | SDR (avg): 5.88 SDR (bass): 5.63 SDR (drums): 5.68 SDR (other): 4.87 SDR (vocals): 7.33 |
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