Conditioned Source Separation by Attentively Aggregating Frequency Transformations With Self-Conditioning
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Published version
Embargoed until: 5555-01-01
Reason: Version not permitted.
Embargoed until: 5555-01-01
Reason: Version not permitted.
Volume
70
Pagination
661 - 673
DOI
10.17743/jaes.2022.0030
Journal
AES: Journal of the Audio Engineering Society
Issue
ISSN
1549-4950
Metadata
Show full item recordAbstract
Label-conditioned source separation extracts the target source, specified by an input symbol, from an input mixture track. A recently proposed label-conditioned source separation model called Latent Source Attentive Frequency Transformation (LaSAFT)–Gated Point-Wise Convolutional Modulation (GPoCM)–Net introduced a block for latent source analysis called LaSAFT. Employing LaSAFT blocks, it established state-of-the-art performance on several tasks of the MUSDB18 benchmark. This paper enhances the LaSAFT block by exploiting a self-conditioning method. Whereas the existing method only cares about the symbolic relationships between the target source symbol and latent sources, ignoring audio content, the new approach also considers audio content. The enhanced block computes the attention mask conditioning on the label and the input audio feature map. Here, it is shown that the conditioned U-Net employing the enhanced LaSAFT blocks outperforms the previous model. It is also shown that the present model performs the audio-query–based separation with a slight modification.