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arxiv: 1810.12187 · v2 · submitted 2018-10-29 · 💻 cs.SD · cs.LG· eess.AS

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End-to-end music source separation: is it possible in the waveform domain?

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classification 💻 cs.SD cs.LGeess.AS
keywords separationsourceend-to-endmodelmusicdeepinformationlearning
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Most of the currently successful source separation techniques use the magnitude spectrogram as input, and are therefore by default omitting part of the signal: the phase. To avoid omitting potentially useful information, we study the viability of using end-to-end models for music source separation --- which take into account all the information available in the raw audio signal, including the phase. Although during the last decades end-to-end music source separation has been considered almost unattainable, our results confirm that waveform-based models can perform similarly (if not better) than a spectrogram-based deep learning model. Namely: a Wavenet-based model we propose and Wave-U-Net can outperform DeepConvSep, a recent spectrogram-based deep learning model.

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