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{"references": ["S.I. Mimilakis, K. Drossos, J.F. Santos, G. Schuller, T. Virtanen, Y. Bengio , \"Monaural Singing Voice Separation with Skip-Filtering Connections and Recurrent Inference of Time-Frequency Mask\", in arXiv:1711.01437 [cs.SD], Nov. 2017.", "S.I. Mimilakis, K. Drossos, J.F. Santos, G. Schuller, T. Virtanen, Y. Bengio , \"Monaural Singing Voice Separation with Skip-Filtering Connections and Recurrent Inference of Time-Frequency Mask\", in Proceedings of 43rd International Conference on Acoustics, Speech and Signal Processing (ICASSP 2018), April, 2018."]}
Singing Voice Separation via Recurrent Inference and Skip-Filtering Connections - PyTorch Implementation.
deep learning, music source separation
deep learning, music source separation
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