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Combining different models is a common strategy to build a good audio source separation system. In this work we combine two powerful deep neural networks for audio single channel source separation (SCSS). Namely, we combine fully convolutional neural networks (FCNs) and recurrent neural networks, specifically, bidirectional long short-term memory recurrent neural networks (BLSTMs). FCNs are good at extracting useful features from the audio data and BLSTMs are good at modeling the temporal structure of the audio signals. Our experimental results show that combining FCNs and BLSTMs achieves better separation performance than using each model individually.
Author (s): Grais, Emad M.; Plumbley, Mark D.
Affiliation:
University of Surrey, Guildford, Surrey, UK
(See document for exact affiliation information.)
AES Convention: 144
Paper Number:9990
Publication Date:
2018-05-06
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Session subject:
Posters: Audio Processing/Audio Education
Permalink: https://aes2.org/publications/elibrary-page/?id=19507
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Grais, Emad M.; Plumbley, Mark D.; 2018; Combining Fully Convolutional and Recurrent Neural Networks for Single Channel Audio Source Separation [PDF]; University of Surrey, Guildford, Surrey, UK; Paper 9990; Available from: https://aes2.org/publications/elibrary-page/?id=19507
Grais, Emad M.; Plumbley, Mark D.; Combining Fully Convolutional and Recurrent Neural Networks for Single Channel Audio Source Separation [PDF]; University of Surrey, Guildford, Surrey, UK; Paper 9990; 2018 Available: https://aes2.org/publications/elibrary-page/?id=19507