Improving music source separation based on deep neural networks through data augmentation and network blending

Published: Mar 1, 2017
Abstract
This paper deals with the separation of music into individual instrument tracks which is known to be a challenging problem. We describe two different deep neural network architectures for this task, a feed-forward and a recurrent one, and show that each of them yields themselves state-of-the art results on the SiSEC DSD100 dataset. For the recurrent network, we use data augmentation during training and show that even simple separation networks...
Paper Details
Title
Improving music source separation based on deep neural networks through data augmentation and network blending
Published Date
Mar 1, 2017
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