Improving Single-Network Single-Channel Separation of Musical Audio with Convolutional Layers.

Lecture Notes in Computer Science(2018)

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摘要
Most convolutional neural network architectures explored so far for musical audio separation follow an autoencoder structure, where the mixture is considered to be a corrupted version of the original source. On the other hand, many approaches based on deep neural networks make use of several networks with different objectives for estimating the sources. In this paper we propose a discriminative approach based on traditional convolutional neural network architectures for image classification and speech recognition. Our results show that this architecture performs similarly to current state of the art approaches for separating singing voice, and that the addition of convolutional layers allows improving separation results with respect to using only fully-connected layers.
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关键词
Audio source separation,Convolutional neural networks
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