NELGNov 12, 2013

Deep neural networks for single channel source separation

arXiv:1311.2746v1139 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for audio signal processing, addressing source separation in mixed signals.

The paper tackles single channel source separation by using a deep neural network to classify estimated source spectra, formulated as an energy minimization problem, and shows that DNN initialized by NMF improves separation quality compared to using NMF alone.

In this paper, a novel approach for single channel source separation (SCSS) using a deep neural network (DNN) architecture is introduced. Unlike previous studies in which DNN and other classifiers were used for classifying time-frequency bins to obtain hard masks for each source, we use the DNN to classify estimated source spectra to check for their validity during separation. In the training stage, the training data for the source signals are used to train a DNN. In the separation stage, the trained DNN is utilized to aid in estimation of each source in the mixed signal. Single channel source separation problem is formulated as an energy minimization problem where each source spectra estimate is encouraged to fit the trained DNN model and the mixed signal spectrum is encouraged to be written as a weighted sum of the estimated source spectra. The proposed approach works regardless of the energy scale differences between the source signals in the training and separation stages. Nonnegative matrix factorization (NMF) is used to initialize the DNN estimate for each source. The experimental results show that using DNN initialized by NMF for source separation improves the quality of the separated signal compared with using NMF for source separation.

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