Publication | Closed Access
Fully complex deep neural network for phase-incorporating monaural source separation
39
Citations
22
References
2017
Year
Unknown Venue
Source SeparationEngineeringMachine LearningData ScienceHealth SciencesSparse Penalty TermSpeech EnhancementHypercomplex Phase RetrievalNonlinear MappingSpeech ProcessingSpeech SeparationDistant Speech RecognitionPhase SeparationDeep LearningDeep Neural NetworkSignal ProcessingSignal SeparationSpeech Recognition
Deep neural network (DNN) have become a popular means of separating a target source from a mixed signal. Most of DNN-based methods modify only the magnitude spectrum of the mixture. The phase spectrum is left unchanged, which is inherent in the short-time Fourier transform (STFT) coefficients of the input signal. However, recent studies have revealed that incorporating phase information can improve the quality of separated sources. To estimate simultaneously the magnitude and the phase of STFT coefficients, this work paper developed a fully complex-valued deep neural network (FCDNN) that learns the nonlinear mapping from complex-valued STFT coefficients of a mixture to sources. In addition, to reinforce the sparsity of the estimated spectra, a sparse penalty term is incorporated into the objective function of the FCDNN. Finally, the proposed method is applied to singing source separation. Experimental results indicate that the proposed method outperforms the state-of-the-art DNN-based methods.
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