Publication | Open Access
All For One And One For All: Improving Music Separation By Bridging Networks
10
Citations
22
References
2021
Year
Unknown Venue
MusicImproving Music SeparationSource SeparationComputational MusicologyEngineeringMachine LearningSpeech RecognitionAudio SignalsData ScienceMusic ProcessingMusic SeparationAudio RetrievalComputer ScienceDeep LearningDeep Neural NetworksNetwork ScienceMusic ClassificationMulti-speaker Speech RecognitionBridging NetworksSpeech SeparationSpeech ProcessingSignal Separation
This paper proposes several improvements for music separation with deep neural networks (DNNs), namely a multi-domain loss (MDL) and two combination schemes. First, by using MDL we take advantage of the frequency and time domain representation of audio signals. Next, we utilize the relationship among instruments by jointly considering them. We do this on the one hand by modifying the network architecture and introducing a CrossNet structure. On the other hand, we consider combinations of instrument estimates by using a new combination loss (CL). MDL and CL can easily be applied to many existing DNN-based separation methods as they are merely loss functions which are only used during training and do not affect the inference step. Experimental results show that the performance of Open-Unmix (UMX), a well-known and state-of-the-art open-source library for music separation, can be improved by utilizing our above schemes. Our modifications of UMX are open-sourced together with this paper.
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