posenhuang/deeplearningsourceseparation
Deep Recurrent Neural Networks for Source Separation
This helps audio engineers and researchers isolate specific sounds from a mixed audio file. You input a single audio recording containing multiple sound sources, like a song with vocals and instruments, or speech with background noise. It then outputs separate audio tracks for each distinct sound source, such as an isolated vocal track or a clean speech recording.
371 stars. No commits in the last 6 months.
Use this if you need to separate singing voices from music, extract clear speech from noisy environments, or break down mixed audio into its constituent sound components.
Not ideal if you are looking for a ready-to-use application with a graphical interface, as this project requires some command-line interaction and familiarity with MATLAB.
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MATLAB
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Last pushed
Jul 21, 2021
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