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ICASSP
2009
IEEE

Learning to maximize signal-to-noise ratio for reverberant speech segregation

13 years 8 months ago
Learning to maximize signal-to-noise ratio for reverberant speech segregation
Monaural speech segregation in reverberant environments is a very difficult problem. We develop a supervised learning approach by proposing an objective function that directly relates to the computational goal of maximizing signal-to-noise ratio. The model trained using this new objective function yields significantly better results for time-frequency unit labeling. In our segregation system, a segmentation and grouping framework is utilized to form reliable segments under reverberant conditions and organize them into streams. Systematic evaluations show very promising results.
Zhaozhang Jin, DeLiang Wang
Added 17 Aug 2010
Updated 17 Aug 2010
Type Conference
Year 2009
Where ICASSP
Authors Zhaozhang Jin, DeLiang Wang
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