2023
DOI: 10.3233/jifs-230923
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Multistage progressive learning based speech enhancement using time-frequency attentive squeezed temporal convolutional networks

Abstract: Speech enhancement (SE) is an important method for improving speech quality and intelligibility in noisy environments. An effective speech enhancement model depends on precise modelling of the long-range dependencies of noisy speech. Several recent studies have examined ways to enhance speech by capturing the long-term contextual information. For speech enhancement, the time-frequency (T-F) distribution of speech spectral components is also important, but is usually ignored in these studies. The multi-stage le… Show more

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