2022
DOI: 10.1142/s0219691322500321
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Speech enhancement via adaptive Wiener filtering and optimized deep learning framework

Abstract: In today’s scientific epoch, speech is an important means of communication. Speech enhancement is necessary for increasing the quality of speech. However, the presence of noise signals can corrupt speech signals. Thereby, this work intends to propose a new speech enhancement framework that includes (a) training phase and (b) testing phase. The input signal is first given to STFT-based noise estimate and NMF-based spectra estimate during the training phase in order to compute the noise spectra and signal spectr… Show more

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Cited by 3 publications
(1 citation statement)
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“…It removes the additive noise and inverts the blurring simultaneously. Wiener filtering [34] is optimal in terms of the mean square error. In other words, it minimizes the overall mean square error between the expected response and the actual output of the filter in the process of inverse filtering and noise smoothing.…”
Section: Analysis Methodsmentioning
confidence: 99%
“…It removes the additive noise and inverts the blurring simultaneously. Wiener filtering [34] is optimal in terms of the mean square error. In other words, it minimizes the overall mean square error between the expected response and the actual output of the filter in the process of inverse filtering and noise smoothing.…”
Section: Analysis Methodsmentioning
confidence: 99%