A Kalman filter based noise suppression algorithm using speech and noise models derived from spatial information

Aalborg(2010)

引用 23|浏览2
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摘要
In this paper, a novel Kalman filter based noise suppression algorithm for hearing aids, using spatial information for estimating the required noise and speech models, is proposed. The main assumption of the scheme is that the target (usually the speech signal) is directly in front of the hearing aid user while the interference (usually the noise signal) comes from the back hemisphere. While in an earlier paper [1], a related approach based on instantaneous Wiener filters using a Weighted Overlap Add (WOLA) decomposition has been presented, this paper focuses on a time domain approach employing a time varying Kalman filter. Clearly, with the proper noise and speech models, one would expect a better performance of a time varying Kalman filter than of a WOLA Wiener filter. Hearing tests as well as objective performance measures show the excellent performance of the Kalman filter based noise suppression algorithm.
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关键词
kalman filters,wiener filters,decomposition,hearing aids,interference suppression,signal denoising,speech processing,wola wiener filter,wola decomposition,hearing aid user,instantaneous wiener filters,noise models,noise signal,noise suppression algorithm,spatial information,speech models,speech signal,time varying kalman filter,weighted overlap add decomposition,noise,interference,noise measurement,acoustics,speech
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