A Comparison of Two Strategies for ASR in Additive Noise: Missing Data and Spectral Substraction
نویسندگان
چکیده
منابع مشابه
A comparison of two strategies for ASR in additive noise: missing data and spectral subtraction
This paper addresses the problem of speech recognition in the presence of additive noise. To deal with this problem, it is possible to estimate the noise characteristics using methods which have previously been developed for speech enhancement techniques. Spectral subtraction can then be used to reduce the effect of additive noise on speech in the spectral domain. Some techniques have also rece...
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