Adaptive Speech Enhancement Using Frequency-speciic Snr Estimates
نویسندگان
چکیده
| We describe an adaptive speech enhancement technique based on selecting a set of pre-computed FIR lters to process the compressed short-time power spectral trajec-tories of noisy speech. The responses of the pre-computed lters depend only on the signal to noise ratios (SNRs) and does not depend on the center frequency of the sub-bands. This allows for a compact design in which the estimate of the SNR at the particular frequency channel is used as the lter selection criterium for that sub-band.
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