Novel windowing technique of MFCC for speaker identification with Modified Polynomial Classifiers

Published: Sep 1, 2014
Abstract
Speech is one of the most popular parameter used to identify a speaker by her spoken phrase. Feature extraction from speech is a necessary first step in a speaker identification process. Traditionally computation of the Mel Frequency Cepstral Coefficient (MFCC) features use hamming window, as a preprocessing step to reduce spectral leakages. However, hamming window results in reasonable side lobes along with the desired main lobe. This paper...
Paper Details
Title
Novel windowing technique of MFCC for speaker identification with Modified Polynomial Classifiers
Published Date
Sep 1, 2014
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