Enhanced MFCC Algorithm using Lookup Table and Kaiser Window
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Abstract
Automatic Speaker Recognition System has been quite fascinating for a man from
quite long time. There are various feature extraction algorithm like Linear Predictive
Coefficient (LPC), Mel- frequency Cepstrum Coefficient (MFCC). In this thesis,
enhanced MFCC algorithm has been proposed which reduces the total time by almost
50 percent but accuracy decreases as compared to conventional algorithm from 94
percent to 94.93 percent. But this makes new algorithm to be implemented more
effectively on hardware.
The proposed algorithm tries to explore in security where speaker recognition can be
used for speaker identification. This algorithm uses lookup table and Kaiser Window
instead of Hamming Window algorithm as in conventional MFCC algorithm which
improves the accuracy of algorithm and lookup table which reduces the time
complexity of algorithm also the formula for pre-emphasis has been modified which
again reduces the copulation time for pre-emphasis of signal.
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ME, CSED
