Title :
Pitch extraction algorithm for voice recognition applications
Author_Institution :
Dept. of Electr. Eng., U.o.S.F., Tampa, FL, USA
Abstract :
Two computationally simple pitch-extraction algorithms based on the autocorrelation method of pitch determination are presented. Both algorithms have been implemented in software, and their performance has been evaluated. The first pitch-extraction algorithm (PEA Hash 1) uses center clipping and infinite peak dipping for time-domain preprocessing before computing autocorrelation while the second algorithm (PEA Hash 2) nonlinearly distorts the speech signal before center clipping and autocorrelation computation. PEA Hash 2 provides a better pitch detection estimate than PEA Hash 1 and also eliminates the need to adjust critically the clipping level threshold. The initial results obtained by comparing the average gross pitch error rate suggest that PEA Hash 2 is better (by a factor of two or more) than PEA Hash 1.<>
Keywords :
acoustic variables measurement; correlation methods; speech recognition; autocorrelation method; average gross pitch error rate; center clipping; infinite peak dipping; nonlinear distortion; pitch-extraction algorithms; time-domain preprocessing; voice recognition applications; Autocorrelation; Background noise; Detectors; Distortion; Equations; Frequency; Hardware; Logic circuits; Speech enhancement; Speech recognition;
Conference_Titel :
System Theory, 1988., Proceedings of the Twentieth Southeastern Symposium on
Conference_Location :
Charlotte, NC, USA
Print_ISBN :
0-8186-0847-1
DOI :
10.1109/SSST.1988.17080