DocumentCode :
387850
Title :
Speech recognition in the F-16 cockpit using principal spectral components
Author :
Rajasekaran, Periagararn K. ; Doddington, George R.
Author_Institution :
Texas Instruments Inc., Dallas, Texas, USA
Volume :
10
fYear :
1985
fDate :
31138
Firstpage :
882
Lastpage :
885
Abstract :
A modification of the usual LPC speaker-dependent speech recognition algorithms yielded significantly improved recognition performance in an F-16 fighter cockpit environment.The LPC model is first transformed into spectral amplitudes using asimulated filter bank. Statistically optimum linear transformation of the filter bank amplitudes to "principal spectral components" (PSC) provides a set of uncorrelated features. These features are rank ordered and the least significant features are discarded. The data base used for experiments consisted of 5 male speakers uttering a 70-word vocabulary ten times for training in 85 dBA noise level, and 3 times for test in each of 97, 106 and 112 dBA noise levels. The PSC method yielded about half the number of substitutions of the standard LPC method.
Keywords :
Acoustic noise; Character recognition; Covariance matrix; Filter bank; Instruments; Linear predictive coding; Maximum likelihood detection; Signal to noise ratio; Speech recognition; Working environment noise;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech, and Signal Processing, IEEE International Conference on ICASSP '85.
Type :
conf
DOI :
10.1109/ICASSP.1985.1168471
Filename :
1168471
Link To Document :
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