1EREST HEIGHBOIJR DECISION RULE FOR VOWEL AN)) DIGIT RECOGNITION

2009 
Minimum distance to mean is usually used as a classification rule in speech and speaker recognition studies. In this paper it is shown that the nearest neigh.. bou-r decision rule gives significant impr— ovement in classification score for vowel and digit recognition schemes. Autocorrel— ation coefficients of lags two to five sampling instants are used to form the feature vector. Pour samples per class have been used. Minimum squared Euclideari distance of the test vector from the nearest reference is chosen as the classification rule. For sustained vowels the recognition score is cent percent. Por the same fea,ture the minimum distance to mean gives 70 7 recognition score. When the reference samples of a given speaker is tested over the vowels spoken by different speaker(up to 10), this scheme gives the recognition score of about 95 7. . For digits without any time warping the recognition score of about 86 7.to 92 7 Is obtained.
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