A Novel Feature Extraction Method for Isolated Word Recognition Based on Nested Temporal Averaging
Fecha
2006Autor
Dogaru, Radu
Costache, Gabriel Nicolae
Dumitru, Octavian
Gavat, Inge
Metadatos
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A novel preprocessing method is proposed. It has a reduced complexity and therefore is aimed to be used in low power, VLSI implemented, speech recognizers. Our algorithm extracts a feature vector made from up to 3 feature vectors, each coming from a particular variable length speech sequence. The sequences are nested one into each other while their length is divided by 2 for each nesting operation. Each feature vector is computed as an average, min and max of all 13-dimensional Mel-cepstral coefficients obtained within a sound sequence. On a sound database with 10 speakers speaking 7 different words the classification performance was found to be close and even better than the one obtained using traditional methods (HMMs)