GMM based language identification system using robust features

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Abstract

In this work, we have proposed new feature vectors for spoken language identification (LID) system. The Mel frequency cepstral coefficients (MFCC) and formant frequencies derived using short-time window speech signal. Formant frequencies are extracted from linear prediction (LP) analysis of speech signal. Using these two kind of features of speech signal, new feature vectors are derived using cluster based computation. A GMM based classifier has been designed using these new feature vectors. The language specific apriori knowledge is applied on the recognition output. The experiments are carried out on OGI database and LID recognition performance is improved. © 2013 The Author(s).

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CITATION STYLE

APA

Manchala, S., Kamakshi Prasad, V., & Janaki, V. (2014). GMM based language identification system using robust features. International Journal of Speech Technology, 17(2), 99–105. https://doi.org/10.1007/s10772-013-9209-1

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