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Efficient methods for decreasing training and testing times in speaker verification systems

نویسنده (ها)
  • M. Raissi Dehkordi
  • M.M. Homayonpour
مربوط به کنفرانس دوازدهمین کنفرانس بین‌المللی سالانه انجمن کامپیوتر ایران
چکیده Gaussian Mixture Model (GMM) models feature space using mean vector and covariance matrix of probability density functions of feature vectors. In this paper, improved Vector Quantization and Covariance Matrix methods were compared to GMM. Covariance Matrix model considers shape of probability density functions, while Vector quantization method models position of probability density functions in feature space. In this paper different methods of Covariance matrix model including Arithmetic-harmonic sphericity measure and Divergence Shape measure were examined to evaluate scores in speaker verification task.. Experimental results show that Arithmetic-harmonic sphericity measure outperforms Divergence shape measure. A novel vector quantization approach was also presented in this paper. This approach is based on comparing codebook obtained from training data to codebook obtained from test data. Results show that recent approach has a better performance compared to traditional vector quantization approach. Also, the results show that Covariance matrix model outperforms improved Vector Quantization and GMM.
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