Feature selection and model optimization for semi-supervised speaker spotting

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2016

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Chetupalli, S.R.
Gopalakrishnan, A.
Sreenivas, T.V.

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Abstract

We explore, experimentally, feature selection and optimization of stochastic model parameters for the problem of speaker spotting. Based on an initially identified segment of speech of a speaker, an iterative model refinement method is developed along with a latent variable mixture model so that segments of the same speaker are identified in a long speech record. It is found that a GMM with moderate number of mixtures is better suited for the task than a large number mixture model as used in speaker identification. Similarly, a PCA based low-dimensional projection of MFCC based feature vector provides better performance. We show that about 6 seconds of initially identified speaker data is sufficient to achieve > 90% performance of speaker segment identification. � 2016 IEEE.

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European Signal Processing Conference, 2016, Vol.2016-November, , pp.135-139

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