A Combination Approach of Gaussian
Mixture Models and Support Vector
Machines for Speaker Identifica
Rafik Djemili1, Hocine Bourouba2, and Amara Korba3
1Electronics Department, University of 20 Août, Algeria
2Electronics Department, University Mentouri of Constantine, Algeria
3LASA, University Badji Mokhtar of Annaba, Algeria
1Electronics Department, University of 20 Août, Algeria
2Electronics Department, University Mentouri of Constantine, Algeria
3LASA, University Badji Mokhtar of Annaba, Algeria
Abstract: Gaussian mixture models are commonly used in speaker identification and verification systems. However, owing to their non discriminant nature, Gaussian mixture models still give greater identification errors in the evaluation process. Partitioning speakers database in clusters based on some proximity criteria where only a single cluster Gaussian mixture models is run in every test, have been suggested in literature generally to speed up the identification process for very large databases. In this paper, we propose a hierarchical clustering scheme using the discriminant power of support vector machines. Speakers are divided into small subsets and evaluation is then processed by GMMs. Experimental results show that the proposed method reduced significantly the error in overall speaker identification tests.
Keywords:
Speaker identification, GMM, SVM.Received December 18, 2008; accepted June 29, 2009