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arxiv: 0705.1585 · v1 · submitted 2007-05-11 · 💻 cs.LG

HMM Speaker Identification Using Linear and Non-linear Merging Techniques

classification 💻 cs.LG
keywords identificationmergingspeakertechniqueslinearlivenon-linearperformance
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Speaker identification is a powerful, non-invasive and in-expensive biometric technique. The recognition accuracy, however, deteriorates when noise levels affect a specific band of frequency. In this paper, we present a sub-band based speaker identification that intends to improve the live testing performance. Each frequency sub-band is processed and classified independently. We also compare the linear and non-linear merging techniques for the sub-bands recognizer. Support vector machines and Gaussian Mixture models are the non-linear merging techniques that are investigated. Results showed that the sub-band based method used with linear merging techniques enormously improved the performance of the speaker identification over the performance of wide-band recognizers when tested live. A live testing improvement of 9.78% was achieved

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