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An Evaluation of One-Class Classification Techniques for Speaker Verification

An Evaluation of One-Class Classification Techniques for Speaker Verification

Publication Type  Report
Year of Publication  2007
Authors  Anthony Brew; Marco Grimaldi; Pádraig Cunningham
Other Numbers  2007-8
Key Words  TR
Abstract  

Speaker verification is a challenging problem in speaker recognition where the objective is to determine whether a segment of speech in fact comes from a specific individual. In supervised machine learning terms this is a challenging problem as, while examples belonging to the target class are easy to gather, the set of counter-examples is completely open. In this paper we cast this as a one-class classification problem and evaluate a variety of state-of-the-art one-class classification techniques on a benchmark speech recognition dataset. We show that of the one-class classification techniques, Gaussian Mixture Models shows the best performance on this task.

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