A qualitative discriminative cohort speakers method to reduce learning data for MLP-based speaker verification systems

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Abstract

Although multilayer perceptrons (MLPs) present several advantages against other pattern recognition methods, MLP-based speaker verification systems suffer from slow enrollment speed caused by many background speakers to achieve a low verification error. To solve this problem, the quantitative discriminative cohort speakers (QnDCS) method, by introducing the cohort speakers method into the systems, reduced the number of background speakers required to enroll speakers. Although the QnDCS achieved the goal to some extent, the improvement rate for the enrolling speed was still unsatisfactory. To improve the enrolling speed in this paper, the qualitative DCS (QlDCS) has been proposed by introducing a qualitative criterion to select less background speakers. An experiment for both methods is conducted to use the speaker verification system based on MLPs and continuants, and speech database. The results of the experiment show that the proposed QlDCS method enrolls speakers in shorter time than the QnDCS does. © Springer-Verlag 2003.

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Lee, T. S., Choi, S. W., Choi, W. H., Park, H. T., Lim, S. S., & Hwang, B. W. (2004). A qualitative discriminative cohort speakers method to reduce learning data for MLP-based speaker verification systems. Lecture Notes in Computer Science (Including Subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 2690, 1082–1086. https://doi.org/10.1007/978-3-540-45080-1_155

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