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Parameterization of Prosodic Feature Distributions for SVM Modeling in Speaker Recognition

机译:说话人识别中支持向量机建模的韵律特征分布的参数化

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Multiple recent studies have shown that speaker recognition performance using frame-based cepstral features is improved by adding higher-level information, including prosodic and lexical features. This paper explores the important question of finding a good kernel for a system that models syllable-based prosodic features using support vector machines (SVMs). The system has been the best performing of our high-level systems in the last two NIST evaluations, and gives significant improvements when combined with cepstral-based systems. We introduce two new methods for transforming the syllable-level features into a single high-dimensional vector that can be well modeled by SVMs, resulting in significant gains in speaker recognition performance
机译:最近的多项研究表明,通过添加包括韵律和词汇功能在内的高级信息,可以改善基于帧倒频谱特征的说话人识别性能。本文探讨了一个重要问题,即为使用支持向量机(SVM)对基于音节的韵律特征进行建模的系统找到一个好的内核。在最近的两次NIST评估中,该系统一直是我们高级系统中性能最好的,与基于倒频谱的系统结合使用时,该系统也得到了显着改进。我们介绍了两种将音节级特征转换为可以由SVM很好建模的单个高维向量的新方法,从而显着提高了说话人识别性能

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