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首页> 外文期刊>International Journal of Engineering Research and Applications >Ant colony optimization-based selected features for Text-independent speaker verification
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Ant colony optimization-based selected features for Text-independent speaker verification

机译:基于蚁群优化的选定功能,用于独立于文本的说话者验证

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With the growing trend toward remote security verification procedures for telephone banking, biometric security measures and similar applications, automatic speaker verification (ASV) has received a lot of attention in recent years. The complexity of ASV system and its verification time depends on the number of feature vectors, their dimensionality, the complexity of the speaker models and the number of speakers. At present there are several methods for feature selection in ASV systems. To improve performance of ASV system we present another method that is based on ant colony optimization (ACO) algorithm. After feature reduction phase, feature vectors are applied to a Gaussian mixture model universal back-ground model (GMM-UBM) which is a text-independent speaker verification model. The results of experiments indicate that with the optimized feature set, the performance of the ASV system is improved. Moreover, the speed of verification is significantly increased since by use of ACO, number of features is reduced over 80% which consequently decrease the complexity of our ASV system.
机译:随着电话银行,生物特征安全措施和类似应用程序的远程安全验证程序的增长趋势,自动扬声器验证(ASV)近年来受到了广泛的关注。 ASV系统的复杂性及其验证时间取决于特征向量的数量,其维数,说话者模型的复杂程度和说话者的数量。当前,在ASV系统中有几种用于特征选择的方法。为了提高ASV系统的性能,我们提出了另一种基于蚁群优化(ACO)算法的方法。在特征缩减阶段之后,将特征向量应用于高斯混合模型通用背景模型(GMM-UBM),该模型是独立于文本的说话者验证模型。实验结果表明,通过优化的功能集,改进了ASV系统的性能。此外,由于使用了ACO,功能的数量减少了80%以上,从而大大提高了验证速度,从而降低了我们ASV系统的复杂性。

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