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Probabilistic classification based on Gaussian copula for speech recognition: Application to Spoken Arabic digits

机译:基于高斯语系的语音识别概率分类:在阿拉伯数字口语中的应用

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Language modeling for an inflected language such as Arabic poses new challenges for automatic speech recognition and related topic due to its rich morphology. A new technique for automatic speech recognition is presented in this paper. This technique employs a full measure of statistical dependence among random variables that is known as copulas. A novel probabilistic classifier that combines finite Gaussian mixture modeling for marginal distribution function and Gaussian copula is developed. Using benchmark Arabic speech data base, the accuracy of the developed Gaussian copula with Gaussian Mixtures marginal distribution GCGMM is validated and compared with Gaussian copula with simple empirical marginal distribution GCEM. The result demonstrates the improvement and shows an excellent performance.
机译:由于其丰富的形态,诸如阿拉伯语之类的屈折语言的语言建模对自动语音识别和相关主题提出了新的挑战。本文提出了一种新的自动语音识别技术。该技术采用了完全统计量度来衡量随机变量之间的依存关系,这被称为copulas。开发了一种新颖的概率分类器,其结合了有限高斯混合模型的边际分布函数和高斯copula。使用基准阿拉伯语音数据库,验证了具有高斯混合物边际分布GCGMM的已开发高斯copula的准确性,并与具有简单经验边际分布GCEM的高斯copula进行了比较。结果证明了改进并显示了优异的性能。

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