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Effect of Relevance Factor of Maximum a posteriori Adaptation for GMM-SVM in Speaker and Language Recognition

机译:关于扬声器和语言识别中最大后验适应GMM-SVM后初级适应的相关因子

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Gaussian mixture model - support vector machine (GMMSVM) with nuisance attribute projection (NAP) has been found to be effective and reliable for speaker and language recognition. In maximum a posteriori (MAP) adaptation of GMM, the relevance factor is the parameter that regulates how much the adaptation data affect the base model, which impacts the final recognition performance. In our previous work, the datadependent relevance factor and adaptive relevance factor have been introduced. In this paper, we provide insights into different types of relevance factor for MAP in the context of application as formulated under Speaker Recognition Evaluation (SRE) and Language Recognition Evaluation (LRE) by the National Institute of Standards and Technology (NIST).
机译:已经发现高斯混合模型 - 支持诺斯属性投影(NAP)的支持向量机(GMMSVM)对发言者和语言识别有效可靠。在最大的后验(MAP)适应GMM时,相关性因子是调节适应数据影响基础模型的参数,这会影响最终识别性能。在我们以前的工作中,已经介绍了DEADEDENDENDENT相关因子和自适应相关因子。在本文中,我们在国家标准和技术研究所(NIST)下制定的应用程序中,在展示者识别评估(SRE)和语言识别评估(LRE)中的应用中,为地图的不同类型相关因子提供了解。

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