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Modeling voice variability through MCE techniques in speaker recognition systems

机译:通过说话人识别系统中的MCE技术为语音可变性建模

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Speaker recognition is becoming a highly reliable mean for access control and secure-information exchange. However, before its effective use in practical applications, there are still important problems to solve. One of these problems is the degradation of the recognition performance through time due to different factors that introduce a noticeable variability into the voice signal characteristics. In this paper, trying to contribute to the analysis of voice variability in speaker recognition systems, we present some experimental results based on a speech modeling technique known as Gaussian mixture modeling (GMM) trained through a minimum classification error (MCE) criterion. Our major contribution should be to study the vulnerability of the system and to test a start-up process suitable to provide a stable performance along time.
机译:说话人识别正成为访问控制和安全信息交换的一种高度可靠的方式。但是,在其实际应用中有效使用之前,仍然需要解决重要的问题。这些问题之一是由于将语音信号特性引入明显变化的不同因素而导致的识别性能随时间的下降。在本文中,为了有助于分析说话人识别系统中的语音变异性,我们基于通过最小分类误差(MCE)准则训练的称为高斯混合建模(GMM)的语音建模技术,提出了一些实验结果。我们的主要贡献应该是研究系统的漏洞并测试适合于随时间推移提供稳定性能的启动过程。

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