首页> 外文会议>2011 IEEE International Conference on Acoustics, Speech and Signal Processing >Effective background data selection in SVM speaker recognition for unseen test environment: More is not always better
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Effective background data selection in SVM speaker recognition for unseen test environment: More is not always better

机译:在SVM说话人识别中有效的背景数据选择,适用于看不见的测试环境:并非总是更好

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This study focuses on determining a procedure to select effective negative examples for development of improved Support Vector Machine (SVM) based speaker recognition. Selection of a background dataset, comprising of a group of negative examples, is critical in development of an effective decision surface between the primary speaker and outside speaker rejection space. Previous studies generally fix the number of examples based on development data for system performance evaluation, while for real applications this does not guarantee sustained performance for unseen data. In the proposed method, the error is estimated on the support vector to select the background dataset, thereby by customizing the background dataset for each enrollment speaker instead of training models with a fixed background data. The proposed method finds the equivalent or improved EER and DCF compared with the previous SVM-based studies, and provides consistent performance for unseen data. The method improves the 6% relative improvement on EER and DCF for NIST SRE 2010.
机译:这项研究的重点是确定一种程序,以选择有效的否定示例,以开发改进的基于支持向量机(SVM)的说话人识别。背景数据集(包括一组负面示例)的选择对于在主要讲话者与外部讲话者拒绝空间之间形成有效的决策面至关重要。以前的研究通常根据开发数据来确定示例数量,以进行系统性能评估,而对于实际应用程序,这不能保证未见数据的持续性能。在提出的方法中,在支持向量上估计误差以选择背景数据集,从而通过为每个注册演讲者定制背景数据集而不是使用固定的背景数据来训练模型。与以前的基于SVM的研究相比,所提出的方法找到了等效或改进的EER和DCF,并为看不见的数据提供了一致的性能。该方法将NIST SRE 2010的EER和DCF相对提高了6%。

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