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A New Hybrid GMM/SVM for Speaker Verification

机译:用于扬声器验证的新型混合GMM / SVM

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This paper proposes a new combination approach between Gaussian Mixture Model (GMM) and Support Vector Machine (SVM) by feature extraction based on adapted GMM for SVM in text-independent speaker verification. Because of excellent scalability, adapted GMM was used to extract a small quantity of typical feature vectors from large numbers of speech data for SVM speaker verification. Using this new combination approach, our speaker verification system performed significantly better than the current state-of-the-art GMM-UBM system on the NIST'04 1side-1side database.
机译:本文通过特征提取基于适用于独立于文本的扬声器验证,通过特征提取提出了通过特征提取的高斯混合模型(GMM)和支持向量机(SVM)之间的新组合方法。由于可扩展性优异,适用的GMM用于从大量语音数据中提取少量的典型特征向量进行SVM扬声器验证。使用这种新的组合方法,我们的扬声器验证系统明显优于NIST'04 1号码数据库上的当前最先进的GMM-UBM系统。

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