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Learning Polynomial Function Based Neutral-Emotion GMM Transformation for Emotional Speaker Recognition

机译:基于多项式功能的中性情绪GMM转换为情绪扬声器识别

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One of the biggest challenges in speaker recognition is dealing with speaker-emotion variability. The basic problem is how to train the emotion GMMs of the speakers from their neutral speech and how to calculate the scores of the feature vectors against the emotion GMMs. In this paper, we present a new neutral-emotion GMM transformation algorithm to overcome this limitation. A transformation function based on polynomial function is learned to represent the relationship between the neutral and emotion GMM. It is adopted in testing to calculate the scores against the emotion GMM. The experiments carried on MASC show the performance is improved with an EER reduction of 39.5% from the baseline system.
机译:扬声器认可中最大的挑战之一是处理扬声器情感变异性。基本问题是如何从中立语音训练扬声器的情感Gmm,以及如何计算针对情绪Gmms的特征向量的分数。在本文中,我们提出了一种新的中性情绪GMM转换算法来克服这种限制。学习基于多项式函数的转换功能来表示中性和情感GMM之间的关系。在测试中采用它来计算针对情绪GMM的分数。在MAC SAC上携带的实验表明性能得到改善,eer从基线系统的eer减少39.5%。

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