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An On-line Adaptation Technique for Emotional Speech Recognition Using Style Estimation with Multiple-Regression HMM

机译:用多元回归嗯使用风格估计的情绪语音识别的在线适应技术

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This paper describes a model adaptation technique for emotional speech recognition based on multiple-regression HMM (MR-HMM). We use a low-dimensional vector called style vector which corresponds the degree of expressivity of emotional speech as the explanatory variable of the regression. In the proposed technique, first, the value of the style vector for input speech is estimated. Then, using the estimated style vector, new mean vectors of the output distributions of HMM are adapted to the input style. The style vector is estimated every input utterance, and an on-line adaptation can be done in each utterance. We perform phoneme recognition experiments for professional narrators' acted speech and evaluate the performance by comparing with style-dependent and style-independent HMMs. Experimental results show the proposed technique reduced the error rates by 11% of the style-independent model.
机译:本文介绍了一种基于多元回归HMM(MR-HMM)的情绪语音识别模型适应技术。我们使用称为样式向量的低维向量,该载体对应于情感语音的表情程度作为回归的解释变量。在所提出的技术中,首先,估计输入语音的样式向量的值。然后,使用估计的样式向量,HMM的输出分布的新均值向量适用于输入样式。估计样式矢量估计每个输入话语,并且可以在每个话语中完成在线调整。我们对职业叙述者进行演讲进行音素识别实验,并通过与依赖式和互相无关的HMMS进行比较来评估性能。实验结果表明,所提出的技术将误差率降低了11%的风格独立模型。

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