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Log-Sepctral Linear Regression Based on Voicing Cut-Off Frequency for Robust Speech Recognition

机译:基于鲁棒语音识别的表演截止频率的记录线性回归

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This paper proposes a maximum likelihood log-spectral linear regression algorithm based on voicing cut-off frequency for robust speech recognition, which converts the pre-trained acoustic model to the log-spectral domain by the inverse discrete cosine transform and ignores the high-frequency part of the training mean and variance. Then the testing mean and variance are obtained by the log-spectral linear regression and the linear regression parameters are estimated from small amounts of adaptive data using the expectation-maximization algorithm under the maximum likelihood criterion. The experimental results show that the proposed algorithm can obtain more accurate testing acoustic models and outperforms the traditional linear regression method.
机译:本文提出了一种基于强大的语音识别的发型截止频率的最大似然记录线性回归算法,其通过逆离散余弦变换将预先训练的声学模型转换为日志光谱域,并忽略高频 部分培训均值和方差。 然后,通过使用最大似然标准的期望最大化算法,通过日志光谱线性回归获得测试均值和方差,并且在最大似然标准下使用期望最大化算法从少量自适应数据估计线性回归参数。 实验结果表明,该算法可以获得更准确的测试声学模型,优于传统的线性回归方法。

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