首页> 外国专利> Training module for estimating mixture Gaussian densities for speech unit models in speech recognition systems

Training module for estimating mixture Gaussian densities for speech unit models in speech recognition systems

机译:训练模块,用于估计语音识别系统中语音单元模型的混合高斯密度

摘要

A model-training module generates mixture Gaussian density models from speech training data for continuous, or isolated word speech recognition systems. Speech feature sequences are labeled into segments of states of speech units using Viterbi-decoding based optimized segmentation algorithm. Each segment is modeled by a Gaussian density, and the parameters are estimated by sample mean and sample covariance. A mixture Gaussian density is generated for each state of each speech unit by merging the Gaussian densities of all the segments with the same corresponding label. The resulting number of mixture components is proportional to the dispersion and sample size of the training data. A single, fully merged, Gaussian density is also generated for each state of each speech unit. The covariance matrices of the mixture components are selectively smoothed by a measure of relative sharpness of the Gaussian density and the smoothing can also be done blockwise. The weights of the mixture components are set uniformly initially, and are reestimated using a segmental-average procedure. The weighting coefficients, together with the Gaussian densities, then become the models of speech units for use in speech recognition.
机译:模型训练模块从语音训练数据生成混合高斯密度模型,以用于连续或隔离的单词语音识别系统。使用基于维特比解码的优化分割算法将语音特征序列标记为语音单元的状态段。每个部分均以高斯密度建模,参数通过样本均值和样本协方差估算。通过将所有片段的高斯密度与相同的相应标签合并,可以为每个语音单元的每个状态生成混合高斯密度。混合成分的最终数量与训练数据的离散度和样本大小成正比。对于每个语音单元的每个状态,也会生成单个完全合并的高斯密度。通过测量高斯密度的相对锐度来选择性地平滑混合成分的协方差矩阵,并且也可以逐块进行平滑。最初,将混合物成分的重量统一设置,然后使用分段平均程序重新估算。然后,加权系数与高斯密度一起成为用于语音识别的语音单位模型。

著录项

  • 公开/公告号US5450523A

    专利类型

  • 公开/公告日1995-09-12

    原文格式PDF

  • 申请/专利权人 MATSUSHITA ELECTRIC INDUSTRIAL CO. LTD.;

    申请/专利号US19930071334

  • 发明设计人 YUNXIN ZHAO;

    申请日1993-06-01

  • 分类号G10L9/00;

  • 国家 US

  • 入库时间 2022-08-22 04:04:21

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