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Semi-tight covariance matrices implementation in MASPER HMM training procedure

机译:MASPER HMM训练过程中的半紧协方差矩阵实现

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The article discuses aspects of incorporating shared linear transformations to implement semi-tight covariance matrices into MASPER HMM training procedure. The concern is on heteroscendic linear discriminative analysis (HLDA) applied to speech features. Next main implementation issues and necessary modifications to the standard MASPER training procedure are introduced. Finally an evaluation of the suggested and implemented changes is accomplished. Apart of that large vocabulary word loop test (LVWLT) has been designed and implemented in order to provide finer system evaluation. All experiments have been executed on Slovak part of MobilDat training database. Achieved results show that incorporation of semi-tight matrices is beneficial in the terms of word error rates (WER) for wide range of test scenarios and models. However, it is for the sake of the increased number of free parameters, sensitivity of complex models to the overtraining and longer training times.
机译:本文讨论了将共享线性变换合并到MASPER HMM训练过程中以实现半紧协方差矩阵的各个方面。关注的是应用于语音特征的异方差线性判别分析(HLDA)。接下来介绍了主要的实现问题以及对标准MASPER培训程序的必要修改。最后,完成对建议的和已实施的更改的评估。除此以外,还设计并实现了大词汇量词环测试(LVWLT),以提供更好的系统评估。所有实验均已在MobilDat培训数据库的斯洛伐克部分执行。取得的结果表明,在各种测试场景和模型的单词错误率(WER)方面,半紧缩矩阵的合并是有益的。但是,这是因为增加了自由参数的数量,复杂模型对过度训练的敏感性以及更长的训练时间。

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