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首页> 外文期刊>IEEE Transactions on Speech and Audio Proceessing >Discriminative linear transforms for feature normalization and speaker adaptation in HMM estimation
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Discriminative linear transforms for feature normalization and speaker adaptation in HMM estimation

机译:HMM估计中用于特征归一化和说话人自适应的区分线性变换

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摘要

Linear transforms have been used extensively for training and adaptation of HMM-based ASR systems. Recently procedures have been developed for the estimation of linear transforms under the Maximum Mutual Information (MMI) criterion. In this paper we introduce discriminative training procedures that employ linear transforms for feature normalization and for speaker adaptive training. We integrate these discriminative linear transforms into MMI estimation of HMM parameters for improvement of large vocabulary conversational speech recognition systems.
机译:线性变换已被广泛用于基于HMM的ASR系统的训练和适应。最近,已经开发了用于在最大互信息(MMI)标准下估计线性变换的过程。在本文中,我们介绍了采用线性变换进行特征归一化和说话人自适应训练的判别训练程序。我们将这些判别线性变换集成到HMM参数的MMI估计中,以改善大型词汇会话语音识别系统。

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