首页> 外文会议>World multiconference on systemics, cybernetics and informatics;SCI 2000 >DISCRIMINATIVE HIDDEN MARKOV MODELS USING VECTOR-VALUED DYNAMIC WEIGHTING PARAMETERS FOR ALPHABET RECOGNITION
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DISCRIMINATIVE HIDDEN MARKOV MODELS USING VECTOR-VALUED DYNAMIC WEIGHTING PARAMETERS FOR ALPHABET RECOGNITION

机译:使用向量值动态加权参数进行字母识别的区分性隐马尔可夫模型

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In this work, an integrated approach to vector dynamic feature extraction is described in the design of a hidden Markov model (VVD-IHMM) based speech recognizer. The new model contains state-dependent, vector-valued weighting functions responsible for transforming static speech features into the dynamic ones. In this paper, the minimum classification error (MCE) is extended from the earlier formulation of VVD-IHMM that applies to a novel maximum-likelihood based training algorithm. The experimental results on alphabet classification demonstrate the effectiveness of the MCE-trained new model relative to VVD-IHMM using dynamic features that have been subject to optimization during MLE-training.
机译:在这项工作中,基于隐马尔可夫模型(VVD-IHMM)的语音识别器的设计中描述了一种矢量动态特征提取的集成方法。新模型包含状态相关的,向量值加权函数,这些函数负责将静态语音特征转换为动态语音特征。在本文中,最小分类误差(MCE)是从VVD-IHMM的早期公式扩展而来的,该公式适用于基于最大似然的新型训练算法。字母分类的实验结果证明了使用MCE训练的新模型相对于VVD-IHMM的有效性,该模型使用了在MLE训练过程中经过优化的动态特征。

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