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Robust speech recognition based on joint model and feature space optimization of hidden Markov models

机译:基于联合模型和隐马尔可夫模型特征空间优化的鲁棒语音识别

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The hidden Markov model (HMM) inversion algorithm, based on either the gradient search or the Baum-Welch reestimation of input speech features, is proposed and applied to the robust speech recognition tasks under general types of mismatch conditions. This algorithm stems from the gradient-based inversion algorithm of an artificial neural network (ANN) by viewing an HMM as a special type of ANN. Given input speech features s, the forward training of an HMM finds the model parameters /spl lambda/ subject to an optimization criterion. On the other hand, the inversion of an HMM finds speech features, s, subject to an optimization criterion with given model parameters /spl lambda/. The gradient-based HMM inversion and the Baum-Welch HMM inversion algorithms can be successfully integrated with the model space optimization techniques, such as the robust MINIMAX technique, to compensate the mismatch in the joint model and feature space. The joint space mismatch compensation technique achieves better performance than the single space, i.e. either the model space or the feature space alone, mismatch compensation techniques. It is also demonstrated that approximately 10-dB signal-to-noise ratio (SNR) gain is obtained in the low SNR environments when the joint model and feature space mismatch compensation technique is used.
机译:提出了一种基于梯度搜索或输入语音特征的Baum-Welch重新估计的隐马尔可夫模型(HMM)反演算法,并将其应用于一般类型的不匹配条件下的鲁棒语音识别任务。通过将HMM视为一种特殊的ANN,该算法源自人工神经网络(ANN)的基于梯度的反演算法。给定输入语音特征s,HMM的正向训练会根据优化准则找到模型参数/ spl lambda /。另一方面,HMM的求反可根据给定模型参数/ spl lambda /的优化标准找到语音特征s。基于梯度的HMM反演和Baum-Welch HMM反演算法可以与模型空间优化技术(例如鲁棒的MINIMAX技术)成功集成,以补偿联合模型和特征空间中的不匹配。联合空间失配补偿技术比单个空间(即模型空间或特征空间)具有更好的性能,即失配补偿技术。还证明了当使用联合模型和特征空间失配补偿技术时,在低SNR环境中可获得大约10 dB的信噪比(SNR)增益。

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