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Histogram equalization for noise-robust speech recognition using discrete-mixture HMMs

机译:使用离散混合HMM进行直方图均衡以实现鲁棒语音识别

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References(10) Cited-By(1) In this paper, we introduce a new method of robust speech recognition under noisy conditions based on discrete-mixture hidden Markov models (DMHMMs). DMHMMs were originally proposed to reduce calculation costs in the decoding process. Recently, we have applied DMHMMs to noisy speech recognition, and found that they were effective for modeling noisy speech. Towards the further improvement of noise-robust speech recognition, we propose a novel normalization method for DMHMMs based on histogram equalization (HEQ). The HEQ method can compensate the nonlinear effects of additive noise. It is generally used for the feature space normalization of continuous-mixture HMM (CMHMM) systems. In this paper, we propose both model space and feature space normalization of DMHMMs by using HEQ. In the model space normalization, codebooks of DMHMMs are modified by the transform function derived from the HEQ method. The proposed method was compared using both conventional CMHMMs and DMHMMs. The results showed that the model space normalization of DMHMMs by multiple transform functions was effective for noise-robust speech recognition.
机译:参考文献(10)Cited-By(1)本文介绍了一种基于离散混合隐马尔可夫模型(DMHMM)的在嘈杂条件下鲁棒语音识别的新方法。最初提出DMHMM是为了减少解码过程中的计算成本。最近,我们将DMHMMs应用于嘈杂的语音识别,发现它们对于建模嘈杂的语音非常有效。为了进一步改善鲁棒性语音识别,我们提出了一种基于直方图均衡化(HEQ)的DMHMM归一化方法。 HEQ方法可以补偿加性噪声的非线性影响。它通常用于连续混合HMM(CMHMM)系统的特征空间归一化。在本文中,我们使用HEQ提出了DMHMM的模型空间和特征空间归一化。在模型空间归一化中,通过从HEQ方法派生的变换函数来修改DMHMM的代码本。使用传统的CMHMM和DMHMM对建议的方法进行了比较。结果表明,利用多种变换函数对DMHMMs进行模型空间归一化对噪声鲁棒的语音识别是有效的。

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