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Genones: generalized mixture tying in continuous hidden Markov model-based speech recognizers

机译:Genones:基于连续隐马尔可夫模型的语音识别器中的广义混合绑定

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摘要

An algorithm is proposed that achieves a good tradeoff between modeling resolution and robustness by using a new, general scheme for tying of mixture components in continuous mixture-density hidden Markov model (HMM)-based speech recognizers. The sets of HMM states that share the same mixture components are determined automatically using agglomerative clustering techniques. Experimental results on ARPA's Wall Street Journal corpus show that this scheme reduces errors by 25% over typical tied-mixture systems. New fast algorithms for computing Gaussian likelihoods-the-most time-consuming aspect of continuous-density HMM systems-are also presented. These new algorithms-significantly reduce the number of Gaussian densities that are evaluated with little or no impact on speech recognition accuracy.
机译:提出了一种算法,该算法通过使用一种新的,用于基于连续混合密度隐藏马尔可夫模型(HMM)的语音识别器中的混合成分绑定的通用方案,在建模分辨率和鲁棒性之间取得良好的折衷。使用凝聚聚类技术自动确定共享相同混合物成分的HMM状态集。 ARPA的《华尔街日报》语料库的实验结果表明,与典型的混合混合系统相比,该方案可将错误减少25%。还提出了用于计算高斯似然性的新的快速算法-连续密度HMM系统最耗时的方面。这些新算法极大地减少了评估的高斯密度的数量,而对语音识别精度几乎没有影响。

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