用于语音识别的高斯/对数线性混合hmm的判别分裂

Muhammad Ali Tahir, R. Schlüter, H. Ney
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引用次数: 5

摘要

提出了一种将混合密度分解方法引入声学模型判别对数线性训练的方法。标准的方法是通过极大似然训练和密度分割得到一个高分辨率的模型,然后对该模型进行判别训练。对于单态高斯密度的对数线性MMI优化是一个全局极大值问题,通过对该模型的进一步拆分和判别训练,可以得到一个更高复杂度的模型。混合训练并不是一个全局极值问题,但在实验中,我们在大语料库上实现了目标函数的大幅度提高,相应的错误率也有适度的提高
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminative splitting of Gaussian/log-linear mixture HMMs for speech recognition
This paper presents a method to incorporate mixture density splitting into the acoustic model discriminative log-linear training. The standard method is to obtain a high resolution model by maximum likelihood training and density splitting, and then further training this model discriminatively. For a single Gaussian density per state the log-linear MMI optimization is a global maximum problem, and by further splitting and discriminative training of this model we can get a higher complexity model. The mixture training is not a global maximum problem, nevertheless experimentally we achieve large gains in the objective function and corresponding moderate gains in the word error rate on a large vocabulary corpus
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