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Acoustic Model Adaptation for Speech Recognition

机译:语音识别的声学模型自适应

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摘要

Statistical speech recognition using continuous-density hidden Markov models (CDHMMs) has yielded many practical applications. However, in general, mismatches between the training data and input data significantly degrade recognition accuracy. Various acoustic model adaptation techniques using a few input utterances have been employed to overcome this problem. In this article, we survey these adaptation techniques, including maximum a posteriori (MAP) estimation, maximum likelihood linear regression (MLLR), and eigenvoice. We also present a schematic view called the adaptation pyramid to illustrate how these methods relate to each other.
机译:使用连续密度隐马尔可夫模型(CDHMM)的统计语音识别已产生了许多实际应用。但是,通常,训练数据和输入数据之间的不匹配会大大降低识别精度。已经采用了使用一些输入话语的各种声学模型自适应技术来克服该问题。在本文中,我们调查了这些适应技术,包括最大后验(MAP)估计,最大似然线性回归(MLLR)和特征语音。我们还提供了一个称为适应金字塔的示意图,以说明这些方法如何相互关联。

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