基于音素的连续语音识别随机片段模型

Salim Roukos, M. O. Dunham
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引用次数: 14

摘要

为不同的语音建立准确、鲁棒的语音模型是实现高性能连续语音识别的主要挑战。在本文中,我们引入了一种新的方法,称为随机段模型,用于建模一个变长语音段X,一个l长的特征向量序列。随机段模型包括:1)将变长段X时间规整为被称为重采样段的定长段Y; 2)重采样段Y参数的联合密度函数,在本文中假设为高斯分布。在本文中,我们描述了随机片段模型、识别算法以及从连续语音中估计片段模型的迭代训练算法。对于依赖于说话人的连续语音识别,该分段模型比隐马尔可夫语音模型降低了三分之一的单词错误率。
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A stochastic segment model for phoneme-based continuous speech recognition
Developing accurate and robust phonetic models for the different speech sounds is a major challenge for high performance continuous speech recognition. In this paper, we introduce a new approach, called the stochastic segment model, for modelling a variable-length phonetic segment X, an L-long sequence of feature vectors. The stochastic segment model consists of 1) time-warping the variable-length segment X into a fixed-length segment Y called a resampled segment, and 2) a joint density function of the parameters of the resampled segment Y, which in this work is assumed Gaussian. In this paper, we describe the stochastic segment model, the recognition algorithm, and the iterative training algorithm for estimating segment models from continuous speech. For speaker-dependent continuous speech recognition, the segment model reduces the word error rate by one third over a hidden Markov phonetic model.
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