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Hidden Markov Models for automatic speech recognition

机译:隐藏马尔可夫自动语音识别模型

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摘要

In this paper we look into the problem of Hidden Markov Models (HMM): the evaluation, the decoding and the learning problem. We have explored an approach to increase the effectiveness of HMM in the speech recognition field. Although hidden Markov modeling has significantly improved the performance of current speech-recognition systems, the general problem of completely fluent speaker-independent speech recognition is still far from being solved. For example, there is no system which is capable of reliably recognizing unconstrained conversational speech. Also, there does not exist a good way to infer the language structure from a limited corpus of spoken sentences statistically. Therefore, we want to provide an overview of the theory of HMM, discuss the role of statistical methods, and point out a range of theoretical and practical issues that deserve attention and are necessary to understand so as to further advance research in the field of speech recognition.
机译:在本文中,我们研究了隐藏的马尔可夫模型(HMM)的问题:评估,解码和学习问题。我们探索了一种提高语音识别领域中亨姆的有效性的方法。虽然隐藏的马尔可夫建模具有显着提高了当前语音识别系统的性能,但完全流畅的扬声器的语音识别的一般问题仍然远未解决。例如,没有能够可靠地识别不受约束的对话语音的系统。此外,没有统计上有限的口语句子语料库中推断语言结构的好方法。因此,我们希望概述嗯,讨论统计方法的作用,并指出了一系列应得的理论和实际问题,有必要的理解,以便进一步推进言论领域的研究认出。

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