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Real time speech recognition algorithm on embedded system based on continuous Markov model

机译:基于连续马尔可夫模型的嵌入式系统实时语音识别算法

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Real time speech recognition technology, as a key cross technology in the field of artificial intelligence in recent years, has been widely used in the fields of intelligent voice toys, industrial control and intelligent rehabilitation. Because the real-time speech recognition technology based on embedded technology has obvious advantages in the volume, power consumption and research and development cost of the system, it has become a hot carrier to achieve efficient speech recognition technology. In order to realize a simple and practical real-time speech recognition system based on embedded system, this paper designs a basic framework of machine learning based on Markov random field theory combined with machine learning theory, and studies the algorithm of real-time speech vocabulary matching recognition based on this framework. In detail, the algorithm proposed in this paper will process the speech signal from the aspects of preprocessing, signal detection, feature extraction and quantization. Finally, this paper will build a realtime speech recognition system based on DSP processor. The experimental results show that the real-time speech recognition algorithm proposed in this paper can improve the real-time recognition speed of the system. The corresponding speed changes from about 12 s to about 200 ms, and the corresponding realtime accuracy rate increases to about 95%. (C) 2020 Elsevier B.V. All rights reserved.
机译:实时语音识别技术,作为近年来人工智能领域的关键交叉技术,已广泛应用于智能语音玩具,工业控制和智能康复领域。由于基于嵌入式技术的实时语音识别技术在体积,功耗和开发成本中具有明显的优势,它已成为实现高效语音识别技术的热载体。为了实现基于嵌入式系统的简单实用的实时语音识别系统,本文基于Markov随机场理论与机器学习理论相结合的基础框架,研究了实时语音词汇算法基于此框架的匹配识别。详细地,本文提出的算法将从预处理,信号检测,特征提取和量化的方面处理语音信号。最后,本文将构建基于DSP处理器的实时语音识别系统。实验结果表明,本文提出的实时语音识别算法可以提高系统的实时识别速度。相应的速度从约12秒变为约200毫秒,相应的实时精度率增加到约95%。 (c)2020 Elsevier B.v.保留所有权利。

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