Application of Speech Recognition Technology in Chinese English Simultaneous Interpretation of Law

Q4 Engineering
Xiao Yang
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引用次数: 1

Abstract

Speech recognition is an important research field in natural language processing. In Chinese and English, which have rich data resources, the performance of end-to-end speech recognition model is close to that of Hidden Markov Model—Deep Neural Network (HMM-DNN) model. However, for the low resource speech recognition task of Chinese English hybrid, the end-to-end speech recognition system does not achieve good performance. In the case of limited mixed data between Chinese and English, the modeling method of end-to-end speech recognition is studied. This paper focuses on two end-to-end speech recognition models: connection timing distribution and attention based codec network. In order to improve the performance of Chinese English hybrid speech recognition, this paper studies how to improve the performance of the coder based on connection timing distribution model and attention mechanism, and tries to combine the two models to improve the performance of Chinese English hybrid speech recognition. In low resource Chinese English mixed data, the advantages of different models are used to improve the performance of end-to-end models, so as to improve the recognition accuracy of speech recognition technology in legal Chinese English simultaneous interpretation.
语音识别技术在中英文法律同声传译中的应用
语音识别是自然语言处理中的一个重要研究领域。在数据资源丰富的中文和英文中,端到端语音识别模型的性能接近隐马尔可夫模型-深度神经网络(HMM-DNN)模型。然而,对于中英混合的低资源语音识别任务,端到端语音识别系统并没有取得很好的性能。在有限的中英文混合数据情况下,研究了端到端语音识别的建模方法。本文重点研究了两种端到端语音识别模型:连接时序分布模型和基于注意力的编解码网络模型。为了提高中英混合语音识别的性能,本文研究了如何基于连接时间分布模型和注意机制来提高编码器的性能,并尝试将这两种模型结合起来提高中英混合语音识别的性能。在低资源的中英文混合数据中,利用不同模型的优势,提高端到端模型的性能,从而提高法律中英文同声传译语音识别技术的识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Circuits, Systems and Signal Processing
International Journal of Circuits, Systems and Signal Processing Engineering-Electrical and Electronic Engineering
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