English Speech Recognition and Pronunciation Quality Evaluation Model Based on Neural Network

Author:

Wang Li1ORCID

Affiliation:

1. Department of Foreign Languages, Nanchong Vocational and Technical College, Nanchong 637131, Sichuan, China

Abstract

An in-depth neural network-based approach is proposed to better develop an assessment model for English speech recognition and call quality assessment. By studying the structure of a deep nonlinear network, you can approximate complex functions, define distributed representations of input data, demonstrate a strong ability to learn important data set characteristics from some sample sets, and better simulate human brain analysis, and learning. The author uses in-depth learning technology to recognize English speech and has developed a speech recognition model with a deep belief network using the characteristics of the honey frequency centrum based on human hearing patterns. The test results show that examples include 210 machine and manual evaluations and 30 samples with first-grade differences. The overall compatibility level of the machine and human evaluation is 90.65%, and the adjacency consistency level is 90.65%. This is 100%, and the correlation coefficient is 0.798. We need to evaluate the quality of speech and pronunciation in English, which indicates a strong correlation between machine estimates and human estimates.

Publisher

Hindawi Limited

Subject

Computer Science Applications,Software

Reference24 articles.

1. Speech recognition and lip shape feature extraction for English vowel pronunciation of the hearing - impaired based on SVM technique;K. I. Lee;Journal of Rehabilitation Welfare Engineering & Assistive Technology,2017

2. Deep Learning for Security in Digital Twins of Cooperative Intelligent Transportation Systems;Z. Lv;IEEE Transactions on Intelligent Transportation Systems,2021

3. Quality evaluation of English pronunciation based on artificial emotion recognition and Gaussian mixture model;G. Zhang;Journal of Intelligent and Fuzzy Systems,2020

4. Dynamic robot path planning system using neural network

5. Research on English pronunciation training based on intelligent speech recognition

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