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基于语言特征的本体匹配算法在英语发音质量评估中的应用。

Application of Ontology Matching Algorithm Based on Linguistic Features in English Pronunciation Quality Evaluation.

机构信息

China University of Petroleum (Huadong), Qingdao, Shandong 266580, China.

出版信息

Occup Ther Int. 2022 Jun 28;2022:2734672. doi: 10.1155/2022/2734672. eCollection 2022.

Abstract

Traditional English classroom teaching is difficult to meet the oral learning needs of most learners. Thanks to the continuous advancement of speech processing technology, computer-assisted language learning systems are becoming more intelligent, not only pointing out learners' pronunciation errors but also assessing their overall pronunciation level. . This paper uses the method of tree kernel function to measure the similarity of two ontology trees. According to the features of nodes in ontology tree, methods to calculate the external features and internal features of nodes are proposed, respectively. External features are mainly obtained by calculating the hierarchical centrality, node density, and node coverage of nodes in the ontology tree; internal features are mainly obtained by measuring the richness of internal information. According to the similarity of ontology tree and the external features and internal features of nodes, the calculation formula of structural comprehensive similarity is improved, and the features of ontology itself can be fully considered in the calculation. According to the difference of the structure, the weights of the corresponding features during the calculation are adjusted autonomously, so that the calculation results are closer to reality. In spectral image preprocessing, endpoint detection utilizes the harmonic characteristics presented by narrowband spectrograms with high frequency resolution and eliminates useless nonspeech segments by detecting the presence of voiced segments. When building the neural network model, four convolutional layers, two fully connected layers, and one softmax output layer were conceived, and dropout was used to randomly suspend the work of some neurons to avoid overfitting. . Through the data analysis of mean and variance and verified by one-way analysis of variance, it proves that the sentiment evaluation method in this paper is effective. The traditional multiple linear regression method is not suitable for the corpus and application scenarios of this paper. This paper proposes a decision tree structure, which is similar to the overall scoring process of raters, and uses the Interactive Dicremiser version 3 (ID3) algorithm to build a comprehensive evaluation decision tree for pitch, rhythm, intonation, speech rate, and emotion indicators. It is proved by experiments that the accurate consistency rate of the human-machine evaluation in this paper is 93%, the adjacent consistency rate is 96%, and the Pearson correlation coefficient value of the human-machine evaluation results is 0.89. The data results prove that the evaluation method in this paper is credible.

摘要

传统的英语课堂教学很难满足大多数学习者的口语学习需求。由于语音处理技术的不断进步,计算机辅助语言学习系统变得越来越智能化,不仅能指出学习者的发音错误,还能评估他们的整体发音水平。本文使用树核函数的方法来测量两个本体树的相似度。根据本体树节点的特征,提出了分别计算节点外部特征和内部特征的方法。外部特征主要通过计算本体树中节点的层次中心度、节点密度和节点覆盖度来获得;内部特征主要通过测量内部信息的丰富度来获得。根据本体树的相似度以及节点的外部特征和内部特征,改进了结构综合相似度的计算公式,在计算中充分考虑了本体自身的特征。根据结构的差异,自主调整相应特征的权重,使计算结果更接近实际情况。在光谱图像预处理中,端点检测利用具有高频分辨率的窄带频谱的谐波特性,并通过检测浊音段的存在来消除无用的非语音段。在构建神经网络模型时,构思了四个卷积层、两个全连接层和一个 softmax 输出层,并使用 dropout 随机暂停一些神经元的工作以避免过拟合。通过均值和方差的数据分析,并通过单向方差分析验证,证明了本文提出的情感评价方法是有效的。传统的多元线性回归方法不适用于本文的语料库和应用场景。本文提出了一种决策树结构,类似于评分者的整体评分过程,并使用交互式分类器版本 3(ID3)算法为音高、节奏、语调、语速和情感指标构建综合评价决策树。实验证明,本文提出的人机评价准确一致性率为 93%,相邻一致性率为 96%,人机评价结果的 Pearson 相关系数值为 0.89。数据结果证明了本文提出的评价方法是可信的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9799/9256437/d7883e205fe7/OTI2022-2734672.001.jpg

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