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Detecting Pronunciation Errors in Spoken English Tests Based on Multifeature Fusion Algorithm

机译:基于多因素融合算法检测英语英语测试中的发音错误

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In this study, multidimensional feature extraction is performed on the U-language recordings of the test takers, and these features are evaluated separately, with five categories of features: pronunciation, fluency, vocabulary, grammar, and semantics. A deep neural network model is constructed to model the feature values to obtain the final score. Based on the previous research, this study uses a deep neural network training model instead of linear regression to improve the correlation between model score and expert score. The method of using word frequency for semantic scoring is replaced by the LDA topic model for semantic analysis, which eliminates the need for experts to manually label keywords before scoring and truly automates the critique. Also, this paper introduces text cleaning after speech recognition and deep learning-based speech noise reduction technology in the scoring model, which improves the accuracy of speech recognition and the overall accuracy of the scoring model. Also, innovative applications and improvements are made to key technologies, and the latest technical solutions are integrated and improved. A new open oral grading model is proposed and implemented, and innovations are made in the method of speech feature extraction to improve the dimensionality of open oral grading.
机译:在这项研究中,对测试者的U语言记录进行了多维特征提取,这些功能分别评估,其中五类特征:发音,流利,词汇,语法和语义。构建深度神经网络模型以模拟特征值以获得最终得分。基于以前的研究,本研究使用深度神经网络训练模型而不是线性回归,以提高模型分数与专家评分之间的相关性。使用Word频率进行语义评分的方法是由语义分析的LDA主题模型取代,这消除了专家在评分之前手动标记关键字,并真正自动化批评。此外,本文介绍了语音识别和基于深度学习的语音降噪技术的文本清洁,在评分模型中提高了语音识别的准确性和评分模型的整体准确性。此外,对关键技术进行了创新的应用和改进,并集成了最新的技术解决方案。提出并实施了新的开放式口腔分级模型,在语音特征提取方法中提出了创新,以提高开放口腔分级的维度。

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