AI Recognition Method of Pronunciation Errors in Oral English Speech with the Help of Big Data for Personalized Learning

Yanqing Liu, Qiaoli Quan
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引用次数: 3

Abstract

At present, there is a lack of careful consideration in the judgment process of pronunciation errors in many English speeches. These pronunciation errors will create a great impact on personalized learning. The process of creating a data set for errors is also not an easy work. On considering the above obstacle, an artificial intelligent recognition method of pronunciation errors in English speeches for personalized learning along with big data is proposed. This method takes the average pronunciation level of standard speech as the basis of pronunciation error judgment, and judges the pronunciation and application of words such as speed, pronunciation, semantics, etc. In the Hidden Markov Model (HMM) modelling method of speech recognition, Viterbi algorithm and improved posterior probability algorithm are implemented to recognize student’s vocalization instinctively. Through the segmentation and scoring of basic units, English learners are provided with reliable pronunciation information feedback, correct pronunciation errors and give corresponding feedback according to the judgment results. The innovation outcome establishes that the intelligent recognition method for personalized learning can efficiently diminish the error rate and enhance the accuracy of error detection. Let the artificial intelligence (AI) correct English learner’s pronunciation errors intelligently.
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基于大数据个性化学习的英语口语语音错误人工智能识别方法
目前,很多英语演讲在判断语音错误的过程中缺乏缜密的考量。这些发音错误会对个性化学习造成很大的影响。为错误创建数据集的过程也不是一件容易的工作。针对上述障碍,本文提出了一种结合大数据进行个性化学习的英语演讲语音错误人工智能识别方法。该方法以标准语音的平均发音水平作为发音错误判断的依据,对语速、发音、语义等词的发音和应用进行判断。在语音识别的隐马尔可夫模型(HMM)建模方法中,实现了Viterbi算法和改进后验概率算法对学生发声的本能识别。通过对基本单元的分割和评分,为英语学习者提供可靠的发音信息反馈,根据判断结果纠正发音错误并给予相应的反馈。创新结果表明,个性化学习的智能识别方法可以有效地降低错误率,提高错误检测的准确性。让人工智能(AI)智能纠正英语学习者的发音错误。
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