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Analysis of the characteristics of English part of speech based on unsupervised machine learning and image recognition model

机译:基于无监督机器学习和图像识别模型的英语部分语言特征分析

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摘要

If there are more external interference factors in the process of intelligent recognition in English, the recognition accuracy will be greatly reduced. It is of great academic value and application significance to deeply study feature recognition of English part-of-speech and realize automatic image processing of English recognition. Based on unsupervised machine learning and image recognition technology, this study combines the actual factors of English recognition to set the corresponding influencing factors and proposes a reliable method to identify multi-body rotating characters. This method utilizes the principle of the periodic characteristics of the trajectory rotation on the feature space. Moreover, this study conducts a comparative analysis of recognition accuracy by comparative experiments. In addition, this paper analyzes the recognition principles of 4 fonts in detail. The research results show that the proposed method has certain effects and can provide theoretical reference for subsequent related research.
机译:如果英语中智能识别过程中有更多的外部干扰因素,则将大大减少识别准确性。对深度学习专题认识的英语讲话和实现英语认可自动图像处理是巨大的学术价值和应用意义。本研究基于无监督机器学习和图像识别技术,结合了英语认可的实际因素来设置相应的影响因素,并提出了一种可靠的方法来识别多体旋转字符。该方法利用特征空间上轨迹旋转的周期性特征的原理。此外,该研究通过对比实验进行了对识别准确性的比较分析。此外,本文详细分析了4个字体的识别原理。研究结果表明,该方法具有一定的效果,可为随后的相关研究提供理论参考。

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