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首页> 外文期刊>Engineering Applications of Artificial Intelligence >A retrospective study on handwritten mathematical symbols and expressions: Classification and recognition
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A retrospective study on handwritten mathematical symbols and expressions: Classification and recognition

机译:手写数学符号与表达的回顾性研究:分类和识别

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摘要

Context: Many scientific and technical literature documents contain MSs and MEs that are more challenging to be recognized by computers than plain text. The recognition of HMSE becomes not only an ambitious task but a motivating research area covering concepts of computer vision, pattern recognition, feature extraction, and artificial intelligence.Objective: The objective is to perform an extensive state of the art on the techniques and methods used for recognizing and classifying HMSE. The authors endeavor to bring out all significant findings in sub-processes, representation models, algorithms, tools, datasets, and comparative analysis of the accuracy of the recognition models.Method: The current research implements the standard SLR method based on a comprehensive set of 120 articles published in 21 leading journals and 39 premier conferences and workshops.Results: Existing literature about recognition techniques and models is classified broadly into three categories; AI technique (65%) is majorly implemented in the selected studies. The prominent sub-process 'segmentation' (52%) is mostly used. The box and tree are the prevailing representation models. The popular datasets are recognized as CROHME 2014 and CROHME 2016, used by 60% of the selected studies. Masaki Nakagawa, C. Viard Guardin, Richard Zanibbi, and Harold Mouchere are the most noticed authors in ME recognition. Conclusion: The reviewers call for increased awareness of the potential benefits of existing and emerging recognition techniques and identify the need to develop a more accurate and semantic-based recognition model. Recommendations are given for future research.
机译:背景:许多科学和技术文献文件包含MSS和MES,这些文件更具挑战性,而不是纯文本的计算机认可。 HMSE的认可不仅变得雄心勃勃的任务,而是一种涵盖计算机视觉,模式识别,特征提取和人工智能的概念的激励研究区。目的是在所用技术和方法上对本领域进行广泛的技术识别和分类HMSE。作者努力在识别模型的准确性中培养子流程,代表模型,算法,工具,数据集和比较分析的所有重要发现。方法:目前的研究基于一套120篇文章在21个领先的期刊和39名总理会议和研讨会上发表。结果:关于识别技术和模型的现有文献均广泛分为三类; AI技术(65%)主要在所选研究中实施。主要使用突出的子流程“分段”(52%)。框和树是主要的表示模型。受欢迎的数据集被公认为由60%所选研究使用的克罗欧2014和克罗欧2016。 Masaki Nakagawa,C.Viard Guardin,Richard Zanibbi,以及Harold Mouchere是我最受承认的最受记忆的作家。结论:审查人员要求提高现有和新兴识别技术的潜在利益的认识,并确定有必要发展更准确和基于语义的识别模型。建议是未来的研究。

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