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Arabic Online Handwriting Recognition (AOHR): A Survey

机译:阿拉伯文在线手写识别(AOHR):一项调查

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This article comprehensively surveys Arabic Online Handwriting Recognition (AOHR). We address the challenges posed by online handwriting recognition, including ligatures, dots and diacritic problems, online/offline touching of text, and geometric variations. Then we present a general model of an AOHR system that incorporates the different phases of an AOHR system. We summarize the main AOHR databases and identify their uses and limitations. Preprocessing techniques that are used in AOHR, viz. normalization, smoothing, de-hooking, baseline identification, and delayed stroke processing, are presented with illustrative examples. We discuss different techniques for Arabic online handwriting segmentation at the character and morpheme levels and identify their limitations. Feature extraction techniques that are used in AOHR are discussed and their challenges identified. We address the classification techniques of non-cursive (characters and digits) and cursive Arabic online handwriting and analyze their applications. We discuss different classification techniques, viz. structural approaches, Support Vector Machine (SVM), Fuzzy SVM, Neural Networks, Hidden Markov Model, Genetic algorithms, decision trees, and rule-based systems, and analyze their performance. Post-processing techniques are also discussed. Several tables that summarize the surveyed publications are provided for ease of reference and comparison. We summarize the current limitations and difficulties of AOHR and future directions of research.
机译:本文全面调查了阿拉伯文在线手写识别(AOHR)。我们解决了在线手写识别带来的挑战,包括连字,圆点和变音符号问题,在线/离线触摸文本以及几何变化。然后,我们提出了一个AOHR系统的通用模型,该模型结合了AOHR系统的不同阶段。我们总结了主要的AOHR数据库,并确定了它们的用途和局限性。 AOHR中使用的预处理技术,即。通过说明性示例介绍了归一化,平滑,消除钩子,基线识别和中风延迟处理。我们讨论了在字符和词素级别上阿拉伯语在线手写分割的不同技术,并确定了它们的局限性。讨论了AOHR中使用的特征提取技术,并确定了它们的挑战。我们介绍非草书(字符和数字)和草书阿拉伯语在线手写的分类技术,并分析其应用。我们讨论了不同的分类技术。结构方法,支持向量机(SVM),模糊SVM,神经网络,隐马尔可夫模型,遗传算法,决策树和基于规则的系统,并分析其性能。还讨论了后处理技术。提供了一些汇总调查出版物的表格,以方便参考和比较。我们总结了AOHR的当前局限性和困难以及未来的研究方向。

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