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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An off-line oriental character recognition system (OOCRS): synergy of distortion modeling, hidden Markov models and vector quantization
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An off-line oriental character recognition system (OOCRS): synergy of distortion modeling, hidden Markov models and vector quantization

机译:离线东方字符识别系统(OOCRS):失真建模,隐马尔可夫模型和矢量量化的协同作用

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摘要

Off-line handwritten oriental character recognition is a difficult task due to the large category and stroke variety. These oriental characters are made up of components known as radicals, which are often written in a distorted proportion and size. All these factors lead to a difficult recognition problem, which unfortunately cannot be solved using direct classification approach like the neural network classifier and a preprocessing module. This paper proposes several novel preprocessing approaches and synergy of classifiers to achieve good performance. Novel classification approaches, comprising rough and coarse classification modules are proposed which when combined appropriately produced a high-performance recognition system capable of producing high accuracy classification in off-line oriental character recognition. The recognition accuracy of the system is a high of 97% and a 99% for the top 5 candidate selection scores. (C) 2002 Published by Elsevier Science Ltd on behalf of Pattern Recognition Society. [References: 31]
机译:由于类别和笔划种类繁多,离线手写东方字符识别是一项艰巨的任务。这些东方字符由被称为部首的成分组成,这些成分经常以扭曲的比例和大小书写。所有这些因素导致了难以识别的问题,不幸的是,使用直接分类方法(如神经网络分类器和预处理模块)无法解决该问题。本文提出了几种新颖的预处理方法和分类器的协同作用,以实现良好的性能。提出了包括粗分类模块和粗分类模块的新颖分类方法,当适当组合时,产生了一种高性能识别系统,该系统能够在离线东方字符识别中产生高精度分类。该系统的识别准确率高达97%,而前5名候选者的选择得分则高达99%。 (C)2002由Elsevier Science Ltd代表模式识别协会出版。 [参考:31]

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