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Online Urdu Handwritten Character Recognition: Initial Half Form Single Stroke Characters

机译:在线乌尔都语手写字符识别:初始半形单笔画字符

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Necessity of unfolding the enticing field of handwritten character recognition is revealed with the mushroom growth of portable devices. Effective human machine interaction insists the development of a reliable and efficient online handwritten character recognition system. The quest becomes more challenging when it involves Urdu script based languages especially written in Nastalique font. Urdu, in Nastalique style, is a context sensitive and a highly cursive language. Difficulty arises in this style of writing as the shape of a character depends whether it is written in isolated, initial, medial or terminal position in a word. In this paper, online recognition of Urdu characters in their initial half form have been studied. Data is collected using a pen-tablet and the signal is stored as a binary file containing x & y coordinates and pressure values rather than in an image form to reduce complexity of the recognition problem. Wavelets transform is applied to analyze the character signal. Back propagation neural network classifier for single stroke characters in initial half form is designed with overall accuracy of 91.3%.
机译:随着便携式设备的迅猛发展,揭示了展开手写字符识别的诱人领域的必要性。有效的人机交互要求开发可靠,高效的在线手写字符识别系统。当涉及基于Urdu脚本的语言(尤其是以Nastalique字体编写的语言)时,此任务将变得更具挑战性。乌尔都语具有Nastalique风格,是一种上下文相关的语言,是一种高度草书的语言。这种书写方式会出现困难,因为字符的形状取决于将其书写在单词中的隔离,初始,中间还是结尾位置。本文研究了乌尔都语字符首半形式的在线识别。使用笔式平板电脑收集数据,并将信号存储为包含x&y坐标和压力值的二进制文件,而不是以图像形式存储,以减少识别问题的复杂性。应用小波变换分析字符信号。针对最初的一半形式的单笔画字符的反向传播神经网络分类器的总体精度为91.3%。

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