首页> 外文会议>American Applied Science Research Institute Conference on Intelligent Systems and Control >Off-Line Handwritten Character Recognition using Features Extracted from Binarization Technique Amit Choudharya'*, Rahul Rishib, Savita Ahlawaf 'Maharaja Surajmal Institute, New Delhi, India bUIET, Maharshi Dayanand University, Rohtak, India 'Maharaja Surajmal Institute of Technology, New Delhi, India * Corresponding author. Tel.: +91-991-133-5069.Mmit.choudhary69@gmail.com.
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Off-Line Handwritten Character Recognition using Features Extracted from Binarization Technique Amit Choudharya'*, Rahul Rishib, Savita Ahlawaf 'Maharaja Surajmal Institute, New Delhi, India bUIET, Maharshi Dayanand University, Rohtak, India 'Maharaja Surajmal Institute of Technology, New Delhi, India * Corresponding author. Tel.: +91-991-133-5069.Mmit.choudhary69@gmail.com.

机译:离线手写的性格识别使用二值化技术提取的特征Amit Choudharya' *,Rahul Rishib,Savita Ahlawaf“Maharaja Surajmal Institute,新德里,印度Buiet,Maharshi Dayanand大学,印度Hriohtk”Maharaja Surajmal技术研究所新德里,印度*通讯作者 电话:+ 91-991-133-5069.m amit.coudhary69@gmail.com。

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The choice of pattern classifier and the technique used to extract the features are the main factors to judge the recognition accuracy and the capability of an Optical Character Recognition (OCR) system. The main focus of this work is to extract features obtained by binarization technique for recognition of handwritten characters of English language. The recognition of handwritten character images have been done by using multi-layered feed forward artificial neural network as a classifier. Some preprocessing techniques such as thinning, foreground and background noise removal, cropping and size normalization etc. are also employed to preprocess the character images before their classification. Very promising results are achieved when binarization features and the multilayer feed forward neural network classifier is used to recognize the of f-line cursive handwritten characters.
机译:模式分类器的选择和用于提取特征的技术是判断识别准确性和光学字符识别(OCR)系统的能力的主要因素。 这项工作的主要重点是提取二值化技术获得的功能,以识别英语手写字符。 通过使用多层馈送前进人工神经网络作为分类器来完成对手写字符图像的识别。 一些预处理技术,如变薄,前景和背景噪声,裁剪和尺寸归一化等也用于预处理分类前的字符图像。 当二进制化功能和多层馈送前进神经网络分类器用于识别F线法制手写字符时,实现了非常有前途的结果。

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