Design and Implementation of Automated Image Handwriting Sentences Recognition using Hybrid Techniques on FPGA

R. Premananada, H. J. Jambukesh, H. Shridhar, U. Rajashekar, K. Harisha
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Abstract

The validation of documents such as recognition of optical character, the sign which is written by hand are the main drawbacks involved in the identification of human and their addresses, codes of the post written on the envelops, manuscript evaluation, understanding the transactions of money and documents of the bank that are written in the English language. The conceptual model was written by hand for the real-time application that deals with the handwritten identification enables a comprehensive computerized system to identify the data written by hand which is more efficient and is free from noise. The proposed framework consists of filters based on Probabilistic Patch (PPB), identification, and analysis of the Canny edge. With the application of a Probabilistic Patch-based filter, the recursive speckle noise and additive Gaussian noise are processed. The words in the document are obtained by using the structure of Lifting transformation, the edges of the word are identified with help of Canny edge recognition. At last, the database validates the text as correct or incorrect. With the application of the Embedded Development Kit (EDK) and Software Development Kit (SDK), the entire framework is developed. The hardware used is in this work is Virtex-5 FPGA board which is the integration of SDK and EDK with XC5VLX50T as the part name.
基于FPGA的图像手写句子自动识别的设计与实现
文件的验证,如识别光学字符,手写的标志是主要的缺点,涉及到识别人类和他们的地址,信封上写的邮政代码,手稿评估,理解用英语写的货币交易和银行文件。该概念模型是针对手写识别的实时应用而建立的,它使综合计算机系统能够更高效、无噪声地识别手写数据。该框架由基于概率补丁(PPB)的滤波器、Canny边缘的识别和分析组成。应用基于概率patch的滤波器,对递归散斑噪声和加性高斯噪声进行了处理。利用lift变换的结构获取文档中的单词,利用Canny边缘识别方法识别单词的边缘。最后,数据库验证文本是否正确。利用嵌入式开发工具包(Embedded Development Kit, EDK)和软件开发工具包(Software Development Kit, SDK)开发了整个框架。本工作使用的硬件是Virtex-5 FPGA板,它是SDK和EDK的集成,部件名称为XC5VLX50T。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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