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Implementation of Real-time Handwriting Recognition System Using Touch Panel Based on Neural Network

机译:基于神经网络的触摸屏实时手写识别系统的实现

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Based on neural network, this study contributes to propose a real-time handwriting recognition system with Arabic numbers and lowercase letters. It includes two parts which are hardware design and software algorithm. In hardware design, after pressing the touch panel surface, analog signals are obtained and transformed into digital ones by A/D converter. In software algorithm, recognition architecture is constructed by three level back-propagation neural network and learning samples of Arabic numbers and lowercase letters are collected from nine schoolmates. Based on the illustration, the proposed handwriting recognition system of this study can achieve about 90% correction rates and satisfy the market standard.
机译:基于神经网络,本研究有助于提出一种具有阿拉伯数字和小写字母的实时手写识别系统。它包括硬件设计和软件算法两部分。在硬件设计中,按下触摸面板表面后,将获得模拟信号,并通过A / D转换器将其转换为数字信号。在软件算法中,识别结构由三级反向传播神经网络构成,并从九名同学中收集了阿拉伯数字和小写字母的学习样本。根据图示,本研究提出的手写识别系统可以达到大约90%的校正率,并满足市场标准。

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    《Life Science Journal》 |2012年第3期|共7页
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  • 中图分类 药学;
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  • 入库时间 2022-08-18 12:16:51

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