基于对角特征提取和欧拉数分类器的改进一像素宽度字符分割算法的增强智能字符识别方法

Yosuke R. Matsuoka, Gabriel Angelo R. Sandoval, Luis Paolo Q. Say, Jann Skvler Y. Teng, Donata D. Acula
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引用次数: 4

摘要

在这个科技时代,手写交流仍然是人们生活和相互联系的重要方面。本研究的目的是确定可以使用的最合适的算法集,并确定它在识别草书手写文本方面的有效性。支持者创建了一个系统,该系统接受手写文本图像作为输入,经过处理阶段,并根据使用对角特征提取的每个字符提取的特征输出文本,并使用欧拉数和使用改进的一像素宽度字符分割算法进行分类。总共使用了100个手写文本图像来评估系统。该系统的字符识别率为88.7838%,单词识别率为50.4348%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Intelligent Character Recognition (ICR) Approach Using Diagonal Feature Extraction and Euler Number as Classifier with Modified One-Pixel Width Character Segmentation Algorithm
In this technological age, handwriting communication is still an essential aspect in the lives of people and relating to each other. This study was created to identify the most suitable set of algorithms that can be used and determine how effective it would be in recognizing cursive handwritten texts. The proponents created a system that accepts a handwritten text image as input, undergoes processing stages and outputs a text based on the features extracted per character using the Diagonal Feature Extraction, and classification using Euler Number with the use of the Modified One-Pixel Width Character Segmentation Algorithm. A total of 100 handwritten text images are used in evaluating the system. The system achieved a character recognition rate of 88.7838% and word recognition rate of 50.4348%.
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