Identifikasi Huruf Kapital Tulisan Tangan Menggunakan Linear Discriminant Analysis dan Euclidean Distance

S. Cahyani, Rita Wiryasaputra, Rendra Gustriansyah
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引用次数: 4

Abstract

The human ability to recognize a variety of objects, however complex the object, is the special ability that humans possess. Any normal human will have no difficulty in recognizing handwriting objects between an author and another author. With the rapid development of digital technology, the human ability to recognize handwriting objects has been applied in a program known as Computer Vision. This study aims to create identification system different types of handwriting capital letters that have different sizes, thickness, shape, and tilt (distinctive features in handwriting) using Linear Discriminant Analysis (LDA) and Euclidean Distance methods. LDA is used to obtain characteristic characteristics of the image and provide the distance between the classes becomes larger, while the distance between training data in one class becomes smaller, so that the introduction time of digital image of handwritten capital letter using Euclidean Distance becomes faster computation time (by searching closest distance between training data and data testing). The results of testing the sample data showed that the image resolution of 50x50 pixels is the exact image resolution used for data as much as 1560 handwritten capital letter data compared to image resolution 25x25 pixels and 40x40 pixels. While the test data and training data testing using the method of 10-fold cross validation where 1404 for training data and 156 for data testing showed identification of digital image handwriting capital letter has an average effectiveness of the accuracy rate of 75.39% with the average time computing of 0.4199 seconds.
人类识别各种物体的能力,无论物体多么复杂,都是人类所拥有的特殊能力。任何正常的人在识别一个作者和另一个作者之间的笔迹对象方面都没有困难。随着数字技术的飞速发展,人类识别手写物体的能力已经被应用到计算机视觉程序中。本研究旨在利用线性判别分析(Linear Discriminant Analysis, LDA)和欧几里得距离(Euclidean Distance)方法,建立具有不同大小、厚度、形状和倾斜度(笔迹特征)的不同类型手写大写字母的识别系统。利用LDA获取图像的特征特征,提供类之间的距离变大,而一类训练数据之间的距离变小,使得利用欧几里得距离引入手写大写字母数字图像的时间变快(通过搜索训练数据与数据测试之间最接近的距离)。测试样本数据的结果表明,与图像分辨率25x25像素和40x40像素相比,50x50像素的图像分辨率是用于多达1560个手写大写字母数据的精确图像分辨率。而采用10倍交叉验证的方法对测试数据和训练数据进行测试,其中训练数据为1404,数据测试为156,显示数字图像手写大写字母识别的平均准确率为75.39%,平均计算时间为0.4199秒。
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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