Algorithm Symmetric 2-DLDA for Recognizing Handwritten Capital Letters

Ismail Husein, Rina Widyasari
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引用次数: 1

Abstract

Statistical pattern recognition is the process of using statistical techniques to obtain information and make informed decisions based on data measurements. It is possible to solve the doubt inherent in the objective function of the 2-Dimension Linear Discriminant Analysis by employing the symmetrical 2-Dimension Linear Discriminant Analysis approach. Symmetrical 2-dimensional linear discriminant analysis has found widespread use as a method of introducing handwritten capital letters. Symmetric 2-DLDA, according to Symmetric 2-DLDA, produces better and more accurate results than Symmetric 2-DLDA. So far, pattern recognition has been based solely on computer knowledge, with no connection to statistical measurements, such as data variation and Euclidean distance, particularly in symmetrical images. As a result, the aim of this research is to create algorithms for recognizing capital letter patterns in a wide range of handwriting. The ADL2-D symmetric method is used in this study as the development of the ADL2-D method. The research results in an algorithm that considers the left and right sides of the image matrix, as opposed to ADL2-D, which does not consider the left and right sides of the image matrix. In pattern recognition, the results with symmetric ADL2-D are more accurate
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手写大写字母识别的对称2-DLDA算法
统计模式识别是使用统计技术获取信息并根据数据测量做出明智决策的过程。采用对称的二维线性判别分析方法,可以解决二维线性判别分析的目标函数所固有的疑点。对称二维线性判别分析已被广泛用于引入手写大写字母的方法。根据对称2-DLDA,对称2-DLDA产生的结果比对称2-DLDA更好,更准确。到目前为止,模式识别完全基于计算机知识,与统计测量无关,例如数据变化和欧几里得距离,特别是在对称图像中。因此,本研究的目的是创建识别各种手写大写字母模式的算法。本研究采用ADL2-D对称方法作为ADL2-D方法的发展。研究得出了一种考虑图像矩阵左右两侧的算法,而不是不考虑图像矩阵左右两侧的ADL2-D算法。在模式识别中,对称ADL2-D的结果更准确
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