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Off-line Handwritten Korean Letter using Principle Component Analysis and Back Propagation Neural Network

机译:基于主成分分析和反向传播神经网络的离线手写韩文字母

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This paper describes a proposed algorithm for recognition of Korean Letters to the Latin language using Principle Component Analysis (PCA) and Back Propagation-Neural Network (BP-NN). The proposed algorithm uses input in the form of image of Korean letters in original 65×65 pixels that is taken from itself. Then, it will be done some processes namely, pre-processing converts image pixel into binary image 15×15 pixels. Further, it transforms from image Red Green Blue (RGB) into binary. Lastly, noise removal from the image. The image will be extracted to produce the image feature. The feature should be processed firstly using Principle Components Analysis (PCA). PCA is used to reduce dimension of image feature before entering classification stage. Classification stage uses a method that called BP-NN. Architecture of ANN uses three hidden layers. Each layer consists of 20, 20 and 5 neurons, and 1 neuron output. The proposed algorithm uses data sampling that is Korean vowels, are obtained from 25 different font types. Next, each font consists of normal sampling and bold sampling. Total data reaches 500 sampling. The data comprises 70% data training and 30% data testing. The result of experiments show that accuracy level is 95%.
机译:本文介绍了一种使用主成分分析(PCA)和反向传播神经网络(BP-NN)识别韩文字母到拉丁语的算法。所提出的算法使用从其自身获取的原始65×65像素的韩文字母图像形式的输入。然后,将进行一些处理,即,预处理将图像像素转换为15×15像素的二进制图像。此外,它从图像红绿蓝(RGB)转换为二进制。最后,从图像中去除噪音。图像将被提取以产生图像特征。首先应使用主成分分析(PCA)处理该特征。 PCA用于在进入分类阶段之前减小图像特征的维数。分类阶段使用一种称为BP-NN的方法。 ANN的体系结构使用三个隐藏层。每层包含20、20和5个神经元,以及1个神经元输出。所提出的算法使用的数据采样是韩国元音,是从25种不同的字体类型中获得的。接下来,每种字体都包括普通采样和粗体采样。总数据达到500个采样。数据包括70%的数据训练和30%的数据测试。实验结果表明准确度为95%。

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