Pengenalan Karakter Tulisan Tangan Dengan K-Support Vector Nearest Neighbor

Aditya Surya Wijaya, N. Chamidah, M. M. Santoni
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引用次数: 2

Abstract

Handwritten characters are difficult to be recognized by machine because people had various own writing style. This research recognizes handwritten character pattern of numbers and alphabet using K-Nearest Neighbour (KNN) algorithm. Handwritten recognition process is worked by preprocessing handwritten image, segmentation to obtain separate single characters, feature extraction, and classification. Features extraction is done by utilizing Zone method that will be used for classification by splitting this features data to training data and testing data. Training data from extracted features reduced by K-Support Vector Nearest Neighbor (K-SVNN) and for recognizing handwritten pattern from testing data, we used K-Nearest Neighbor (KNN). Testing result shows that reducing training data using K-SVNN able to improve handwritten character recognition accuracy.
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基于K-支持向量最近邻的手写体字符识别
由于人们的书写风格各不相同,手写字符很难被机器识别。本研究使用k -最近邻(KNN)算法识别手写数字和字母的字符模式。手写体识别过程的工作原理是对手写体图像进行预处理,分割得到独立的单个字符,提取特征,分类。特征提取采用Zone方法,将特征数据分割为训练数据和测试数据进行分类。通过k -支持向量最近邻(K-SVNN)对提取的特征进行约简的训练数据,并使用k -最近邻(KNN)从测试数据中识别手写模式。测试结果表明,使用K-SVNN减少训练数据能够提高手写字符识别的准确率。
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