基于Freeman链码和k近邻分类器的约鲁巴手写字符识别

J. Ajao, David Olufemi Olawuyi, Odetunji Ode Odejobi
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引用次数: 14

摘要

本文提出了一个使用弗里曼链码和K-近邻(KNN)的脱机约鲁巴字符识别系统。大多数拉丁语单词识别和字符识别都使用了k近邻分类器和其他分类算法。研究倾向于探索约鲁巴语字符识别的相同识别能力。数据是从成年土著作家那里收集的,扫描的图像经过一定程度的预处理,以提高数字化图像的质量。利用Freeman链编码提取数字化图像的特征,利用KNN基于特征空间对特征进行分类。将KNN的性能与其他使用支持向量机(SVM)和贝叶斯分类器识别约鲁巴文字的分类算法进行了比较。结果表明,KNN分类算法和Freeman链码的识别准确率为87.7%,优于其他用于约鲁巴语字符的分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Yoruba Handwritten Character Recognition using Freeman Chain Code and K-Nearest Neighbor Classifier
This work presents a recognition system for Offline Yoruba characters recognition using Freeman chain code and K-Nearest Neighbor (KNN). Most of the Latin word recognition and character recognition have used k-nearest neighbor classifier and other classification algorithms. Research tends to explore the same recognition capability on Yoruba characters recognition. Data were collected from adult indigenous writers and the scanned images were subjected to some level of preprocessing to enhance the quality of the digitized images. Freeman chain code was used to extract the features of THE digitized images and KNN was used to classify the characters based on feature space. The performance of the KNN was compared with other classification algorithms that used Support Vector Machine (SVM) and Bayes classifier for recognition of Yoruba characters. It was observed that the recognition accuracy of the KNN classification algorithm and the Freeman chain code is 87.7%, which outperformed other classifiers used on Yoruba characters.
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