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Handwritten Oriya Digit Recognition Using Maximum Common Subgraph Based Similarity Measures

机译:手写的oriya数字识别,使用最大常见的子图相似度测量

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Optical Character Recognition have attracted the attention of lots of researchers lately. In the current work we propose a graph based approach to perform a recognition task for handwritten Oriya digits. Our proposal includes a procedure to convert handwritten digits into graphs followed by computation of the maximum common subgraph. Finally similarity measures between graphs were used to design a feature vector. Classification was performed using the K-nearest neighbor algorithm. After training the system on 5000 images an accuracy of 97.64 % was achieved on a test set of 2200 images. The result obtained shows the robustness of our approach.
机译:光学字符识别最近引起了大量研究人员的注意。在当前工作中,我们提出了一种基于图形的方法来对手写的oriya数字执行识别任务。我们的提案包括将手写数字转换为图表的过程,然后计算最大公共子图。最后使用图之间的相似性度量来设计特征向量。使用K-Collect Neigher邻算法进行分类。在5000张图像上培训系统后,在2200张图像的测试组上实现了97.64%的精度。所获得的结果显示了我们方法的鲁棒性。

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