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首页> 外文期刊>International Journal of Applied Pattern Recognition >A modified GA classifier for offline Tamil handwritten character recognition
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A modified GA classifier for offline Tamil handwritten character recognition

机译:一种用于离线泰米尔语手写字符识别的改进GA分类器

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摘要

In this paper, we proposed a classifier for Tamil handwritten character recognition using skeletonisation and modified GA to improve the recognition results of offline Tamil handwritten characters. The skeletonised character image is traversed from one endpoint to the other in an order, and based on the path of traversal, skeletonisation is explored to generate feature vector. The operations of conventional GA are modified to allow variable string length of chromosomes in GA. Fitness function is computed by integrating the classification capacity of the string metric Levenshtein distance which measures the dissimilarities between two strings. The experimental results on offline Tamil dataset demonstrates that the proposed classifier can automatically minimise the rate of misclassification and also provide better performance compared to GA with the fixed length chromosome. Our algorithm withstands even noisy data. Its comparison with other approaches is also substantiated and results proved that the proposed algorithm exhibits high accuracy in between 85% to 95%.
机译:在本文中,我们提出了使用骨架化和改进GA的泰米尔语手写字符识别分类器,以提高离线泰米尔语手写字符的识别结果。将骨架化的字符图像按顺序从一个端点遍历到另一端点,然后根据遍历的路径探索骨架化以生成特征向量。修改了常规GA的操作,以允许GA中染色体的字符串长度可变。适应度函数是通过对衡量两根弦之间差异的字符串度量Levenshtein距离的分类能力进行积分来计算的。在离线泰米尔语数据集上的实验结果表明,与具有固定长度染色体的遗传算法相比,所提出的分类器可以自动最小化错误分类率,并且还可以提供更好的性能。我们的算法甚至可以承受嘈杂的数据。它与其他方法的比较也得到了证实,结果证明了该算法在85%至95%之间具有较高的准确性。

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