An enhanced harmony search method for Bangla handwritten character recognition using region sampling

Ritesh Sarkhel, Amit K. Saha, N. Das
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引用次数: 23

Abstract

Identification of minimum number of local regions of a handwritten character image, containing well-defined discriminating features which are sufficient for a minimal but complete description of the character is a challenging task. A new region selection technique based on the idea of an enhanced Harmony Search methodology has been proposed here. The powerful framework of Harmony Search has been utilized to search the region space and detect only the most informative regions for correctly recognizing the handwritten character. The proposed method has been tested on handwritten samples of Bangla Basic, Compound and mixed (Basic and Compound characters)characters separately with SVM based classifier using a longest run based feature-set obtained from the image sub-regions formed by a CG based quad-tree partitioning approach. Applying this methodology on the above mentioned three types of datasets, respectively 43.75%, 12.5% and 37.5% gains have been achieved in terms of region reduction and 2.3%, 0.6% and 1.2% gains have been achieved in terms of recognition accuracy. The results show a sizeable reduction in the minimal number of descriptive regions as well a significant increase in recognition accuracy for all the datasets using the proposed technique. Thus the time and cost related to feature extraction is decreased without dampening the corresponding recognition accuracy.
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一种基于区域采样的孟加拉语手写体字符识别的增强和谐搜索方法
识别手写字符图像的最小数量的局部区域,包含定义良好的判别特征,足以对字符进行最小但完整的描述是一项具有挑战性的任务。本文提出了一种基于增强型和谐搜索方法的区域选择技术。利用强大的和谐搜索框架对区域空间进行搜索,只检测信息量最大的区域,以正确识别手写字符。利用基于四叉树分割方法形成的图像子区域得到的最长运行时间特征集,利用SVM分类器分别对孟加拉语基本、复合和混合(基本和复合)字符的手写样本进行了测试。将该方法应用于上述三类数据集,区域缩减率分别提高43.75%、12.5%和37.5%,识别准确率分别提高2.3%、0.6%和1.2%。结果表明,使用该技术的所有数据集的最小描述区域数量显著减少,识别精度显著提高。在不影响识别精度的前提下,减少了特征提取的时间和成本。
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