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A Harmony Search Based Wrapper Feature Selection Method for Holistic Bangla Word Recognition

机译:基于和谐搜索的整体孟加拉单词识别的包装特征选择方法

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A lot of search approaches have been explored for the selection of features in pattern classification domain in order to discover significant subset of the features which produces better accuracy. In this paper, we introduced a Harmony Search (HS) algorithm based feature selection method for feature dimensionality reduction in handwritten Bangla word recognition problem. This algorithm has been implemented to reduce the feature dimensionality of a technique described in one of our previous papers by Bhowmik et al. 1 . In the said paper, a set of 65 elliptical features were computed for handwritten Bangla word recognition purpose and a recognition accuracy of 81.37% was achieved using Multi Layer Perceptron (MLP) classifier. In the present work, a subset containing 48 features (approximately 75% of said feature vector) has been selected by HS based wrapper feature selection method which produces an accuracy rate of 90.29%. Reasonable outcomes also validates that the introduced algorithm utilizes optimal number of features while showing higher classification accuracies when compared to two standard evolutionary algorithms like Genetic Algorithm (GA), Particle Swarm Optimization (PSO) and statistical feature dimensionality reduction technique like Principal Component Analysis (PCA). This confirms the suitability of HS algorithm to the holistic handwritten word recognition problem.
机译:为了在模式分类领域中选择特征,已经探索了许多搜索方法,以便发现产生更好准确性的特征的重要子集。在本文中,我们介绍了一种基于和谐搜索(HS)算法的特征选择方法,用于减少手写孟加拉单词识别问题中的特征维数。该算法已实现,以减少Bhowmik等人在我们以前的一篇论文中描述的技术的特征维数。 1。在上述论文中,为手写孟加拉语单词识别目的,计算了一组65个椭圆特征,使用多层感知器(MLP)分类器实现了81.37%的识别精度。在当前的工作中,已经通过基于HS的包装特征选择方法选择了包含48个特征的子集(大约为所述特征向量的75%),该子集产生了90.29%的准确率。合理的结果还验证了与两种标准进化算法(如遗传算法(GA),粒子群优化(PSO)和统计特征降维技术,如主成分分析(PCA))相比,引入的算法利用了最佳数量的特征,同时显示出更高的分类准确性。 )。这证实了HS算法对整体手写单词识别问题的适用性。

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