首页> 外文期刊>International Journal of Rough Sets and Date Analysis >Recognition of Odia Handwritten Digits using Gradient based Feature Extraction Method and Clonal Selection Algorithm
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Recognition of Odia Handwritten Digits using Gradient based Feature Extraction Method and Clonal Selection Algorithm

机译:基于梯度特征提取和克隆选择算法的Odia手写体数字识别

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This article aims to recognize Odia handwritten digits using gradient-based feature extraction techniques and Clonal Selection Algorithm-based (CSA) multilayer artificial neural network (MANN) classifier. For the extraction of features which contribute the most towards recognition from images, are extracted using gradient-based feature extraction techniques. Principal component analysis (PCA) is used for dimensionality reduction of extracted features. A MANN is used as a classifier for classification purposes. The weights of the MANN are adjusted using the CSA to get optimized set of weights. The proposed model is applied on Odia handwritten digits taken from the Indian Statistical Institution (ISI), Calcutta, which consists of four thousand samples. The results obtained from the experiment are compared with a genetic-based multi-layer artificial neural network (GA-MANN) model. The recognition accuracy of the CSA-MANN model is found to be 90.75%.
机译:本文旨在使用基于梯度的特征提取技术和基于克隆选择算法(CSA)的多层人工神经网络(MANN)分类器来识别Odia手写数字。为了提取对图像识别贡献最大的特征,使用基于梯度的特征提取技术进行提取。主成分分析(PCA)用于减少提取特征的维数。 MANN用作分类目的的分类器。使用CSA调整MANN的权重,以获得优化的权重集。提议的模型适用于从印度统计机构(ISI)加尔各答(Calcutta)提取的Odia手写数字,该数字包括4000个样本。将实验获得的结果与基于遗传的多层人工神经网络(GA-MANN)模型进行比较。发现CSA-MANN模型的识别精度为90.75%。

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