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Robust Iris Classification through a Combination of Kernel Discriminant Analysis and Parzen Based Probabilistic Neural Networks

机译:通过内核判别分析和基于帕尔森的概率神经网络的组合来稳健的虹膜分类

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Iris template classification in unconstrained environment is one of the open challenges in recognizing human through iris biometric modality. The iris template classifier must be robust to the outliers and noise introduced in the individual iris class distribution because of the occlusion, blur, specular reflection, etc. Also, it should perform fast enough, to make its use in real-world applications. We are introducing a combination of feature reduction technique called kernel discriminant analysis and parzen-based probabilistic neural network classifier which shows robustness to the outliers and noises and gives great advantage in time complexity as compare to other state-of-the-art classifiers. Comparisons are presented with the state-of-the-art classifiers like Euclidean distance, hamming distance with mask template, support vector machine, and sparse representation based classifier on two publicly available iris databases: CASIA-Iris-Thousand and CASIA-Iris-Lamp.
机译:无关环境中的虹膜模板分类是通过虹膜生物识别方式识别人类的开放挑战之一。由于遮挡,模糊,镜面反射等,IRIS模板分类器必须稳健,因为遮挡,模糊,镜面反射等,也应该足够快地执行,以使其在现实世界应用中使用。我们正在引入特征减少技术的组合,称为内核判别分析和基于Parzen的概率神经网络分类器,其向异常值和噪声表示鲁棒性,并在与其他最先进的分类器的比较时呈现出很大的优势。与欧几里德距离的最先进的分类器一起提供比较,汉明距离与掩模模板,支持向量机和基于稀疏表示的基于臭氧数据库的分类器:Casia-Iris-千和Casia-Iris-Lamp 。

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