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Level feature fusion of multispectral palmprint recognition using the ridgelet transform and OAO multi-class classifier

机译:利用脊波变换和OAO多类分类器的多光谱掌纹识别的水平特征融合

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The performance of a biometric system is based primarily on the quality of physical or behavioral biometric used for a robust and an accurate authentication/identification of an individual. To improve the performance and the robustness of the system, multispectral palmprint images were employed to acquire more discriminative information. In this paper, we introduce a novel multispectral recognition method. In this context, we propose the fusion of palmprint and palm vein features to increase the accuracy of the biometric person recognition. The proposed approach is based on statistical study and energy distribution analysis of Finite Ridgelet transform coefficients, involving so low computation complexity. For multispectral palmprint images recognition, we tested the performance of three classifiers: K nearest neighbor (KNN), Support Vector Machine (SVM) and ‘One-Against-One’ multi-class SVM (OAO-SVM) with RBF kernel using 6-folders cross-validation to assess the generalization capability of the proposed biometric system. The validation of our results is performed on multispectral palmprint images of CASIA database.
机译:生物识别系统的性能主要基于用于个人的健壮和准确身份验证/识别的物理或行为生物识别的质量。为了提高系统的性能和鲁棒性,多光谱掌纹图像被用来获取更多的判别信息。在本文中,我们介绍了一种新颖的多光谱识别方法。在这种情况下,我们建议融合掌纹和掌静脉特征以提高生物特征识别的准确性。所提出的方法基于有限Ridgelet变换系数的统计研究和能量分布分析,因此计算复杂度非常低。对于多光谱掌纹图像识别,我们使用6-F测试了具有RBF内核的三个分类器的性能:K最近邻(KNN),支持向量机(SVM)和“一对一”多类SVM(OAO-SVM)。交叉验证文件夹,以评估所提出的生物识别系统的泛化能力。我们的结果验证是在CASIA数据库的多光谱掌纹图像上进行的。

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