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Kernel Principal Component Analysis of Gabor Features for Palmprint Recognition

机译:掌纹识别Gabor特征的核主成分分析

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This paper presents Gabor-based kernel Principal Component Analysis (KPCA) method by integrating the Gabor wavelet and the KPCA methods for palmprint recognition. The intensity values of the palmprint images extracted by using an image preprocessing method are first normalized. Then Gabor wavelets are applied to derive desirable palmprint features. The transformed palm images exhibit strong characteristics of spatial locality, scale, and orientation selectivity. The KPCA method nonlinearly maps the Gabor wavelet image into a high-dimensional feature space and the matching is realized by weighted Euclidean distance. The proposed algorithm has been successfully tested on the PolyU palmprint database which the samples were collected in two different sessions. Experimental results show that this method achieves 97.22% accuracy for PolyU dataset using 3850 images from 385 different palms captured in the first session as train set and the second session im0061ges as test set.
机译:本文通过结合Gabor小波和KPCA方法进行掌纹识别,提出了基于Gabor的内核主成分分析(KPCA)方法。首先对通过使用图像预处理方法提取的掌纹图像的强度值进行归一化。然后,将Gabor小波应用于导出所需的掌纹特征。变换后的手掌图像具有很强的空间局部性,比例尺和方向选择性的特征。 KPCA方法将Gabor小波图像非线性映射到高维特征空间,并通过加权欧几里得距离实现匹配。所提出的算法已在PolyU掌纹数据库上成功测试,该数据库在两个不同的会话中收集了样本。实验结果表明,该方法对PolyU数据集的准确率达到97.22%,使用第一阶段训练集中捕获的385种不同手掌的3850张图像作为训练集,第二阶段进行测试集捕获。

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