Band selection for Gabor feature based hyperspectral palmprint recognition

L. Shen, Ziyi Dai, Sen Jia, Meng Yang, Zhihui Lai, Shiqi Yu
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引用次数: 10

Abstract

Hyperspectral imaging has recently been introduced into face and palmprint recognition and is now drawing much attention of researchers in this area. Compared to simple 2D imaging technology, hyperspectral image can bring much more information. Due to its ablity to jointly explore the spatial-spectral domain, 3D Gabor wavelets have been successfully applied for hyperspectral palmprint recognition. In this approach, a set of 52 three-dimensional Gabor wavelets with different frequencies and orientations were designed and convolved with the cube to extract discriminative information in the joint spatial-spectral domain. However, there is also much redundancy among the hyperpecstral data, which makes the feature extraction computationally expensive. In this paper, we propose to use AP (affinity propagation) based clustering approach to select representative band images from available large data. As the number of bands has been greatly reduced, the feature extraction process can be efficiently speed up. Experimental results on the publicly available HK-PolyU hyperspectral palmprint database show that the proposed approach not only improves the efficiency, but also reduces the EER of 3D Gabor feature based method from 4% to 3.26%.
基于Gabor特征的高光谱掌纹识别波段选择
高光谱成像技术近年来被引入到人脸和掌纹识别中,引起了研究人员的广泛关注。与简单的二维成像技术相比,高光谱图像可以提供更多的信息。三维Gabor小波由于具有联合探索空间-光谱域的能力,已成功应用于高光谱掌纹识别。该方法设计了52个不同频率和方向的三维Gabor小波,并与立方体进行卷积,提取空间-频谱联合域中的判别信息。然而,超频谱数据之间也存在大量的冗余,这使得特征提取的计算成本很高。在本文中,我们提出使用基于AP(亲和力传播)的聚类方法从可用的大数据中选择具有代表性的带图像。由于条带数量大大减少,可以有效地加快特征提取过程。在公开的香港理工大学高光谱掌纹数据库上的实验结果表明,该方法不仅提高了效率,而且将基于三维Gabor特征的方法的EER从4%降低到3.26%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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