Iris Super-Resolution Using Iterative Neighbor Embedding

F. Alonso-Fernandez, R. Farrugia, J. Bigün
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引用次数: 11

Abstract

Iris recognition research is heading towards enabling more relaxed acquisition conditions. This has effects on the quality and resolution of acquired images, severely affecting the accuracy of recognition systems if not tackled appropriately. In this paper, we evaluate a super-resolution algorithm used to reconstruct iris images based on iterative neighbor embedding of local image patches which tries to represent input low-resolution patches while preserving the geometry of the original high-resolution space. To this end, the geometry of the low-and high-resolution manifolds are jointly considered during the reconstruction process. We validate the system with a database of 1,872 near-infrared iris images, while fusion of two iris comparators has been adopted to improve recognition performance. The presented approach is substantially superior to bilinear/bicubic interpolations at very low resolutions, and it also outperforms a previous PCA-based iris reconstruction approach which only considers the geometry of the low-resolution manifold during the reconstruction process.
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基于迭代邻居嵌入的虹膜超分辨率
虹膜识别研究正朝着更宽松的获取条件发展。这将影响所获取图像的质量和分辨率,如果处理不当,将严重影响识别系统的准确性。在本文中,我们评估了一种用于重建虹膜图像的超分辨率算法,该算法基于局部图像补丁的迭代邻居嵌入,该算法试图表示输入的低分辨率补丁,同时保留原始高分辨率空间的几何形状。为此,在重建过程中共同考虑了低分辨率和高分辨率歧管的几何形状。利用1872张近红外虹膜图像数据库对该系统进行了验证,并采用了两个虹膜比较器的融合来提高识别性能。所提出的方法在非常低的分辨率下大大优于双线性/双三次插值,并且也优于先前基于pca的虹膜重建方法,该方法在重建过程中仅考虑低分辨率流形的几何形状。
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