Learning-based local-patch resolution reconstruction of iris smart-phone images

F. Alonso-Fernandez, R. Farrugia, J. Bigün
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引用次数: 4

Abstract

Application of ocular biometrics in mobile and at a distance environments still has several open challenges, with the lack quality and resolution being an evident issue that can severely affects performance. In this paper, we evaluate two trained image reconstruction algorithms in the context of smart-phone biometrics. They are based on the use of coupled dictionaries to learn the mapping relations between low and high resolution images. In addition, reconstruction is made in local overlapped image patches, where up-scaling functions are modelled separately for each patch, allowing to better preserve local details. The experimental setup is complemented with a database of 560 images captured with two different smart-phones, and two iris comparators employed for verification experiments. We show that the trained approaches are substantially superior to bilinear or bicubic interpolations at very low resolutions (images of 13×13 pixels). Under such challenging conditions, an EER of ∼7% can be achieved using individual comparators, which is further pushed down to 4–6% after the fusion of the two systems.
基于学习的虹膜智能手机图像局部补丁分辨率重建
眼生物识别技术在移动和远距离环境中的应用仍然存在一些挑战,缺乏质量和分辨率是一个明显的问题,可能严重影响性能。在本文中,我们评估了智能手机生物识别背景下的两种训练图像重建算法。它们基于使用耦合字典来学习低分辨率和高分辨率图像之间的映射关系。此外,在局部重叠的图像补丁中进行重建,其中每个补丁分别建模上尺度函数,以便更好地保留局部细节。该实验装置由两个不同的智能手机拍摄的560张图像数据库和两个用于验证实验的虹膜比较器进行补充。我们表明,在非常低的分辨率(13×13像素的图像)下,训练的方法实质上优于双线性或双三次插值。在这种具有挑战性的条件下,使用单个比较器可以实现~ 7%的EER,在两个系统融合后进一步降低到4-6%。
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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