论文标题

通过评估字典学习的虹膜生物识别技术的超分辨率调查

A Survey of Super-Resolution in Iris Biometrics with Evaluation of Dictionary-Learning

论文作者

Alonso-Fernandez, F., Farrugia, R. A., Bigun, J., Fierrez, J., Gonzalez-Sosa, E.

论文摘要

缺乏分辨率会对基于图像的生物识别技术的性能产生负面影响。尽管已经提出了许多通用的超分辨率方法来恢复低分辨率图像,但它们通常旨在增强其视觉外观。但是,生物特征图像的视觉增强不一定与更好的识别性能相关。因此,重建方法需要从目标生物识别方式中纳入特定信息,以有效提高识别。本文对文献中提出的虹膜超分辨方法进行了全面调查。我们还基于本地图像贴片的PCA特征转化,调整了一种特征斑的重建方法。虹膜的结构是通过构建依赖性词典来利用的。此外,具有自己的重建权重分开恢复图像贴片。这使得解决方案可以在本地进行优化,从而有助于保留本地信息。为了评估算法,我们从CASIA Interval V3数据库中降低了高分辨率图像。考虑了不同的修复体,其中15x15像素是最小的分辨率。据我们所知,这是文献中采用的最小决议之一。该框架与六个公共虹膜比较器相辅相成,这些比较器用于进行生物识别验证和识别实验。实验结果表明,该提出的方法在非常低分辨率的情况下显着胜过双线性和双色插值。许多比较器的性能达到了令人印象深刻的同等误差率低至5%,而仅考虑仅15x15像素的虹膜图像时,前1位的准确性为77-84%。这些结果清楚地表明了使用训练有素的超分辨率技术在匹配之前提高虹膜图像的质量的好处。

The lack of resolution has a negative impact on the performance of image-based biometrics. While many generic super-resolution methods have been proposed to restore low-resolution images, they usually aim to enhance their visual appearance. However, a visual enhancement of biometric images does not necessarily correlate with a better recognition performance. Reconstruction approaches need thus to incorporate specific information from the target biometric modality to effectively improve recognition. This paper presents a comprehensive survey of iris super-resolution approaches proposed in the literature. We have also adapted an Eigen-patches reconstruction method based on PCA Eigen-transformation of local image patches. The structure of the iris is exploited by building a patch-position dependent dictionary. In addition, image patches are restored separately, having their own reconstruction weights. This allows the solution to be locally optimized, helping to preserve local information. To evaluate the algorithm, we degraded high-resolution images from the CASIA Interval V3 database. Different restorations were considered, with 15x15 pixels being the smallest resolution. To the best of our knowledge, this is among the smallest resolutions employed in the literature. The framework is complemented with six public iris comparators, which were used to carry out biometric verification and identification experiments. Experimental results show that the proposed method significantly outperforms both bilinear and bicubic interpolation at very low-resolution. The performance of a number of comparators attains an impressive Equal Error Rate as low as 5%, and a Top-1 accuracy of 77-84% when considering iris images of only 15x15 pixels. These results clearly demonstrate the benefit of using trained super-resolution techniques to improve the quality of iris images prior to matching.

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