Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/85820
Title: Learning-based local-patch resolution reconstruction of iris smart-phone images
Authors: Alonso-Fernandez, Fernando
Farrugia, Reuben A.
Bigun, Josef
Keywords: Biometric identification -- Technological innovation
Image reconstruction
Optical data processing
Pattern recognition
Issue Date: 2017
Publisher: IEEE
Citation: Alonso-Fernandez, F., Farrugia, R. A., & Bigun, J. (2017, October). Learning-based local-patch resolution reconstruction of iris smart-phone images. 2017 IEEE International Joint Conference on Biometrics (IJCB). 787-793.
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.
URI: https://www.um.edu.mt/library/oar/handle/123456789/85820
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