Cross-Spectral Periocular Recognition with Conditional Adversarial Networks

Kevin Hernandez-Diaz, F. Alonso-Fernandez, J. Bigün
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引用次数: 9

Abstract

This work addresses the challenge of comparing periocular images captured in different spectra, which is known to produce significant drops in performance in comparison to operating in the same spectrum. We propose the use of Conditional Generative Adversarial Networks, trained to convert periocular images between visible and near-infrared spectra, so that biometric verification is carried out in the same spectrum. The proposed setup allows the use of existing feature methods typically optimized to operate in a single spectrum. Recognition experiments are done using a number of off-the-shelf periocular comparators based both on hand-crafted features and CNN descriptors. Using the Hong Kong Polytechnic University Cross-Spectral Iris Images Database (PolyU) as benchmark dataset, our experiments show that cross-spectral performance is substantially improved if both images are converted to the same spectrum, in comparison to matching features extracted from images in different spectra. In addition to this, we fine-tune a CNN based on the ResNet50 architecture, obtaining a cross-spectral periocular performance of EER=l%, and GAR>99% @ FAR=l%, which is comparable to the state-of-the-art with the PolyU database.
条件对抗网络的交叉光谱眼周识别
这项工作解决了比较在不同光谱下捕获的眼周图像的挑战,已知与在相同光谱下操作相比,这将产生显着的性能下降。我们建议使用条件生成对抗网络,训练以转换可见光和近红外光谱之间的眼周图像,以便在同一光谱中进行生物识别验证。所提出的设置允许使用现有的特征方法,通常优化为在单个频谱中运行。识别实验使用了许多现成的基于手工特征和CNN描述符的眼周比较器。利用香港理工大学交叉光谱虹膜图像数据库(PolyU)作为基准数据集,我们的实验表明,与从不同光谱图像中提取的匹配特征相比,将两幅图像转换为相同光谱时,交叉光谱性能得到了显着提高。此外,我们基于ResNet50架构对CNN进行微调,获得的交叉光谱眼周性能为EER=l%, GAR>99% @ FAR=l%,与理大数据库的水平相当。
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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