无约束环境下预处理对虹膜识别深度表征的影响

L. A. Zanlorensi, Eduardo José da S. Luz, Rayson Laroca, A. Britto, Luiz Oliveira, D. Menotti
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引用次数: 23

摘要

虹膜作为一种生物特征,因其高度的差异性和唯一性而得到广泛应用。在无约束环境下对可见光谱虹膜图像进行识别是目前虹膜识别研究面临的主要挑战之一。在这种情况下,获得的虹膜受到捕获距离、旋转、模糊、运动模糊、低对比度和镜面反射的影响,产生干扰虹膜识别系统的噪声。除了描绘虹膜区域外,通常采用预处理技术,如对有噪声的虹膜图像进行归一化和分割,以最大限度地减少这些问题。但这些技术不可避免地会遇到一些错误。在这种情况下,我们建议使用深度表示,更具体地说,基于VGG和ResNet-50网络的架构,使用(而不是)虹膜分割和归一化来处理图像。我们使用了人脸域的迁移学习,并提出了一种针对虹膜图像的特定数据增强技术。我们的研究结果表明,在NICE的官方协议中,使用非归一化且仅圆划分的虹膜图像的方法达到了新的水平。II竞争是UBIRIS数据库的一个子集,UBIRIS数据库是无约束环境下最具挑战性的数据库之一,报告平均相等错误率(EER)为13.98%,绝对减少了约5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Preprocessing on Deep Representations for Iris Recognition on Unconstrained Environments
The use of iris as a biometric trait is widely used because of its high level of distinction and uniqueness. Nowadays, one of the major research challenges relies on the recognition of iris images obtained in visible spectrum under unconstrained environments. In this scenario, the acquired iris are affected by capture distance, rotation, blur, motion blur, low contrast and specular reflection, creating noises that disturb the iris recognition systems. Besides delineating the iris region, usually preprocessing techniques such as normalization and segmentation of noisy iris images are employed to minimize these problems. But these techniques inevitably run into some errors. In this context, we propose the use of deep representations, more specifically, architectures based on VGG and ResNet-50 networks, for dealing with the images using (and not) iris segmentation and normalization. We use transfer learning from the face domain and also propose a specific data augmentation technique for iris images. Our results show that the approach using non-normalized and only circle-delimited iris images reaches a new state of the art in the official protocol of the NICE. II competition, a subset of the UBIRIS database, one of the most challenging databases on unconstrained environments, reporting an average Equal Error Rate (EER) of 13.98% which represents an absolute reduction of about 5%.
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