论文标题

移动设备在不受约束的情况下收集的新的眼周数据集

A New Periocular Dataset Collected by Mobile Devices in Unconstrained Scenarios

论文作者

Zanlorensi, Luiz A., Laroca, Rayson, Lucio, Diego R., Santos, Lucas R., Britto Jr., Alceu S., Menotti, David

论文摘要

最近,使用在可见波长处获得的图像在不受约束的环境中的眼睛生物识别技术吸引了研究人员的注意,尤其是在移动设备捕获的图像中。当由于阻塞或低图像分辨率而无法获得虹膜性状时,眼周识别已被证明是一种替代方法。但是,眼周特征没有虹膜性状中的高独特性。因此,使用包含许多受试者的数据集对于评估生物识别系统从眼周区域提取歧视信息的能力至关重要。同样,要解决由眼周区域中的照明和属性引起的类内变异性,将数据集与在不同会话中捕获的同一主题的图像一起使用数据集至关重要。由于文献中可用的数据集并未呈现所有这些因素,因此,在这项工作中,我们提出了一个新的眼周数据集,其中包含来自1,122名受试者的样品,并在3次会议上以196个不同的移动设备获得了3个会话。这些图像是在不受约束的环境下捕获的,只向参与者提供了一个指导:将目光投向关注区域。我们还通过基于多级分类,多任务学习,成对过滤器网络和暹罗网络的几个卷积神经网络(CNN)体系结构和模型进行了广泛的基准测试。考虑到识别和验证任务,在封闭和开放世界方案中取得的结果表明该领域仍然需要研发。

Recently, ocular biometrics in unconstrained environments using images obtained at visible wavelength have gained the researchers' attention, especially with images captured by mobile devices. Periocular recognition has been demonstrated to be an alternative when the iris trait is not available due to occlusions or low image resolution. However, the periocular trait does not have the high uniqueness presented in the iris trait. Thus, the use of datasets containing many subjects is essential to assess biometric systems' capacity to extract discriminating information from the periocular region. Also, to address the within-class variability caused by lighting and attributes in the periocular region, it is of paramount importance to use datasets with images of the same subject captured in distinct sessions. As the datasets available in the literature do not present all these factors, in this work, we present a new periocular dataset containing samples from 1,122 subjects, acquired in 3 sessions by 196 different mobile devices. The images were captured under unconstrained environments with just a single instruction to the participants: to place their eyes on a region of interest. We also performed an extensive benchmark with several Convolutional Neural Network (CNN) architectures and models that have been employed in state-of-the-art approaches based on Multi-class Classification, Multitask Learning, Pairwise Filters Network, and Siamese Network. The results achieved in the closed- and open-world protocol, considering the identification and verification tasks, show that this area still needs research and development.

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