The use of the iris and periocular region as biometric traits has been extensively investigated, mainly due to the singularity of the iris features and the use of the periocular region when the image resolution is not sufficient to extract iris information. In addition to providing information about an individual's identity, features extracted from these traits can also be explored to obtain other information such as the individual's gender, the influence of drug use, the use of contact lenses, spoofing, among others. This work presents a survey of the databases created for ocular recognition, detailing their protocols and how their images were acquired. We also describe and discuss the most popular ocular recognition competitions (contests), highlighting the submitted algorithms that achieved the best results using only iris trait and also fusing iris and periocular region information. Finally, we describe some relevant works applying deep learning techniques to ocular recognition and point out new challenges and future directions. Considering that there are a large number of ocular databases, and each one is usually designed for a specific problem, we believe this survey can provide a broad overview of the challenges in ocular biometrics.
翻译:广泛调查了使用虹膜和潜游区域作为生物鉴别特征的情况,这主要是因为虹膜特征的奇特性,以及在图像分辨率不足以提取虹膜信息时使用潜游区域。除了提供关于个人身份的信息外,还可以探索从这些特征中提取的特征,以获取其他信息,如个人的性别、药物使用的影响、隐形眼镜的使用、欺骗等。这项工作对为视觉识别而创建的数据库进行了调查,详细说明了它们的协议及其图像是如何获得的。我们还描述和讨论最受欢迎的眼镜识别竞赛(复选),突出已提交的算法,这些算法仅使用虹膜特性,还使用了虹膜和透视区域信息,取得了最佳结果。最后,我们描述了一些应用深层次学习技术来进行眼镜识别和指出新挑战及未来方向的相关工作。考虑到有大量的眼镜数据库,每个数据库通常为具体问题设计,因此我们认为,这次调查可以对眼镜生物鉴别方面的挑战进行广泛的概述。