On Benchmarking Iris Recognition within a Head-mounted Display for AR/VR Applications

F. Boutros, N. Damer, K. Raja, Raghavendra Ramachandra, Florian Kirchbuchner, Arjan Kuijper
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引用次数: 12

Abstract

Augmented and virtual reality is being deployed in different fields of applications. Such applications might involve accessing or processing critical and sensitive information, which requires strict and continuous access control. Given that Head-Mounted Displays (HMD) developed for such applications commonly contains internal cameras for gaze tracking purposes, we evaluate the suitability of such setup for verifying the users through iris recognition. In this work, we first evaluate a set of iris recognition algorithms suitable for HMD devices by investigating three well-established handcrafted feature extraction approaches, and to complement it, we also present the analysis using four deep learning models. While taking into consideration the minimalistic hardware requirements of stand-alone HMD, we employ and adapt a recently developed miniature segmentation model (EyeMMS) for segmenting the iris. Further, to account for non-ideal and non-collaborative capture of iris, we define a new iris quality metric that we termed as Iris Mask Ratio (IMR) to quantify the iris recognition performance. Motivated by the performance of iris recognition, we also propose the continuous authentication of users in a non-collaborative capture setting in HMD. Through the experiments on a publicly available OpenEDS dataset, we show that performance with EER = 5% can be achieved using deep learning methods in a general setting, along with high accuracy for continuous user authentication.
AR/VR头戴式显示器中虹膜识别的基准测试
增强现实和虚拟现实正被部署在不同的应用领域。此类应用程序可能涉及访问或处理关键和敏感信息,这需要严格和持续的访问控制。鉴于为此类应用开发的头戴式显示器(HMD)通常包含用于凝视跟踪目的的内部摄像头,我们评估了通过虹膜识别验证用户的这种设置的适用性。在这项工作中,我们首先通过研究三种成熟的手工特征提取方法来评估一组适用于HMD设备的虹膜识别算法,并且为了补充它,我们还使用了四种深度学习模型进行分析。同时考虑到单机HMD的极简硬件要求,我们采用并调整了最近开发的微型分割模型(EyeMMS)来分割虹膜。此外,为了考虑虹膜的非理想和非协作捕获,我们定义了一个新的虹膜质量度量,我们称之为虹膜掩膜比(IMR)来量化虹膜识别性能。在虹膜识别性能的激励下,我们还提出了HMD中非协作捕获设置下的用户连续认证。通过在公开可用的OpenEDS数据集上的实验,我们表明,在一般设置下,使用深度学习方法可以实现EER = 5%的性能,并且对于连续用户身份验证具有很高的准确性。
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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