VRBiom: A New Periocular Dataset for Biometric Applications of HMD
Ketan Kotwal, Ibrahim Ulucan, Gokhan Ozbulak, Janani Selliah and, Sebastien Marcel

TL;DR
VRBiom is a comprehensive periocular video dataset captured with VR headsets, designed to advance biometric research in iris and periocular recognition, including spoofing detection, under varied real-world conditions.
Contribution
This work introduces VRBiom, a novel periocular dataset captured with VR headsets, including genuine and spoofing data, to support biometric research and development.
Findings
Dataset includes 900 videos from 25 individuals in NIR spectrum.
Contains genuine and spoofing attack videos for biometric robustness.
Supports training and evaluation of biometric and anti-spoofing models.
Abstract
With advancements in hardware, high-quality HMD devices are being developed by numerous companies, driving increased consumer interest in AR, VR, and MR applications. In this work, we present a new dataset, called VRBiom, of periocular videos acquired using a Virtual Reality headset. The VRBiom, targeted at biometric applications, consists of 900 short videos acquired from 25 individuals recorded in the NIR spectrum. These 10s long videos have been captured using the internal tracking cameras of Meta Quest Pro at 72 FPS. To encompass real-world variations, the dataset includes recordings under three gaze conditions: steady, moving, and partially closed eyes. We have also ensured an equal split of recordings without and with glasses to facilitate the analysis of eye-wear. These videos, characterized by non-frontal views of the eye and relatively low spatial resolutions (400 x 400), can…
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Taxonomy
TopicsMedical Imaging and Analysis
