BioEye 2015: Competition on biometrics via eye movements

Oleg V. Komogortsev, Ioannis Rigas
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引用次数: 21

Abstract

Biometric recognition via eye movement-driven features is an emerging field of research. Eye movement cues are characterized by their non-static nature, the encapsulation of physical and behavioral traits, and the possibility to be recorded in tandem with other modalities, e.g. the iris. The BioEye 2015 competition was organized with the aim to boost the evolution of the eye movement biometrics field. The competition was implemented with a particular focus on the issues facing the researchers in the domain of the eye movement recognition, e.g. quality of the eye movement recordings, different visual stimulus types, and the effect of template aging on the resulting recognition accuracy. This paper describes the details and the results of the BioEye 2015 competition, which provided the largest to date biometric database containing records from 306 subjects, stimulus of two types, and recordings separated by short-time and long-time intervals.
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BioEye 2015:眼球运动生物识别技术竞赛
通过眼动驱动特征进行生物识别是一个新兴的研究领域。眼球运动线索的特点是它们的非静态性质,身体和行为特征的封装,以及与其他模式(如虹膜)串联记录的可能性。BioEye 2015大赛旨在推动眼动生物识别技术领域的发展。比赛的实施重点是研究人员在眼动识别领域面临的问题,例如眼动记录的质量、不同的视觉刺激类型以及模板老化对识别精度的影响。本文描述了BioEye 2015竞赛的细节和结果,该竞赛提供了迄今为止最大的生物特征数据库,包含来自306名受试者的记录,两种类型的刺激,以及按短时间和长时间间隔分开的记录。
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