SSERBC 2017:巩膜分割与眼识别标杆竞赛

Abhijit Das, U. Pal, M. A. Ferrer-Ballester, M. Blumenstein, Dejan Štepec, Peter Rot, Ž. Emeršič, P. Peer, V. Štruc, S. V. A. Kumar, B. Harish
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引用次数: 35

摘要

本文总结了巩膜分割和眼睛识别基准竞赛(SSERBC 2017)的结果。它是在国际生物识别联合会议(IJCB 2017)的背景下组织的。本次比赛的目的是记录可见光光谱中巩膜分割和眼睛识别的最新进展(利用虹膜、巩膜和眼周及其融合),并引起研究人员对这一主题的关注。在这方面,我们使用了多角度巩膜数据集(MASD版本1)。它由来自82个身份的双眼的2624张图像组成。因此,它由164只眼睛的图像组成(82×2)。创建了这些图像的手动分割掩码,以作为这两个任务的基线。采用基于查全率和查全率的统计度量来评价分割的有效性和分割任务的等级。采用识别精度度量来衡量识别任务。人工分割巩膜、虹膜和眼周区域用于识别任务。16支队伍报名参赛,其中6支队伍提交了分割任务的算法或系统,2支队伍提交了识别算法或系统。这些算法或系统产生的结果反映了当前巩膜分割和眼睛识别文献的发展,采用了尖端技术。MASD第1版数据集将免费提供一些基础事实,用于研究目的。比赛的成功也显示了学术界和工业界研究人员最近对这一主题的兴趣。
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SSERBC 2017: Sclera segmentation and eye recognition benchmarking competition
This paper summarises the results of the Sclera Segmentation and Eye Recognition Benchmarking Competition (SSERBC 2017). It was organised in the context of the International Joint Conference on Biometrics (IJCB 2017). The aim of this competition was to record the recent developments in sclera segmentation and eye recognition in the visible spectrum (using iris, sclera and peri-ocular, and their fusion), and also to gain the attention of researchers on this subject. In this regard, we have used the Multi-Angle Sclera Dataset (MASD version 1). It is comprised of2624 images taken from both the eyes of 82 identities. Therefore, it consists of images of 164 (82×2) eyes. A manual segmentation mask of these images was created to baseline both tasks. Precision and recall based statistical measures were employed to evaluate the effectiveness of the segmentation and the ranks of the segmentation task. Recognition accuracy measure has been employed to measure the recognition task. Manually segmented sclera, iris and peri-ocular regions were used in the recognition task. Sixteen teams registered for the competition, and among them, six teams submitted their algorithms or systems for the segmentation task and two of them submitted their recognition algorithm or systems. The results produced by these algorithms or systems reflect current developments in the literature of sclera segmentation and eye recognition, employing cutting edge techniques. The MASD version 1 dataset with some of the ground truth will be freely available for research purposes. The success of the competition also demonstrates the recent interests of researchers from academia as well as industry on this subject.
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