SSRBC 2016:巩膜分割与识别标杆竞赛

Abhijit Das, U. Pal, M. A. Ferrer-Ballester, M. Blumenstein
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引用次数: 35

摘要

本文报道并总结了巩膜分割和识别基准竞赛的结果,该竞赛被称为巩膜分割和识别基准竞赛2016 (SSRBC 2016)。它是在第九届IAPR生物识别国际会议(ICB 2016)的背景下组织的。这次比赛的目的是记录巩膜分割和识别的最新发展,并引起生物识别研究人员的注意。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(82*2)只不同眼睛的图像组成。我们已经准备了这些图像的手动分割掩码,以创建两个任务的基线。此外,我们还采用了基于查全率和查全率的统计方法来评估分割的有效性和竞争算法的排名。采用识别精度度量来衡量识别任务。总共有12名参赛者报名参加比赛,其中3名参赛者提交了他们的分割算法/系统,2名参赛者提交了他们的识别算法。这些算法产生的结果反映了巩膜分割和识别文献的发展,采用了尖端的分割技术。除了三个参赛团队的算法和他们的结果外,MASD第1版数据集也将在组织者的网站上免费提供,用于研究目的。比赛还展示了学术界和工业界研究人员最近对生物识别技术的兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SSRBC 2016: Sclera Segmentation and Recognition Benchmarking Competition
This article reports and summarizes the results of a competition on sclera segmentation and recognition benchmarking, called Sclera Segmentation and Recognition Benchmarking Competition 2016 (SSRBC 2016). It was organized in the context of the 9th IAPR International Conference on Biometrics (ICB 2016). The goal of this competition was to record the recent developments in sclera segmentation and recognition, and also to gain the attention of researchers on this subject of biometrics. In this regard, we have used a multi-angle sclera dataset (MASD version 1). It is comprised of 2624 images taken from both the eyes of 82 identities. Therefore, it consists of images of 164 (82*2) different eyes. We have prepared a manual segmentation mask of these images to create the baseline for both tasks. We have, furthermore, adopted precision and recall based statistical measures to evaluate the effectiveness of the segmentation and the ranks of the competing algorithms. The recognition accuracy measure has been employed to measure the recognition task. To summarize, twelve participants registered for the competition, and among them, three participants submitted their algorithms/ systems for the segmentation task and two their recognition algorithm. The results produced by these algorithms reflect developments in the literature of sclera segmentation and recognition, employing cutting edge segmentation techniques. Along with the algorithms of three competing teams and their results, the MASD version 1 dataset will also be freely available for research purposes from the organizer's website. The competition also demonstrates the recent interests of researchers from academia as well as industry on this subject of biometrics.
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