SSBC 2018: Sclera Segmentation Benchmarking Competition

Abhijit Das, U. Pal, M. A. Ferrer-Ballester, M. Blumenstein
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引用次数: 24

Abstract

This paper summarises the results of the Sclera Segmentation Benchmarking Competition (SSBC 2018). It was organised in the context of the 11th IAPR International Conference on Biometrics (ICB 2018). The aim of this competition was to record the developments on sclera segmentation in the cross-sensor environment (sclera trait captured using multiple acquiring sensors). Additionally, the competition also aimed to gain the attention of researchers on this subject of research. For the purpose of benchmarking, we have developed two datasets of sclera images captured using different sensors. The first dataset was collected using a DSLR camera and the second one was collected using a mobile phone camera. The first dataset is the Multi-Angle Sclera Dataset (MASD version 1), which was used in the context of the previous versions of sclera segmentation competitions. The images in the second dataset were captured using .a mobile phone rear camera of 8-megapixel. As baseline manual segmentation mask of the sclera images from both the datasets were developed. Precision and recall-based statistical measures were employed to evaluate the effectiveness of the submitted segmentation technique and to rank them. Six algorithms were submitted towards the segmentation task. This paper analyses the results produced by these algorithms/system and defines a way forward for this subject of research. Both the datasets along with some of the accompanying ground truth/baseline mask will be freely available for research purposes upon request to authors by email.
SSBC 2018:巩膜分割标杆竞赛
本文总结了巩膜分割基准竞赛(SSBC 2018)的结果。它是在第11届IAPR生物识别国际会议(ICB 2018)的背景下组织的。本次比赛的目的是记录在跨传感器环境下巩膜分割的发展(使用多个采集传感器捕获巩膜特征)。此外,比赛还旨在引起研究人员对这一研究课题的关注。为了进行基准测试,我们开发了两个使用不同传感器捕获的巩膜图像数据集。第一个数据集是用数码单反相机收集的,第二个数据集是用手机相机收集的。第一个数据集是多角度巩膜数据集(MASD版本1),该数据集用于之前版本的巩膜分割竞赛。第二个数据集中的图像是用800万像素的手机后置摄像头拍摄的。作为基线,开发了两个数据集的巩膜图像的手动分割掩模。采用精确度和召回率为基础的统计度量来评估所提交的分割技术的有效性并对其进行排序。针对分割任务,提出了6种算法。本文分析了这些算法/系统产生的结果,并为该主题的研究确定了前进的方向。这两个数据集以及一些附带的地面真相/基线掩码将在作者通过电子邮件请求时免费提供,用于研究目的。
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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