SSBC 2020:移动环境下的巩膜分割基准竞争

M. Vitek, A. Das, Y. Pourcenoux, A. Missler, C. Paumier, S. Das, I. De Ghosh, D. Lucio, L. A. Zanlorensi, D. Menotti, F. Boutros, N. Damer, J. H. Grebe, A. Kuijper, J. Hu, Y. He, C. Wang, H. Liu, Y. Wang, Z. Sun, D. Osorio-Roig, C. Rathgeb, C. Busch, J. Tapia, A. Valenzuela, G. Zampoukis, Lazaros Tsochatzidis, I. Pratikakis, S. Nathan, R. Suganya, V. Mehta, A. Dhall, K. Raja, G. Gupta, J. Khiarak, M. Akbari-Shahper, F. Jaryani, M. Asgari-Chenaghlu, R. Vyas, S. Dakshit, P. Peer, U. Pal, V. Štruc
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引用次数: 15

摘要

本文介绍了2020年巩膜分割基准比赛(SSBC)的总结,这是围绕巩膜分割问题进行的一系列小组基准测试中的第7次。与之前的版本不同,SSBC 2020的目标是评估用移动设备捕获的图像的巩膜分割模型的性能。该竞赛被用作评估现有模型对i)用于图像捕获的移动设备差异和ii)环境采集条件变化的敏感性的平台。26个研究小组注册参加2020年SSBC,其中13个小组参加了最后一轮,共提交了16个分割模型进行评分。其中包括各种深度学习解决方案以及一种基于标准图像处理技术的方法。用三个最新的数据集进行了实验。大多数分割模型在不同移动设备捕获的图像中实现了相对一致的性能(设备之间略有差异),但在具有挑战性的环境条件下(即在室内环境和光线较差的情况下)捕获的低质量图像时最困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SSBC 2020: Sclera Segmentation Benchmarking Competition in the Mobile Environment
The paper presents a summary of the 2020 Sclera Segmentation Benchmarking Competition (SSBC), the 7th in the series of group benchmarking efforts centred around the problem of sclera segmentation. Different from previous editions, the goal of SSBC 2020 was to evaluate the performance of sclera-segmentation models on images captured with mobile devices. The competition was used as a platform to assess the sensitivity of existing models to i) differences in mobile devices used for image capture and ii) changes in the ambient acquisition conditions. 26 research groups registered for SSBC 2020, out of which 13 took part in the final round and submitted a total of 16 segmentation models for scoring. These included a wide variety of deep-learning solutions as well as one approach based on standard image processing techniques. Experiments were conducted with three recent datasets. Most of the segmentation models achieved relatively consistent performance across images captured with different mobile devices (with slight differences across devices), but struggled most with low-quality images captured in challenging ambient conditions, i.e., in an indoor environment and with poor lighting.
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