无约束耳识别挑战

Ž. Emeršič, Dejan Štepec, V. Štruc, P. Peer, Anjith George, Adil Ahmad, E. Omar, T. Boult, Reza Safdari, Yuxiang Zhou, S. Zafeiriou, Dogucan Yaman, Fevziye Irem Eyiokur, H. K. Ekenel
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引用次数: 62

摘要

在本文中,我们介绍了无约束耳识别挑战(UERC)的结果,这是一组基准测试工作,围绕在非受控条件下捕获的耳图像中识别人的问题。挑战赛的目标是在具有挑战性的大规模数据集上评估现有耳朵识别技术的性能,并确定未来需要解决的开放问题。来自三大洲的五个小组参加了挑战,并为评估提供了六种耳朵识别技术,而UERC组织者为挑战提供了多个基线。对所有参与的方法进行了全面的分析,以解决有关该技术对头部旋转、翻转、画廊大小、大规模识别等的敏感性的基本研究问题。我们发现,无论图像特征如何,UERC的最佳表现都能确保在数据集的较小部分(180个受试者)上的稳健性能,但当使用包含3,704个受试者的整个数据集进行测试时,仍然表现出显著的性能下降。
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The unconstrained ear recognition challenge
In this paper we present the results of the Unconstrained Ear Recognition Challenge (UERC), a group benchmarking effort centered around the problem of person recognition from ear images captured in uncontrolled conditions. The goal of the challenge was to assess the performance of existing ear recognition techniques on a challenging large-scale dataset and identify open problems that need to be addressed in the future. Five groups from three continents participated in the challenge and contributed six ear recognition techniques for the evaluation, while multiple baselines were made available for the challenge by the UERC organizers. A comprehensive analysis was conducted with all participating approaches addressing essential research questions pertaining to the sensitivity of the technology to head rotation, flipping, gallery size, large-scale recognition and others. The top performer of the UERC was found to ensure robust performance on a smaller part of the dataset (with 180 subjects) regardless of image characteristics, but still exhibited a significant performance drop when the entire dataset comprising 3,704 subjects was used for testing.
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