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The Unconstrained Ear Recognition Challenge 2019

机译:2019年无限制耳朵识别挑战赛

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摘要

This paper presents a summary of the 2019 Unconstrained Ear Recognition Challenge (UERC), the second in a series of group benchmarking efforts centered around the problem of person recognition from ear images captured in uncontrolled settings. The goal of the challenge is to assess the performance of existing ear recognition techniques on a challenging large-scale ear dataset and to analyze performance of the technology from various viewpoints, such as generalization abilities to unseen data characteristics, sensitivity to rotations, occlusions and image resolution and performance bias on sub-groups of subjects, selected based on demographic criteria, i.e. gender and ethnicity. Research groups from 12 institutions entered the competition and submitted a total of 13 recognition approaches ranging from descriptor-based methods to deep-learning models. The majority of submissions focused on ensemble based methods combining either representations from multiple deep models or hand-crafted with learned image descriptors. Our analysis shows that methods incorporating deep learning models clearly outperform techniques relying solely on hand-crafted descriptors, even though both groups of techniques exhibit similar behavior when it comes to robustness to various covariates, such presence of occlusions, changes in (head) pose, or variability in image resolution. The results of the challenge also show that there has been considerable progress since the first UERC in 2017, but that there is still ample room for further research in this area.
机译:本文介绍了2019年无限制耳朵识别挑战赛(UERC)的摘要,这是一系列小组基准测试中的第二项,重点围绕在不受控制的环境中捕获的人耳图像中的人识别问题。挑战的目标是评估现有的耳朵识别技术在具有挑战性的大规模耳朵数据集上的性能,并从各种角度分析该技术的性能,例如对看不见的数据特征的泛化能力,对旋转,遮挡和图像的敏感度根据人口统计标准(即性别和种族)选择的主题子组的分辨率和表现偏差。来自12个机构的研究小组参加了比赛,总共提交了13种识别方法,从基于描述符的方法到深度学习模型。大多数提交者都集中在基于整体的方法上,这些方法结合了来自多个深度模型的表示或与学习的图像描述符一起手工制作的方法。我们的分析表明,即使深度学习模型对各种协变量的鲁棒性(包括遮挡的存在,(头部)姿势的变化,或图像分辨率的变化。挑战的结果还表明,自2017年首届UERC以来已经取得了相当大的进步,但在该领域仍有足够的空间进行进一步研究。

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