Sensitivity of Age Estimation Systems to Demographic Factors and Image Quality: Achievements and Challenges

A. Akbari, Muhammad Awais, J. Kittler
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引用次数: 7

Abstract

Recently, impressively growing efforts have been devoted to the challenging task of facial age estimation. The improvements in performance achieved by new algorithms are measured on several benchmarking test databases with different characteristics to check on consistency. While this is a valuable methodology in itself, a significant issue in the most age estimation related studies is that the reported results lack an assessment of intrinsic system uncertainty. Hence, a more in-depth view is required to examine the robustness of age estimation systems in different scenarios. The purpose of this paper is to conduct an evaluative and comparative analysis of different age estimation systems to identify trends, as well as the points of their critical vulnerability. In particular, we investigate four age estimation systems, including the online Microsoft service, two best state-of-the-art approaches advocated in the literature, as well as a novel age estimation algorithm. We analyse the effect of different internal and external factors, including gender, ethnicity, expression, makeup, illumination conditions, quality and resolution of the face images, on the performance of these age estimation systems. The goal of this sensitivity analysis is to provide the biometrics community with the insight and understanding of the critical subject-, camera- and environmental-based factors that affect the overall performance of the age estimation system under study.
年龄估计系统对人口因素和图像质量的敏感性:成就与挑战
最近,越来越多的人致力于面部年龄估计这一具有挑战性的任务。在几个具有不同特征的基准测试数据库上测量新算法所取得的性能改进,以检查一致性。虽然这本身是一种有价值的方法,但在大多数与年龄估计相关的研究中,一个重要的问题是,报告的结果缺乏对内在系统不确定性的评估。因此,需要一个更深入的观点来检查年龄估计系统在不同情况下的稳健性。本文的目的是对不同的年龄估计系统进行评价和比较分析,以确定趋势,以及它们的关键脆弱性点。特别地,我们研究了四种年龄估计系统,包括在线微软服务,文献中提倡的两种最先进的方法,以及一种新的年龄估计算法。我们分析了不同的内部和外部因素,包括性别、种族、表情、化妆、照明条件、面部图像的质量和分辨率,对这些年龄估计系统的性能的影响。这项敏感性分析的目的是为生物识别界提供对影响所研究的年龄估计系统整体性能的关键主体、相机和环境因素的洞察和理解。
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