A meta-analysis of face recognition covariates

Y. Lui, D. Bolme, B. Draper, J. Beveridge, G. Givens, P. Phillips
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引用次数: 102

Abstract

This paper presents a meta-analysis for covariates that affect performance of face recognition algorithms. Our review of the literature found six covariates for which multiple studies reported effects on face recognition performance. These are: age of the person, elapsed time between images, gender of the person, the person's expression, the resolution of the face images, and the race of the person. The results presented are drawn from 25 studies conducted over the past 12 years. There is near complete agreement between all of the studies that older people are easier to recognize than younger people, and recognition performance begins to degrade when images are taken more than a year apart. While individual studies find men or women easier to recognize, there is no consistent gender effect. There is universal agreement that changing expression hurts recognition performance. If forced to compare different expressions, there is still insufficient evidence to conclude that any particular expression is better than another. Higher resolution images improve performance for many modern algorithms. Finally, given the studies summarized here, no clear conclusions can be drawn about whether one racial group is harder or easier to recognize than another.
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人脸识别协变量的元分析
本文提出了影响人脸识别算法性能的协变量的元分析。我们对文献的回顾发现了六个协变量,多个研究报告了对面部识别性能的影响。这些是:人的年龄,图像之间的间隔时间,人的性别,人的表情,面部图像的分辨率,以及人的种族。所提出的结果来自过去12年中进行的25项研究。所有的研究几乎都一致认为,老年人比年轻人更容易被识别,而当照片拍摄间隔超过一年时,识别能力就开始下降。虽然个别研究发现男性或女性更容易识别,但没有一致的性别影响。人们普遍认为,表情的变化会损害识别性能。如果被迫比较不同的表达,仍然没有足够的证据得出结论,任何特定的表达比另一个更好。更高分辨率的图像提高了许多现代算法的性能。最后,鉴于这里总结的研究,对于一个种族群体比另一个种族群体更难或更容易识别,我们无法得出明确的结论。
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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