年龄和阈值变化对儿童图像人脸识别算法性能的影响

Dana Michalski, Sau Yee Yiu, C. Malec
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引用次数: 22

摘要

在广泛的操作环境中,跨越年龄的面部识别,特别是儿童图像的面部识别仍然是一个具有挑战性的问题。然而,对儿童图像的算法性能的研究是有限的,对年龄和年龄变化(即被比较的图像之间的年龄差异)如何影响性能的理解很少。在操作上,可以使用基于成人图像的固定阈值,而不考虑这可能会影响儿童的表现。在比较儿童图像时,基于年龄和年龄变化的阈值变化可能是更好的方法。本文评估了商用现货(COTS)面部识别算法的性能,以确定年龄(0-17岁)和年龄变化(0-10岁)对使用固定阈值和阈值变化方法控制的面部图像操作数据集的影响。该评估表明,儿童的表现在不同年龄和年龄差异上有很大差异,在某些操作环境中,阈值变化可能有利于对儿童进行面部识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Age and Threshold Variation on Facial Recognition Algorithm Performance Using Images of Children
Facial recognition across ageing and in particular with images of children remains a challenging problem in a wide of range of operational settings. Yet, research examining algorithm performance with images of children is limited with minimal understanding of how age and age variation (i.e., age difference between images being compared) impacts on performance. Operationally, a fixed threshold based on images of adults may be used without considering that this could impact on performance with children. Threshold variation based on age and age variation may be a better approach when comparing images of children. This paper evaluates the performance of a commercial off-the-shelf (COTS) facial recognition algorithm to determine the impact that age (0–17 years) and age variation (0–10 years) has on a controlled operational dataset of facial images using both a fixed threshold and threshold variation approach. This evaluation shows that performance of children differs considerably across age and age variation, and in some operational settings, threshold variation may be beneficial for conducting facial recognition with children.
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