Longitudinal Study of Child Face Recognition

Debayan Deb, N. Nain, Anil K. Jain
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引用次数: 54

Abstract

We present a longitudinal study of face recognition performance on Children Longitudinal Face (CLF) dataset containing 3,682 face images of 919 subjects, in the age group [2,18] years. Each subject has at least four face images acquired over a time span of up to six years. Face comparison scores are obtained from (i) a state-of-the-art COTS matcher (COTS-A), (ii) an open-source matcher (FaceNet), and (iii) a simple sum fusion of scores obtained from COTSA and FaceNet matchers. To improve the performance of the open-source FaceNet matcher for child face recognition, we were able to fine-tune it on an independent training set of 3,294 face images of 1,119 children in the age group [3,18] years. Multilevel statistical models are fit to genuine comparison scores from the CLF dataset to determine the decrease in face recognition accuracy over time. Additionally, we analyze both the verification and open-set identification accuracies in order to evaluate state-of-the-art face recognition technology for tracing and identifying children lost at a young age as victims of child trafficking or abduction.
儿童面部识别的纵向研究
我们在儿童纵向面部(CLF)数据集上对人脸识别性能进行了纵向研究,该数据集包含919个年龄组的3682张人脸图像[2,18]。每个受试者至少有四张面部图像,这些图像是在长达六年的时间跨度内获得的。人脸比较分数由(i)最先进的COTS匹配器(COTS- a), (ii)开源匹配器(FaceNet),以及(iii)从COTSA和FaceNet匹配器获得的分数的简单和融合获得。为了提高开源FaceNet儿童人脸识别匹配器的性能,我们能够在一个独立的训练集上对它进行微调,该训练集包含1119名年龄组儿童的3294张人脸图像[3,18]。多层统计模型拟合来自CLF数据集的真实比较分数,以确定人脸识别准确性随时间的下降。此外,我们分析了验证和开放集识别的准确性,以评估最先进的人脸识别技术,用于追踪和识别幼年失踪的儿童,作为贩运或绑架儿童的受害者。
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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