Identity Document to Selfie Face Matching Across Adolescence

Vítor Albiero, Nisha Srinivas, Esteban Villalobos, Jorge Perez-Facuse, Robert Rosenthal, D. Mery, K. Ricanek, K. Bowyer
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引用次数: 6

Abstract

Matching live images (“selfies”) to images from ID documents is a problem that can arise in various applications. A challenging instance of the problem arises when the face image on the ID document is from early adolescence and the live image is from later adolescence. We explore this problem using a private dataset called Chilean Young Adult (CHIYA) dataset, where we match live face images taken at age 18–19 to face images on scanned ID documents created at ages 9 to 18. State-of-the-art deep learning face matchers (e.g., ArcFace) have relatively poor accuracy for document-to-selfie face matching. To achieve higher accuracy, we fine-tune the best available open-source model with triplet loss for a few-shot learning. Experiments show that our approach achieves higher accuracy than the DocFace+ model recently developed for this problem. Our fine-tuned model was able to improve the true acceptance rate for the most difficult (largest age span) subset from 62.92% to 96.67% at a false acceptance rate of 0.01%. Our fine-tuned model is available for use by other researchers.
青少年身份证件与自拍照人脸匹配
将实时图像(“自拍”)与ID文档中的图像匹配是各种应用程序中可能出现的问题。当身份证件上的面部图像来自青少年早期,而现场图像来自青少年后期时,出现了一个具有挑战性的问题实例。我们使用一个名为智利青年(CHIYA)数据集的私人数据集来探索这个问题,在这个数据集中,我们将18 - 19岁拍摄的实时人脸图像与9 - 18岁创建的扫描ID文件上的人脸图像进行匹配。最先进的深度学习人脸匹配器(例如ArcFace)在文档到自拍的人脸匹配方面的准确性相对较差。为了达到更高的精度,我们微调了最好的可用的开源模型,使用三重损失进行几次学习。实验表明,我们的方法比最近针对该问题开发的DocFace+模型具有更高的精度。我们的微调模型能够将最难(最大年龄跨度)子集的真实接受率从62.92%提高到96.67%,错误接受率为0.01%。我们的微调模型可供其他研究人员使用。
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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