Evaluation of a 3D-aided pose invariant 2D face recognition system

Xiang Xu, Ha A. Le, Pengfei Dou, Yuhang Wu, I. Kakadiaris
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引用次数: 24

Abstract

A few well-developed face recognition pipelines have been reported in recent years. Most of the face-related work focuses on a specific module or demonstrates a research idea. In this paper, we present a pose-invariant 3D-aided 2D face recognition system (3D2D-PIFR) that is robust to pose variations as large as 90° by leveraging deep learning technology. We describe the architecture and the interface of 3D2D-PIFR, and introduce each module in detail. Experiments are conducted on the UHDB31 and IJB-A, demonstrating that 3D2D-PIFR outperforms existing 2D face recognition systems such as VGG-Face, FaceNet, and a commercial off-the-shelf software (COTS) by at least 9% on UHDB31 and 3% on IJB-A dataset on average. It fills a gap by providing a 3D-aided 2D face recognition system that has compatible results with 2D face recognition systems using deep learning techniques.
三维辅助姿态不变二维人脸识别系统的评价
近年来已经报道了一些比较成熟的人脸识别管道。大多数与面部相关的工作都集中在一个特定的模块上或展示一个研究想法。在本文中,我们提出了一种姿态不变的3d辅助2D人脸识别系统(3D2D-PIFR),该系统利用深度学习技术对姿态变化大至90°具有鲁棒性。介绍了3D2D-PIFR的结构和接口,并对各个模块进行了详细的介绍。在UHDB31和IJB-A上进行的实验表明,3D2D-PIFR在UHDB31和IJB-A数据集上平均优于现有的2D人脸识别系统(如VGG-Face, FaceNet和商用现货软件(COTS))至少9%和3%。它通过提供3d辅助的2D人脸识别系统来填补空白,该系统与使用深度学习技术的2D人脸识别系统具有兼容的结果。
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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