FaceQnet: Quality Assessment for Face Recognition based on Deep Learning

J. Hernandez-Ortega, Javier Galbally, Julian Fierrez, Rudolf Haraksim, Laurent Beslay
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引用次数: 100

Abstract

In this paper we develop a Quality Assessment approach for face recognition based on deep learning. The method consists of a Convolutional Neural Network, FaceQnet, that is used to predict the suitability of a specific input image for face recognition purposes. The training of FaceQnet is done using the VGGFace2 database. We employ the BioLab-ICAO framework for labeling the VGGFace2 images with quality information related to their ICAO compliance level. The groundtruth quality labels are obtained using FaceNet to generate comparison scores. We employ the groundtruth data to fine-tune a ResNet-based CNN, making it capable of returning a numerical quality measure for each input image. Finally, we verify if the FaceQnet scores are suitable to predict the expected performance when employing a specific image for face recognition with a COTS face recognition system. Several conclusions can be drawn from this work, most notably: 1) we managed to employ an existing ICAO compliance framework and a pretrained CNN to automatically label data with quality information, 2) we trained FaceQnet for quality estimation by fine-tuning a pre-trained face recognition network (ResNet-50), and 3) we have shown that the predictions from FaceQnet are highly correlated with the face recognition accuracy of a state-of-the-art commercial system not used during development. FaceQnet is publicly available in GitHub1.
FaceQnet:基于深度学习的人脸识别质量评估
本文提出了一种基于深度学习的人脸识别质量评估方法。该方法由一个卷积神经网络FaceQnet组成,用于预测特定输入图像对面部识别的适用性。FaceQnet的训练是使用VGGFace2数据库完成的。我们采用BioLab-ICAO框架对VGGFace2图像进行标记,并提供与ICAO合规水平相关的质量信息。使用FaceNet获得真实质量标签以生成比较分数。我们使用groundtruth数据对基于resnet的CNN进行微调,使其能够为每个输入图像返回数字质量度量。最后,我们验证了FaceQnet分数是否适用于使用COTS人脸识别系统使用特定图像进行人脸识别时的预期性能。从这项工作中可以得出几个结论,最值得注意的是:1)我们设法使用现有的ICAO合规框架和预训练的CNN来自动标记带有质量信息的数据;2)我们通过微调预训练的人脸识别网络(ResNet-50)来训练FaceQnet进行质量估计;3)我们已经证明,来自FaceQnet的预测与开发过程中未使用的最先进商业系统的人脸识别精度高度相关。FaceQnet在GitHub1中公开可用。
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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