基于预训练深度学习模型(EFQnet)的面部图像质量评估

A. Abayomi-Alli, Olabode Atinuke, S. Onashoga, S. Misra, O. Arogundade, O. Abayomi-Alli
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引用次数: 1

摘要

面部识别是一种生物识别技术,它处理人类图像的面部区域。现有人脸识别系统(FRS)的识别精度较低是由于捕获的图像质量较低。因此,在将图像通过FRS之前,必须对图像质量进行评估。本研究提出了一种使用预训练深度学习模型(EFQnet)集成的面部图像质量评估(FIQA)模型。EFQnet系统是ResNet-50、DenseNet和Inception-Net CNN预训练模型的集合。它利用基于性能的真实值来预测输入图像在0到1之间的质量分数。采用全全连接前馈神经网络和AMSGrad随机梯度下降算法对三个模型进行集成。经过培训并完全实施后,EFQnet将在标准IQA数据库上进行评估,并最终部署在个人身份验证(PIV)场景中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Image Quality Assessment using an Ensemble of Pre-Trained Deep Learning Models (EFQnet)
Facial recognition is a type of biometric that deals with the facial region of a human image. The low recognition accuracy of existing Facial Recognition Systems (FRS) is due to the low quality of captured images. The assessment of image quality, therefore, becomes a requirement to be taken before passing such an image through the FRS. This study presents a proposed Facial Image Quality Assessment (FIQA) model using an ensemble of pre-trained deep learning models (EFQnet). The system known as EFQnet is an ensemble of ResNet-50, DenseNet, and Inception-Net CNN pre-trained models. It utilizes a performance-based ground truth that forecasts a quality score for the input image between 0 to 1. The three models are ensemble using full fully connected Feedforward Neural Network and AMSGrad stochastic gradient Descent algorithm. When trained and fully implemented EFQnet will be evaluated on standard IQA databases and finally deployed in a Personal Identity Verification (PIV) scenario.
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