Performance Face Image Quality Assessment under the Difference of Illumination Directions in Face Recognition System using FaceQnet, SDD-FIQA, and SER-FIQ

A. Nisa, Radhiyatul Fajri, Erwin Nashrullah, Fandy Harahap, Junanto Prihantoro, G. Wibowanto, Jemie Muliadi, Anto Nugroho
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引用次数: 2

Abstract

The Face Recognition system has a challenge when the conditions of the input images have differences in quality from the images that have been enrolled in the database. One of the causes is the variation in lighting that causes illumination in image. We used images with normal lighting, as well as four images that have variations in the lighting/illumination directions. Face Image Quality Assessment (FIQA) helps the face recognition system to ensure the optimum captured image quality for enrollment and verification process. We use both supervised (FaceQnet) and unsupervised (SDD-FIQA, SER-FIQ) FIQA method against the Asian Face Image dataset. The result shows that filtering images using FIQA method can reduce FNMR by 58.89% in matching images whose light direction is from below. Images with type 2 illumination, where an image whose light comes from below matched with normal image, gave the lowest result in FRR compared to other types of illumination when tested with 3 FIQA methods.
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基于FaceQnet、SDD-FIQA和SER-FIQ的不同光照方向下人脸识别系统性能图像质量评估
当输入图像的条件与数据库中登记的图像质量存在差异时,人脸识别系统面临挑战。其中一个原因是引起图像照明的光线变化。我们使用正常照明的图像,以及四个在照明/照明方向上有变化的图像。人脸图像质量评估(FIQA)有助于人脸识别系统确保在登记和验证过程中获得最佳的图像质量。我们对亚洲人脸图像数据集使用了有监督(FaceQnet)和无监督(SDD-FIQA, SER-FIQ) FIQA方法。结果表明,采用FIQA方法滤波后的图像,在光方向为下方向的匹配图像中,FNMR降低58.89%。当使用3种FIQA方法进行测试时,与其他类型的照明相比,具有2型照明的图像(其中光线来自下方的图像与正常图像相匹配)的FRR结果最低。
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