单变形攻击检测的人脸特征可视化

Juan E. Tapia, C. Busch
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引用次数: 0

摘要

本文提出了一种可解释的可视化的不同的人脸特征提取算法,使检测真实和变形图像的单一变形攻击检测。特征提取是基于原始图像、形状、纹理、频率和压缩。这种可视化可能有助于为边境政策开发图形用户界面,特别是为必须调查可疑图像细节的边防人员开发图形用户界面。在三种基于地标的人脸变形方法和一种基于stylegan的人脸变形方法(变形后的图像在FRLL数据库中可用)的基础上,采用留一协议训练随机森林分类器。在变形攻击检测中,基于离散余弦变换的方法对合成图像检测效果最好,基于地标的图像特征检测效果最好。
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Face Feature Visualisation of Single Morphing Attack Detection
This paper proposes an explainable visualisation of different face feature extraction algorithms that enable the detection of bona fide and morphing images for single morphing attack detection. The feature extraction is based on raw image, shape, texture, frequency and compression. This visualisation may help to develop a Graphical User Interface for border policies and specifically for border guard personnel that have to investigate details of suspect images. A Random forest classifier was trained in a leave-one-out protocol on three landmarks-based face morphing methods and a StyleGAN-based morphing method for which morphed images are available in the FRLL database. For morphing attack detection, the Discrete Cosine-Transformation-based method obtained the best results for synthetic images and BSIF for landmark-based image features.
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