基于深度学习的ViT技术诊断人脸变形的渐进式识别

M.K. Mohamed Faizal, S. Geetha, A. Barveen
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引用次数: 0

摘要

这种面部变形攻击发生在私人、公共和政府机构中,是当今世界上最著名的攻击之一。如果人脸图像被重复图像操纵,人脸识别系统往往是脆弱的。经过处理的图像与原始图像相结合,使图像看起来像合法的图像。一些人脸识别研究正在进行,以确定人脸图像是否被操纵。利用深度学习算法对人脸图像进行训练,通过对人脸图像的识别得到原始和变形后的人脸图像。DL算法通过分类来确定图像是否为人类可识别的变形或不可识别。本文的重点是利用不同的深度学习技术对这些变形图像进行人脸识别诊断。对不同的深度学习技术进行了有效的比较,其中ViT变压器分别比Resnet、RNN和CNN获得了更高的精度。本文概述了用于检测人脸识别图像的各种深度学习算法,重点关注来自人脸识别Kaggle数据集的人脸数据集中的挑战和问题,以及训练和测试图像数据集。它决定了图像效率和对改进后的人脸识别图像的评价具有更高的对比度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosing Progressive Face Recognition from Face Morphing Using ViT Technique Through DL Approach
The face-morphing attack, which occurs in private, public, and governmental institutions, is one of the most well-known in today’s world. Face recognition systems tend to be vulnerable if the face images are manipulated with duplicate images. Manipulated images are combined with the original image so that the images look like legitimate ones. Several face recognition studies are being conducted to determine whether the face images are manipulated. Using the DL algorithm, the face image is trained to attain the original and morphed face images by recognizing the face images. DL algorithms determine the images by classifying whether they are morphs or not recognizable to humans. In this paper, the foremost emphasis is on diagnosing the face recognition from those face-morphed images using the different DL techniques. Different DL techniques are effectively compared, where the ViT transformer attains improved accuracy when compared to Resnet, RNN, and CNN, respectively. This paper provides an overview of the various deep learning algorithms for detecting those face recognition images that focus on challenges and issues in the facial datasets from Face Recognition Kaggle dataset with training and testing image dataset. It determines the higher contrast in image efficiency and the evaluation of the face recognized images with an improved image.
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