In the era of rapid technological advancement, the emergence of Deepfake technology has transformed our interaction with digital content. Deepfakes are sophisticated synthetic media created using deep learning techniques that alter or replace visual and audio elements in images, videos, and audio recordings. While Deepfakes offer potential benefits in entertainment and training, they also raise ethical, social, and security concerns. Many people have been victims of deepfake tools that are widely available online. Such tools can cheat image recognition algorithms. Therefore, an assessment of the dangers of these tools is necessary so that researchers can focus on novel strategies for anti-deepfake. This study evaluates the ability of four famous deepfake tools, namely Deepfakes, Face2Face, Face Swap, and Neural Textures, to cheat deep learning architectures in fake/real face recognition in images. Experimental results show that the Neural Textures tool is the most sophisticated in creating fake faces, which is the most challenging for the considered fake image detection algorithms. In addition, we propose an architecture that can obtain better performance in fake/real face detection with fewer parameters.
Số tạp chí Ngoc Thanh Nguyen · Bogdan Franczyk · André Ludwig · Manuel Núñez · Jan Treur · Gottfried Vossen · Adrianna Kozierkiewicz(2024) Trang: 157-169
Tạp chí khoa học Trường Đại học Cần Thơ
Lầu 4, Nhà Điều Hành, Khu II, đường 3/2, P. Xuân Khánh, Q. Ninh Kiều, TP. Cần Thơ
Điện thoại: (0292) 3 872 157; Email: tapchidhct@ctu.edu.vn
Chương trình chạy tốt nhất trên trình duyệt IE 9+ & FF 16+, độ phân giải màn hình 1024x768 trở lên