Deep Learning Approach for Detecting Fake Images Using Texture Variation Network

被引:0
作者
Haseena S. [1 ]
Saroja S. [2 ]
Shri Dharshini D. [1 ]
Nivetha A. [1 ]
机构
[1] Department of Information Technology, Mepco Schlenk Engineering College
[2] Department of Computer Applications, National Institute of Technology, Trichy
关键词
CNN; Deep Learning; Fake images; forgery; Texture Variation Network;
D O I
10.4114/intartif.vol26iss72pp1-14
中图分类号
学科分类号
摘要
Face manipulation technology is rapidly evolving, making it impossible for human eyes to recognize fake faces in photos. Convolutional Neural Network (CNN) discriminators, on the other hand, can quickly achieve high accuracy in distinguishing fake from real face photos. In this paper, we investigate how CNN models distinguish between fake and real faces. According to our findings, face forgery detection heavily relies on the variation in the texture of the images. As a result of the aforementioned discovery, we propose a deep texture variation network, a new model for robust face fraud detection based on convolution and pyramid pooling. Convolution combines pixel intensity and pixel gradient information to create a stationary representation of composition difference information. Simultaneously, multi-scale information fusion based on the pyramid pooling can prevent the texture features from being destroyed. The proposed deep texture variation network outperforms previous techniques on a variety of datasets, including Faceforensics++, DeeperForensics-1.0, Celeb-DF, and DFDC. The proposed model is less susceptible to image distortion, such as JPEG compression and blur, which is important in this field. © IBERAMIA and the authors.
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页码:1 / 14
页数:13
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