Visible to the public Deep fake Image Detection based on Modified minimized Xception Net and DenseNet

TitleDeep fake Image Detection based on Modified minimized Xception Net and DenseNet
Publication TypeConference Paper
Year of Publication2022
AuthorsSahib, Ihsan, AlAsady, Tawfiq Abd Alkhaliq
Conference Name2022 5th International Conference on Engineering Technology and its Applications (IICETA)
Keywordsconvolution, convolutional neural network (CNN), Deep fake, Deep Learning, DeepFake, Deepfakes, DenseNet, depthwise separable convolution, feature extraction, Forgery, Human Behavior, Image color analysis, Metrics, pubcrawl, resilience, Resiliency, Scalability, Training, Xception net
Abstract

This paper deals with the problem of image forgery detection because of the problems it causes. Where The Fake im-ages can lead to social problems, for example, misleading the public opinion on political or religious personages, de-faming celebrities and people, and Presenting them in a law court as evidence, may Doing mislead the court. This work proposes a deep learning approach based on Deep CNN (Convolutional Neural Network) Architecture, to detect fake images. The network is based on a modified structure of Xception net, CNN based on depthwise separable convolution layers. After extracting the feature maps, pooling layers are used with dense connection with Xception output, to in-crease feature maps. Inspired by the idea of a densenet network. On the other hand, the work uses the YCbCr color system for images, which gave better Accuracy of %99.93, more than RGB, HSV, and Lab or other color systems.

Notes

ISSN: 2831-753X

DOI10.1109/IICETA54559.2022.9888278
Citation Keysahib_deep_2022