Deep fake Image Detection based on Modified minimized Xception Net and DenseNet
Title | Deep fake Image Detection based on Modified minimized Xception Net and DenseNet |
Publication Type | Conference Paper |
Year of Publication | 2022 |
Authors | Sahib, Ihsan, AlAsady, Tawfiq Abd Alkhaliq |
Conference Name | 2022 5th International Conference on Engineering Technology and its Applications (IICETA) |
Keywords | convolution, 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 |
DOI | 10.1109/IICETA54559.2022.9888278 |
Citation Key | sahib_deep_2022 |