← Back to Articles
⚠️
IEEE Published Article
This article is published by IEEE and the copyright belongs to IEEE. Please click here to access the full text.

Innovative Deep Learning Solutions for Image Forgery Detection

View PDF

Abstract

Digital image forgery detection is crucial in addressing the rapid spread of fake information through manipulated images, especially on social media platforms. Traditional techniques often focus on specific types of forgery, limiting their effectiveness in real-world scenarios. Traditional methods heavily depend on manual feature engineering, which often results in overlooked manipulations, decreased accuracy, adaptability, and scalability issues when handling large datasets or high-resolution images. Deep learning has emerged as a powerful tool for addressing the challenges associated with image forgery detection. The proposed work introduces an innovative method for detecting image forgeries using deep learning techniques, employing convolutional neural networks (CNNs) and specifically evaluating the performance of the EfficientNetb7 model. This method leverages transfer learning to detect copy-move image forgery. It involves generating featured images by calculating the difference between the input image and compressed versions, which are then fed into pre-trained CNN model. The model undergo fine-tuning to adapt to forgery detection. Additionally, the output of the forgery detection process includes both text and audio. This combination enhances the accessibility and interpretability of the detection results, making them more understandable for users with different sensory preferences or impairments. This added feature ensures that the detection outcomes are easily comprehensible and usable across a broader range of users and applications.

Keywords

Rapid spread forged detection EfficientNetb7 CNN deep learning digital image

Authors

M. H. Mutar
Department of Computer Technical Engineering, College of Information Technology, Imam Ja’afar Al-Sadiq University, Al-Muthanna, Iraq
R. Al-Fatlawy
Department of Computer Technical Engineering, College of Technical Engineering, The Islamic University, Najaf, Iraq
H. A. Rasool
Department of Computer Science, Altoosi University College, Najaf, Iraq
R. R. Ghafour
National University of Science and Technology, Dhi Qar, Iraq
F. H. Abbas
Medical Laboratories Techniques Department, Al-Mustaqbal University, Hillah, Iraq
D. J. Hashim
Department of Computer Techniques Engineering, Mazaya University College, DhiQar, Iraq

Publication Details

Type
proceedings
Publisher
IEEE
Volume
Issue
ISSN
Citations
2
Views
15