21, February 2026

Deep Learning Approaches for Detecting AI-Generated Images

Author(s): 1 Mr. Pragnesh Trivedi, 2 Dr. Brijesh Jajal,

Authors Affiliations:

1 Teaching Assistant, School of Computing & Technology, IAR University, Gandhinagar, India
2 Associate Professor, School of Computing & Technology, IAR University, Gandhinagar, India

DOIs:10.2015/IJIRMF/202602010     |     Paper ID: IJIRMF202602010


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Abstract:    The rapid advancement of Artificial Intelligence has made it increasingly easy to generate highly realistic images using models such as GANs, DALL·E, and Stable Diffusion. While these AI-generated images have creative and commercial benefits, they also pose serious challenges for authenticity verification, media trust, and misinformation control. This research focuses on developing a deep learning-based system to distinguish between real and AI- generated images. A diverse dataset, including real-world photographs and AI- generated samples, will be curated from multiple sources. The proposed model combines Convolutional Neural Networks (CNNs) with Vision Transformers (ViTs) to capture both local and global features of images. Performance will be evaluated using metrics such as accuracy, precision, recall, and F1-score. The expected outcomes include a highly accurate detection system with robust generalization across different AI image generators. This study highlights the potential of deep learning for ensuring image authenticity and provides insights for applications in digital forensics, social media verification, and media literacy.    
Key Words:  AI generated image detection, fake image detection, GenAI images.

1 Mr. Pragnesh Trivedi, 2 Dr. Brijesh Jajal, (2026); Deep Learning Approaches for Detecting AI-Generated Images, International Journal for Innovative Research in Multidisciplinary Field, ISSN(O): 2455-0620, Vol-12, Issue-2, Available on –   https://www.ijirmf.com/

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