Jayanti Rout

Work place: P.G. Department of Computer Science, Fakir Mohan University, Balasore, 756019, Odisha, India

E-mail: routjayanti2k19@ieee.org

Website: https://orcid.org/0000-0001-7597-131X

Research Interests:

Biography

Jayanti Rout received her Master of Philosophy (M.Phil.) degree in Computer Science from Fakir Mohan University, Balasore, Odisha, India, in 2022. She is currently pursuing the Doctor of Philosophy (Ph.D.) degree in the P.G. Department of Computer Science at Fakir Mohan University, Balasore, Odisha, India. Her major field of study includes computer vision and digital image processing. She is actively involved in research focusing on digital multimedia content authentication, image forgery detection, and secure computer vision systems using machine learning, deep learning, and cryptographic techniques. Her broader research interests include computer vision, digital image processing, pattern recognition, artificial intelligence, machine learning, and cryptography. She has authored and co-authored 26 research publications, including 4 journal articles and 22 conference papers, published in reputed national and international venues. Ms. Rout is a Student Member of the IEEE. She has received the Best Paper Award at two IEEE international conferences in recognition of her research contributions.

Author Articles
Enhancing Image Forgery Detection through Dataset Balancing and a Fine-Tuned ResNet50: Focus on Copy-Move and Splicing

By Jayanti Rout Minati Mishra Ram Chandra Barik

DOI: https://doi.org/10.5815/ijigsp.2026.01.04, Pub. Date: 8 Feb. 2026

In last two decades, due to expansion of usage of multimedia especially images and also the trendy image editing tools, a huge amount of altered and forged images has been generated and circulated in social media and world wide web. Forged images are a threat to individuals, organizations, and society in terms of revenue, goodwill, etc. Verifying the authenticity of an image against possible forgery manually is prone to bias and is not feasible. Machine Learning (ML) models have their pros and cons in detecting image forgeries. Deep learning (DL)-based approaches have shown significant potential in the identification of tampered images due to their inherent feature extraction approaches, model configurations, and limitations of a well-distributed, unbiased public dataset. In this work, a fine-tuned pre-trained ResNet50 model has been proposed to detect tampered images. It focuses on detection of copy-move and splicing forgeries. In addition, a single-point crossover and mutation of Genetic Algorithms (GA) are used to address the class imbalance in the CASIA v2 dataset effectively. An extensive evaluation using simulation-based experiments shows that the proposed approach achieves promising and consistent performance with test accuracy and AUC of 0.9202 and 0.9741. A consistent result for both classes along with low computational complexities suggest the effectiveness of the proposed approach over other balancing strategies. The scalable design of the approach improves the reliability of image forgery detection.

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