A deep learning model with an inductive transfer learning for forgery image detection
Document Type
Article
Publication Title
Indonesian Journal of Electrical Engineering and Computer Science
Abstract
Due to the availability of affordable electronic devices and several advanced online and offline multimedia content editing applications, the frequency of image manipulation has increased. In addition, the manipulated images are presented as evidence in courtrooms, circulated on social media and uploaded upon authentication to deceive the situation. This study implements a deep learning (DL) framework with inductive transfer learning (ITL) by using a pre-trained network to benefit from the discovered feature maps rather than starting from scratch and fine-tuning the process to check and classify whether the suspected image is authenticated or forged effectively. To experiment with the proposed model, we used both Columbian uncompressed image splicing detection (CUISD) and the CoMoFoD dataset for training and testing. We measured the model’s performance by changing hyperparameters and confirmed the better selection of values for the hyperparameter to yield compromised results. As per the evaluation results, our model showed improved results by classifying new instances of images with an average precision of 89.00%, recall of 86.43%, F1-score of 87.32, and accuracy of 87.72% and consistently performed better compared to other methods currently in use.
First Page
801
Last Page
810
DOI
10.11591/ijeecs.v37.i2.pp801-810
Publication Date
2-1-2025
Recommended Citation
Bevinamarad, Prabhu; Unki, Prakash H.; and Bhandage, Venkatesh, "A deep learning model with an inductive transfer learning for forgery image detection" (2025). Open Access archive. 13753.
https://impressions.manipal.edu/open-access-archive/13753