Deep Fake Video Detection Using Transfer Learning Resnet50

Authors

  • S. Praveena Professor, Department of AIML (Artificial intelligence and machine learning), Manakula Vinayagar Institute of Technology, Puducherry, India. Author
  • R.Kaviya Under Graduate student, Manakkula vinayagar institute of technology, Puducherry, India. Author
  • K.Sheerin Farhana Under Graduate student, Manakkula vinayagar institute of technology, Puducherry, India. Author
  • S.Bhuvanasri Under Graduate student, Manakkula vinayagar institute of technology, Puducherry, India. Author

DOI:

https://doi.org/10.47392/IRJAEM.2025.0094

Keywords:

Media Integrity, Convolutional Neural Network, ResNet50, Transfer Learning, Deepfake Detection

Abstract

The rapid development of deep learning technologies has enabled the creation of highly realistic deepfake videos, raising concerns in areas such as media integrity, privacy, and security. Detecting these deepfakes has become a significant challenge, as conventional methods struggle to keep pace with increasingly sophisticated techniques. This journal explores the application of transfer learning using ResNet50, a pre-trained convolutional neural network, for deepfake video detection. We present an overview of deepfake creation, the role of ResNet50 in transfer learning, the implementation process, and the results of using this approach to detect deepfakes in video content.

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Published

2025-03-22