Piyusha Siripurapu -V. S. ChandrikaDhanasree Prattipati -Gudapati Sai Manoj -R. Sarala
In recent years, the rise of deepfakes-synthetic media generated using artificial intelligence has raised seriousconcerns due to its potential misuse in various fields such as politics, entertainment, and cybercrime. This project, titled"Deepfake Detection Using Deep Learning," aims to develop a robust system for identifying and classifying deepfakecontent. The proposed approach leverages advanced deep learning techniques, including Convolutional NeuralNetworks (CNNs) and Recurrent Neural Networks (RNNs), to detect inconsistencies and temporal patterns.Additionally, Generative Adversarial Networks (GANs) play a key role, with StyleGAN employed for generating high-quality fake images and CycleGAN for domain adaptation. The deepfake detection model is trained on a diversedataset of real and manipulated content, with the goal of improving the accuracy and generalization capability of thesystem. By combining the power of CNNs for image analysis, RNNs for sequential data processing, and GANs forunderstanding the nature of fake content generation, this project provides a comprehensive solution to the growingthreat posed by deepfakes.
Nagashree K TShristiSania FirdaushiShweta B PatilShristi Singh
Diksha GuptaShruti MishraMeenu GuptaRakesh Kumar
Vedant ManalwarSanket PatilPratik BagulAkshay RautAnish Patil