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Deepfake Video Detection using Neural Networks

Author(s):

Abhijit Hanumant Jadhav , G H Raisoni College of Engineering and Management Pune; Abhishek Patange, G H Raisoni College of Engineering and Management Pune; Hitendra Patil, G H Raisoni College of Engineering and Management Pune; Jay Patel, G H Raisoni College of Engineering and Management Pune; Manjushri Mahajan, G H Raisoni College of Engineering and Management Pune

Keywords:

Deepfake Video Detection, convolutional Neural network (CNN), recurrent neural network (RNN)

Abstract

In recent months, free deep learning-based software tools has facilitated the creation of credible face exchanges in videos that leave few traces of manipulation, in what they are known as "DeepFake"(DF) videos. Manipulations of digital videos have been demonstrated for several decades through the good use of visual effects, recent advances in deep learning have led to a drastic increase in the realism of fake content and the accessibility in which it can be created. These so-called AI-synthesized media (popularly referred to as DF).Creating the DF using the Artificially intelligent tools are simple task. But, when it comes to detection of these DF, it is major challenge. Because training the algorithm to spot the DF is not simple. We have taken a step forward in detecting the DF using Convolutional Neural Network and Recurrent neural Network. System uses a convolutional Neural network (CNN) to extract features at the frame level. These features are used to train a recurrent neural network (RNN) which learns to classify if a video has been subject to manipulation or not and able to detect the temporal inconsistencies between frames introduced by the DF creation tools. Expected result against a large set of fake videos collected from standard data set. We show how our system can be competitive result in this task results in using a simple architecture.

Other Details

Paper ID: IJSRDV8I10860
Published in: Volume : 8, Issue : 1
Publication Date: 01/04/2020
Page(s): 1016-1019

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