Title
FakeBuster: A DeepFakes Detection Tool for Video Conferencing Scenarios
Abstract
ABSTRACT This paper proposes FakeBuster, a novel DeepFake detector for (a) detecting impostors during video conferencing, and (b) manipulated faces on social media. FakeBuster is a standalone deep learning- based solution, which enables a user to detect if another person’s video is manipulated or spoofed during a video conference-based meeting. This tool is independent of video conferencing solutions and has been tested with Zoom and Skype applications. It employs a 3D convolutional neural network for predicting video fakeness. The network is trained on a combination of datasets such as Deeperforensics, DFDC, VoxCeleb, and deepfake videos created using locally captured images (specific to video conferencing scenarios). Diversity in the training data makes FakeBuster robust to multiple environments and facial manipulations, thereby making it generalizable and ecologically valid.
Year
DOI
Venue
2021
10.1145/3397482.3450726
Intelligent User Interfaces
Keywords
DocType
Citations 
Deepfakes detection, spoofing, neural networks
Conference
1
PageRank 
References 
Authors
0.36
6
4
Name
Order
Citations
PageRank
Vineet Mehta111.38
Parul Gupta2929.30
Ramanathan Subramanian364.63
Abhinav Dhall4103552.61