Recurrent-Convolution Approach to DeepFake Detection - State-Of-Art Results on FaceForensics++

05/02/2019
by   Ekraam Sabir, et al.
0

Spread of misinformation has become a significant problem, raising the importance of relevant detection methods. While there are different manifestations of misinformation, in this work we focus on detecting face manipulations in videos. Specifically, we attempt to detect Deepfake, Face2Face and FaceSwap manipulations in videos. We exploit the temporal dynamics of videos with a recurrent approach. Evaluation is done on FaceForensics++ dataset and our method improves upon the previous state-of-the-art up to 4.55

READ FULL TEXT
research
05/02/2019

Recurrent Convolutional Strategies for Face Manipulation Detection in Videos

The spread of misinformation through synthetically generated yet realist...
research
04/09/2021

Improving the Efficiency and Robustness of Deepfakes Detection through Precise Geometric Features

Deepfakes is a branch of malicious techniques that transplant a target f...
research
01/07/2019

Dynamics are Important for the Recognition of Equine Pain in Video

A prerequisite to successfully alleviate pain in animals is to recognize...
research
09/28/2022

A Machine Learning Approach for DeepFake Detection

With the spread of DeepFake techniques, this technology has become quite...
research
09/04/2018

MesoNet: a Compact Facial Video Forgery Detection Network

This paper presents a method to automatically and efficiently detect fac...
research
06/28/2020

Interpretable Deepfake Detection via Dynamic Prototypes

Deepfake is one notorious application of deep learning research, leading...
research
09/07/2020

Deepfake detection: humans vs. machines

Deepfake videos, where a person's face is automatically swapped with a f...

Please sign up or login with your details

Forgot password? Click here to reset