Project 37: Research on DNN-based Deep Fake Face Detection Technology
Contact Information:
Prof. Yue Wu
Email: wuyue@sjtu.edu.cn
Prof. Shilin Wang
Email: wsl@sjtu.edu.cn
Project Description and Objectives:
Deepfake detection is an adversarial research on the detection and defense of manipulated faces, it usually exploits the specific tampered dynamic and static artifacts presented in the facial texture, which is important in the scenes of digital media forensics and authentication protection. Although there have been efforts devoted to designing face forgery detection methods , they always experience a severe performance drop in the cross-database scenario due to the diversified data distributions generated by different manipulation techniques, thus limiting broader applications. This project aims to devise a more generalizable deepfake detector based on DNN to apply it to practical complex scenes.
Eligibility Requirements
Elementary knowledge on machine learning, deep learning.
Main Tasks
l Review literature on deepfake technology and deepfake detection algorithm.
l Design a deepfake detection model with high generalization performance in the cross-database scenario.
Website:
Lab: http://nelcat.sjtu.edu.cn/
School: http://infosec.sjtu.edu.cn