Abstract

Face swapping has drawn a lot of attention for its compelling performance. However, current deepfake methods suffer the effects of obscure workflow and poor performance. To solve these problems, we present DeepFaceLab, the current dominant deepfake framework for practical face-swapping. It provides the necessary tools as well as an easy-to-use way to conduct high-quality face-swapping. It also offers a flexible and loose coupling structure for people who need to strengthen their pipeline with other features without writing complicated boilerplate code. We detail the principles that drive the implementation of DeepFaceLab and introduce its pipeline. DeepFaceLab could achieve cinema-level results with high fidelity as our supplemental video shows. We also demonstrate the advantage of our system by comparing our approach with other face-swapping methods.Deepfake defense not only requires the research of detection but also requires the efforts of generation methods. As for a popular and practical toolkit, we encourage users to promote harmless deepfake-entertainment content on social media, reminding the public of the existence of deepfake when they are looking for entertainment.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call