Video face replacement

Author:

Dale Kevin1,Sunkavalli Kalyan1,Johnson Micah K.2,Vlasic Daniel3,Matusik Wojciech4,Pfister Hanspeter1

Affiliation:

1. Harvard University

2. MIT CSAIL

3. Lantos Technologies

4. MIT CSAIL, and Disney Research Zurich

Abstract

We present a method for replacing facial performances in video. Our approach accounts for differences in identity, visual appearance, speech, and timing between source and target videos. Unlike prior work, it does not require substantial manual operation or complex acquisition hardware, only single-camera video. We use a 3D multilinear model to track the facial performance in both videos. Using the corresponding 3D geometry, we warp the source to the target face and retime the source to match the target performance. We then compute an optimal seam through the video volume that maintains temporal consistency in the final composite. We showcase the use of our method on a variety of examples and present the result of a user study that suggests our results are difficult to distinguish from real video footage.

Funder

Division of Mathematical Sciences

Division of Physics

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

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1. Unsupervised learning of style-aware facial animation from real acting performances;Graphical Models;2023-10

2. DeepFake Detection with Remote Heart Rate Estimation Using 3D Central Difference Convolution Attention Network;Recent Advances in Computer Science and Communications;2023-09

3. LatentAvatar: Learning Latent Expression Code for Expressive Neural Head Avatar;Special Interest Group on Computer Graphics and Interactive Techniques Conference Conference Proceedings;2023-07-23

4. SATFace: Subject Agnostic Talking Face Generation with Natural Head Movement;Neural Processing Letters;2023-04-11

5. Cross-Domain and Disentangled Face Manipulation With 3D Guidance;IEEE Transactions on Visualization and Computer Graphics;2023-04-01

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