Parametric Reshaping of Portraits in Videos
Xiangjun Tang, Wenxin Sun, Yong-Liang Yang, and Xiaogang Jin

TL;DR
This paper introduces a robust parametric method for reshaping portraits in videos, ensuring smooth, stable, and visually pleasing retouched results suitable for social media and visual effects.
Contribution
The authors propose a novel two-stage approach combining stabilized face reconstruction and 3D-guided video warping for consistent portrait reshaping in videos.
Findings
Produces smooth and stable portrait reshaping in videos
Minimizes distortions and maintains temporal consistency
Facilitates easy editing with a simple reshaping parameter
Abstract
Sharing short personalized videos to various social media networks has become quite popular in recent years. This raises the need for digital retouching of portraits in videos. However, applying portrait image editing directly on portrait video frames cannot generate smooth and stable video sequences. To this end, we present a robust and easy-to-use parametric method to reshape the portrait in a video to produce smooth retouched results. Given an input portrait video, our method consists of two main stages: stabilized face reconstruction, and continuous video reshaping. In the first stage, we start by estimating face rigid pose transformations across video frames. Then we jointly optimize multiple frames to reconstruct an accurate face identity, followed by recovering face expressions over the entire video. In the second stage, we first reshape the reconstructed 3D face using a…
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