Controllable and Expressive One-Shot Video Head Swapping
Chaonan Ji, Jinwei Qi, Peng Zhang, Bang Zhang, Liefeng Bo

TL;DR
This paper introduces a diffusion-based framework for controllable, one-shot video head swapping that preserves identity, background, and allows expression editing, addressing limitations of previous face-swapping methods.
Contribution
It presents a unified latent diffusion approach with innovative strategies for holistic head identity preservation and expression editing in video head swapping.
Findings
Achieves seamless background integration and identity preservation.
Supports expression editing and transfer for real and virtual characters.
Outperforms existing methods in head swapping quality.
Abstract
In this paper, we propose a novel diffusion-based multi-condition controllable framework for video head swapping, which seamlessly transplant a human head from a static image into a dynamic video, while preserving the original body and background of target video, and further allowing to tweak head expressions and movements during swapping as needed. Existing face-swapping methods mainly focus on localized facial replacement neglecting holistic head morphology, while head-swapping approaches struggling with hairstyle diversity and complex backgrounds, and none of these methods allow users to modify the transplanted head expressions after swapping. To tackle these challenges, our method incorporates several innovative strategies through a unified latent diffusion paradigm. 1) Identity-preserving context fusion: We propose a shape-agnostic mask strategy to explicitly disentangle foreground…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Face recognition and analysis · Visual Attention and Saliency Detection
