Pose-guided human image generation is limited by incomplete textures from single reference views and the absence of explicit cross-view interaction. We present jointly conditioned diffusion model (JCDM), a jointly conditioned diffusion framework that exploits multi-view priors. The appearance prior module (APM) infers a holistic identity preserving prior from incomplete references, and the joint conditional injection (JCI) mechanism fuses multi-view cues and injects shared conditioning into the denoising backbone to align identity, color, and texture across poses. JCDM supports a variable number of reference views and integrates with standard diffusion backbones with minimal and targeted architectural modifications. Experiments demonstrate state of the art fidelity and cross-view consistency.
Cite
@article{arxiv.2511.15092,
title = {Jointly Conditioned Diffusion Model for Multi-View Pose-Guided Person Image Synthesis},
author = {Chengyu Xie and Zhi Gong and Junchi Ren and Linkun Yu and Si Shen and Fei Shen and Xiaoyu Du},
journal= {arXiv preprint arXiv:2511.15092},
year = {2025}
}