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PersonaHOI: Effortlessly Improving Personalized Face with Human-Object Interaction Generation

PersonaHOI, a framework fusing StableDiffusion and personalized face diffusion models with HOI-oriented text inputs, generates realistic and scalable identity-consistent human-object interaction images.

Year
2025
Venue
arXiv 2025
Authors
4
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arxiv.org/abs/2501.05823ARXIV-DEFAULT
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Abstract

We introduce PersonaHOI, a training- and tuning-free framework that fuses a general StableDiffusion model with a personalized face diffusion (PFD) model to generate identity-consistent human-object interaction (HOI) images. While existing PFD models have advanced significantly, they often overemphasize facial features at the expense of full-body coherence, PersonaHOI introduces an additional StableDiffusion (SD) branch guided by HOI-oriented text inputs. By incorporating cross-attention constraints in the PFD branch and spatial merging at both latent and residual levels, PersonaHOI preserves personalized facial details while ensuring interactive non-facial regions. Experiments, validated by a novel interaction alignment metric, demonstrate the superior realism and scalability of PersonaHOI, establishing a new standard for practical personalized face with HOI generation. Our code will be available at https://github.com/JoyHuYY1412/PersonaHOI

Authors

4