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Putting People in Their Place: Affordance-Aware Human Insertion into Scenes

27 April 2023
Sumith Kulal
Tim Brooks
A. Aiken
Jiajun Wu
Jimei Yang
Jingwan Lu
Alexei A. Efros
Krishna Kumar Singh
    DiffM
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Abstract

We study the problem of inferring scene affordances by presenting a method for realistically inserting people into scenes. Given a scene image with a marked region and an image of a person, we insert the person into the scene while respecting the scene affordances. Our model can infer the set of realistic poses given the scene context, re-pose the reference person, and harmonize the composition. We set up the task in a self-supervised fashion by learning to re-pose humans in video clips. We train a large-scale diffusion model on a dataset of 2.4M video clips that produces diverse plausible poses while respecting the scene context. Given the learned human-scene composition, our model can also hallucinate realistic people and scenes when prompted without conditioning and also enables interactive editing. A quantitative evaluation shows that our method synthesizes more realistic human appearance and more natural human-scene interactions than prior work.

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