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InterDiff: Generating 3D Human-Object Interactions with Physics-Informed Diffusion

A framework called InterDiff uses a diffusion model for encoding human-object interactions and a physics-informed predictor for correcting them, enabling realistic long-term 3D HOI predictions.

Year
2023
Venue
ICCV 2023 1
Authors
4
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arxiv.org/abs/2308.16905ARXIV-DEFAULT
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Abstract

This paper addresses a novel task of anticipating 3D human-object interactions (HOIs). Most existing research on HOI synthesis lacks comprehensive whole-body interactions with dynamic objects, e.g., often limited to manipulating small or static objects. Our task is significantly more challenging, as it requires modeling dynamic objects with various shapes, capturing whole-body motion, and ensuring physically valid interactions. To this end, we propose InterDiff, a framework comprising two key steps: (i) interaction diffusion, where we leverage a diffusion model to encode the distribution of future human-object interactions; (ii) interaction correction, where we introduce a physics-informed predictor to correct denoised HOIs in a diffusion step. Our key insight is to inject prior knowledge that the interactions under reference with respect to contact points follow a simple pattern and are easily predictable. Experiments on multiple human-object interaction datasets demonstrate the effectiveness of our method for this task, capable of producing realistic, vivid, and remarkably long-term 3D HOI predictions.

Authors

4