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Egocentric World Model for Photorealistic Hand-Object Interaction Synthesis

arXiv cs.CV / 3/17/2026

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Key Points

  • EgoHOI introduces an egocentric human-object interaction world model that can simulate photorealistic, contact-consistent interactions from action signals alone, without relying on future object states.
  • The model uses physics-informed embeddings distilled from geometric and kinematic priors derived from 3D estimates to enforce physically valid dynamics during egocentric rollouts.
  • On the HOT3D dataset, EgoHOI achieves consistent gains over strong baselines, with ablation studies confirming the importance of the physics-informed design.
  • This work aims to provide a scalable data source for embodied AI by moving beyond conditional video generation toward true simulators driven by user actions.

Abstract

To serve as a scalable data source for embodied AI, world models should act as true simulators that infer interaction dynamics strictly from user actions, rather than mere conditional video generators relying on privileged future object states. In this context, egocentric Human-Object Interaction (HOI) world models are critical for predicting physically grounded first-person rollouts. However, building such models is profoundly challenging due to rapid head motions, severe occlusions, and high-DoF hand articulations that abruptly alter contact topologies. Consequently, existing approaches often circumvent these physics challenges by resorting to conditional video generation with access to known future object trajectories. We introduce EgoHOI, an egocentric HOI world model that breaks away from this shortcut to simulate photorealistic, contact-consistent interactions from action signals alone. To ensure physical accuracy without future-state inputs, EgoHOI distills geometric and kinematic priors from 3D estimates into physics-informed embeddings. These embeddings regularize the egocentric rollouts toward physically valid dynamics. Experiments on the HOT3D dataset demonstrate consistent gains over strong baselines, and ablations validate the effectiveness of our physics-informed design.