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Bibliographic Details
Main Authors: Pallotta, Enrico, Azar, Sina Mokhtarzadeh, Doorenbos, Lars, Ozsoy, Serdar, Iqbal, Umar, Gall, Juergen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.18173
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Table of Contents:
  • Egocentric video generation with fine-grained control through body motion is a key requirement towards embodied AI agents that can simulate, predict, and plan actions. In this work, we propose EgoControl, a pose-controllable video diffusion model trained on egocentric data. We train a video prediction model to condition future frame generation on explicit 3D body pose sequences. To achieve precise motion control, we introduce a novel pose representation that captures both global camera dynamics and articulated body movements, and integrate it through a dedicated control mechanism within the diffusion process. Given a short sequence of observed frames and a sequence of target poses, EgoControl generates temporally coherent and visually realistic future frames that align with the provided pose control. Experimental results demonstrate that EgoControl produces high-quality, pose-consistent egocentric videos, paving the way toward controllable embodied video simulation and understanding.