AI RESEARCH

World-Ego Modeling for Long-Horizon Evolution in Hybrid Embodied Tasks

arXiv CS.AI

ArXi:2605.19957v1 Announce Type: cross World models are widely explored in embodied intelligence, yet they typically predict distinct evolutions of the world and the ego within a single stream, where the world captures persistent instruction-agnostic scene regularities and the ego captures robot-centric instruction-conditioned dynamics. This world-ego entanglement leads to a degradation in long-horizon embodied scenarios, particularly in hybrid tasks with interleaved navigation and manipulation behaviors. In this paper, we.