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simmediumhumanoidmetric · varies

MetaWorld: Skill Transfer and Composition in a Hierarchical World Model for Grounding High-Level Instructions

Description

Humanoid robot loco-manipulation remains constrained by the semantic-physical gap. Current methods face three limitations: Low sample efficiency in reinforcement learning, poor generalization in imitation learning, and physical inconsistency in VLMs. We propose MetaWorld, a hierarchical world model that integrates semantic planning and physical control via expert policy transfer. The framework decouples tasks into a VLM-driven semantic layer and a latent dynamics model operating in a compact sta

Source

http://arxiv.org/abs/2601.17507v1