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MetaWorld-X: Hierarchical World Modeling via VLM-Orchestrated Experts for Humanoid Loco-Manipulation

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Learning natural, stable, and compositionally generalizable whole-body control policies for humanoid robots performing simultaneous locomotion and manipulation (loco-manipulation) remains a fundamental challenge in robotics. Existing reinforcement learning approaches typically rely on a single monolithic policy to acquire multiple skills, which often leads to cross-skill gradient interference and motion pattern conflicts in high-degree-of-freedom systems. As a result, generated behaviors frequently exhibit unnatural movements, limited stability, and poor generalization to complex task compositions. To address these limitations, we propose MetaWorld-X, a hierarchical world model framework for humanoid control. Guided by a divide-and-conquer principle, our method decomposes complex control problems into a set of specialized expert policies (Specialized Expert Policies, SEP). Each expert is trained under human motion priors through imitation-constrained reinforcement learning, introducing biomechanically consistent inductive biases that ensure natural and physically plausible motion generation. Building upon this foundation, we further develop an Intelligent Routing Mechanism (IRM) supervised by a Vision-Language Model (VLM), enabling semantic-driven expert composition. The VLM-guided router dynamically integrates expert policies according to high-level task semantics, facilitating compositional generalization and adaptive execution in multi-stage loco-manipulation tasks.

Yutong Shen, Hangxu Liu, Penghui Liu, Jiashuo Luo, Yongkang Zhang, Rex Morvley, Chen Jiang, Jianwei Zhang, Lei Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Basketball manipulationHumanoid-bench
Return250
5
CarryHumanoid-bench
Maximum Return963.5
5
CarryHumanoid-bench
Success Rate90
5
Door manipulationHumanoid-bench
Return470
5
Package manipulationHumanoid-bench
Return-5.20e+3
5
Push manipulationHumanoid-bench
Return70
5
RunHumanoid-bench
Maximum Return2.06e+3
5
RunHumanoid-bench
Success Rate (Humanoid-bench Run)90
5
SitHumanoid-bench
Maximum Return862.2
5
SitHumanoid-bench
Success Rate (Sit)80
5
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