HarmoWAM: Harmonizing Generalizable and Precise Manipulation via Adaptive World Action Models
Qiuxuan Feng, Jiale Yu, Jiaming Liu, Yueru Jia, Zhuangzhe Wu + 6 more
TLDR
HarmoWAM unifies predictive and reactive control in robot manipulation, achieving both generalizable transit and precise interaction through adaptive expert coordination.
Key contributions
- Unifies predictive and reactive control via a world model for generalizable and precise manipulation.
- Employs two experts: a predictive expert for iterative action generation and a reactive expert for direct action inference.
- Introduces a Process-Adaptive Gating Mechanism to dynamically switch between the two action experts.
- Achieves significant zero-shot generalization, outperforming prior state-of-the-art VLA and WAM models.
Why it matters
This paper addresses a fundamental trade-off in robot control, enabling systems to perform both broad, generalizable movements and fine-grained, precise interactions. HarmoWAM significantly advances robot manipulation capabilities, especially in novel, unseen environments. Its adaptive approach offers a robust solution for complex real-world tasks.
Original Abstract
World Action Models (WAMs) have emerged as a promising paradigm for robot control by modeling physical dynamics. Current WAMs generally follow two paradigms: the "Imagine-then-Execute" approach, which uses video prediction to infer actions via inverse dynamics, and the "Joint Modeling" approach, which jointly models actions and video representations. Based on systematic experiments, we observe a fundamental trade-off between these paradigms: the former explicitly leverages world models for generalizable transit but lacks interaction precision, whereas the latter enables fine-grained, temporally coherent action generation but is constrained by the exploration space of the training distribution. Motivated by these findings, we propose HarmoWAM, an end-to-end WAM that fully leverages a world model to unify predictive and reactive control, enabling both generalizable transit and precise manipulation. Specifically, the world model provides spatio-temporal physical priors that condition two complementary action experts: a predictive expert that leverages latent dynamics for iterative action generation, and a reactive expert that directly infers actions from predicted visual evolution. To enable adaptive coordination, a Process-Adaptive Gating Mechanism is proposed to automatically determine the timing and location of switching between them. This allows the world model to drive the reactive expert to expand the exploration space and the predictive expert to perform precise interactions across different stages of a task. For evaluation, we construct three training-unseen test environments across six real-world robotic tasks, covering variations in background, position, and object semantics. Notably, HarmoWAM achieves strong zero-shot generalization across these scenarios, significantly outperforming prior state-of-the-art VLA models and WAMs by margins of 33% and 29%, respectively.
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