ROAIDec 9, 2025

Mind to Hand: Purposeful Robotic Control via Embodied Reasoning

arXiv:2512.08580v23 citationsh-index: 1
Originality Highly original
AI Analysis

This addresses the problem of enabling robots to perform complex, reasoning-based tasks from natural instructions, representing a novel method rather than an incremental improvement.

The paper tackles the challenge of grounding AI reasoning capabilities in physical robotic action by introducing Lumo-1, a vision-language-action model that unifies reasoning with action through a three-stage pre-training pipeline. The result is significant performance improvements in embodied reasoning and real-world robotic tasks, with strong generalization to novel objects and environments.

Humans act with context and intention, with reasoning playing a central role. While internet-scale data has enabled broad reasoning capabilities in AI systems, grounding these abilities in physical action remains a major challenge. We introduce Lumo-1, a generalist vision-language-action (VLA) model that unifies robot reasoning ("mind") with robot action ("hand"). Our approach builds upon the general multi-modal reasoning capabilities of pre-trained vision-language models (VLMs), progressively extending them to embodied reasoning and action prediction, and ultimately towards structured reasoning and reasoning-action alignment. This results in a three-stage pre-training pipeline: (1) Continued VLM pre-training on curated vision-language data to enhance embodied reasoning skills such as planning, spatial understanding, and trajectory prediction; (2) Co-training on cross-embodiment robot data alongside vision-language data; and (3) Action training with reasoning process on trajectories collected on Astribot S1, a bimanual mobile manipulator with human-like dexterity and agility. Finally, we integrate reinforcement learning to further refine reasoning-action consistency and close the loop between semantic inference and motor control. Extensive experiments demonstrate that Lumo-1 achieves significant performance improvements in embodied vision-language reasoning, a critical component for generalist robotic control. Real-world evaluations further show that Lumo-1 surpasses strong baselines across a wide range of challenging robotic tasks, with strong generalization to novel objects and environments, excelling particularly in long-horizon tasks and responding to human-natural instructions that require reasoning over strategy, concepts and space.

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