Research 10月07日 16:29
ThinkAct:视觉-语言-行动推理框架
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本文提出ThinkAct,一个通过强化视觉潜在规划桥接高级推理与低级行动执行的双系统框架,用于解决视觉-语言-行动推理任务。

ThinkAct: Vision-Language-Action Reasoning via Reinforced Visual Latent Planning

Vision-language-action (VLA) reasoning tasks require agents to interpret multimodal instructions, perform long-horizon planning, and act adaptively in dynamic environments. Existing approaches typically train VLA models in an end-to-end fashion, directly mapping inputs to actions without explicit reasoning, which hinders their ability to plan over multiple steps or adapt to complex task variations. In this paper, we propose ThinkAct, a dual-system framework that bridges high-level reasoning with low-level action execution via reinforced visual latent planning. ThinkAct trains a multimodal LLM to generate embodied reasoning plans guided by reinforcing action-aligned visual rewards based on goal completion and trajectory consistency. These reasoning plans are compressed into a visual plan latent that conditions a downstream action model for robust action execution on target environments. Extensive experiments on embodied reasoning and robot manipulation benchmarks demonstrate that ThinkAct enables few-shot adaptation, long-horizon planning, and self-correction behaviors in complex embodied AI tasks.

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视觉-语言-行动推理 强化学习 视觉潜在规划 多模态学习
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