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A review of embodied intelligence systems: a three-layer framework integrating multimodal perception, world modeling, and structured strategies

Yunwei Zhang, Jing Tian, Qiaochu Xiong

发表年份
2025
引用次数
3
访问权限
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摘要

Embodied intelligent systems build upon the foundations of behavioral robotics and classical cognitive architectures. They integrate multimodal perception, world modeling, and adaptive control to support closed-loop interaction in dynamic and uncertain environments. Recent breakthroughs in Multimodal Large Models (MLMs) and World Models (WMs) are profoundly transforming this field, providing the tools to achieve its long-envisioned capabilities of semantic understanding and robust generalization. Targeting the central challenge of how modern MLMs and WMs jointly advance embodied intelligence, this review provides a comprehensive overview across key dimensions, including multimodal perception, cross-modal alignment, adaptive decision-making, and Sim-to-Real transfer. Furthermore, we systematize these components into a three-stage theoretical framework termed "Dynamic Perception-Task Adaptation (DP-TA)". This framework integrates multimodal perception modeling, causally driven world state prediction, and semantically guided strategy optimization, establishing a comprehensive "perception-modeling-decision" loop. To support this, we introduce a "Feature-Conditioned Modal Alignment (F-CMA)" mechanism to enhance cross-modal fusion under task constraints.

关键词

Embodied cognitionAdaptation (eye)MultimodalityCognitive roboticsMultimodal interactionKey (lock)PerceptionTask (project management)Robotics

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