AIMay 31

MindClaw: Closed-Loop Embodied Mental-State Reasoning for Precision Intervention

arXiv:2606.0106368.7
AI Analysis

For embodied AI agents assisting humans, this work addresses the need for real-time, context-aware intervention rather than offline reasoning.

MindClaw introduces a closed-loop framework for embodied Theory of Mind reasoning that enables an agent to decide when to intervene with helpful actions, achieving best overall performance compared to VLM baselines.

Theory of Mind (ToM) enables an agent to reason about another actor's beliefs, goals, and intentions, which is essential for human-centered embodied assistance. Existing ToM benchmarks have advanced text and multimodal mental-state recognition, but they mostly evaluate offline question answering or final action prediction. They do not fully test whether an embodied agent can stay connected to a changing environment, update actor-specific beliefs, decide when reasoning is needed, and intervene only when help is useful. Building on MindPower, we extend robot-centric ToM reasoning to a real-time closed-loop setting and introduce MindClaw, a framework for embodied mental-state reasoning with precision intervention. MindClaw connects multi-source inputs, belief memory, an embodied cognitive trigger skill, mental reasoning, and action generation, allowing the agent to output helpful actions at the right time while remaining silent when intervention is unnecessary. Experiments show that direct VLM baselines struggle with task awareness and intervention calibration, while MindClaw achieves the best overall performance, demonstrating the importance of trigger-skill optimization for closed-loop embodied ToM assistance.

Foundations

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