HiCRISP: A Hierarchical Closed-Loop Robotic Intelligent Self-Correction Planner

Ming, Chenlin, Lin, Jiacheng, Fong, Pangkit, Wang, Han, Duan, Xiaoming, He, Jianping

arXiv.org Artificial Intelligence 

Abstract-- The integration of Large Language Models (LLMs) into robotics has revolutionized human-robot interactions and autonomous task planning. However, these systems are often unable to self-correct during the task execution, which hinders their adaptability in dynamic real-world environments. To address this issue, we present a Hierarchical Closed-loop Robotic Intelligent Self-correction Planner (HiCRISP), an innovative framework that enables robots to correct errors within individual steps during the task execution. HiCRISP actively monitors and adapts the task execution process, addressing both high-level planning and low-level action errors. This enhancement has the potential to propel smart [4], and logical reasoning [5], [6].

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