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Main Authors: Liao, Shuhao, Lv, Xuxin, Lew, Jeric, Zhang, Shizhe, Liang, Jingsong, Li, Peizhuo, Cao, Yuhong, Wu, Wenjun, Sartoretti, Guillaume
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.14681
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author Liao, Shuhao
Lv, Xuxin
Lew, Jeric
Zhang, Shizhe
Liang, Jingsong
Li, Peizhuo
Cao, Yuhong
Wu, Wenjun
Sartoretti, Guillaume
author_facet Liao, Shuhao
Lv, Xuxin
Lew, Jeric
Zhang, Shizhe
Liang, Jingsong
Li, Peizhuo
Cao, Yuhong
Wu, Wenjun
Sartoretti, Guillaume
contents This work advances autonomous robot exploration by integrating agent-level semantic reasoning with fast local control. We introduce FARE, a hierarchical autonomous exploration framework that integrates a large language model (LLM) for global reasoning with a reinforcement learning (RL) policy for local decision making. FARE follows a fast-slow thinking paradigm. The slow-thinking LLM module interprets a concise textual description of the unknown environment and synthesizes an agent-level exploration strategy, which is then grounded into a sequence of global waypoints through a topological graph. To further improve reasoning efficiency, this module employs a modularity-based pruning mechanism that reduces redundant graph structures. The fast-thinking RL module executes exploration by reacting to local observations while being guided by the LLM-generated global waypoints. The RL policy is additionally shaped by a reward term that encourages adherence to the global waypoints, enabling coherent and robust closed-loop behavior. This architecture decouples semantic reasoning from geometric decision, allowing each module to operate in its appropriate temporal and spatial scale. In challenging simulated environments, our results show that FARE achieves substantial improvements in exploration efficiency over state-of-the-art baselines. We further deploy FARE on hardware and validate it in complex, large scale $200m\times130m$ building environment.
format Preprint
id arxiv_https___arxiv_org_abs_2601_14681
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle FARE: Fast-Slow Agentic Robotic Exploration
Liao, Shuhao
Lv, Xuxin
Lew, Jeric
Zhang, Shizhe
Liang, Jingsong
Li, Peizhuo
Cao, Yuhong
Wu, Wenjun
Sartoretti, Guillaume
Robotics
This work advances autonomous robot exploration by integrating agent-level semantic reasoning with fast local control. We introduce FARE, a hierarchical autonomous exploration framework that integrates a large language model (LLM) for global reasoning with a reinforcement learning (RL) policy for local decision making. FARE follows a fast-slow thinking paradigm. The slow-thinking LLM module interprets a concise textual description of the unknown environment and synthesizes an agent-level exploration strategy, which is then grounded into a sequence of global waypoints through a topological graph. To further improve reasoning efficiency, this module employs a modularity-based pruning mechanism that reduces redundant graph structures. The fast-thinking RL module executes exploration by reacting to local observations while being guided by the LLM-generated global waypoints. The RL policy is additionally shaped by a reward term that encourages adherence to the global waypoints, enabling coherent and robust closed-loop behavior. This architecture decouples semantic reasoning from geometric decision, allowing each module to operate in its appropriate temporal and spatial scale. In challenging simulated environments, our results show that FARE achieves substantial improvements in exploration efficiency over state-of-the-art baselines. We further deploy FARE on hardware and validate it in complex, large scale $200m\times130m$ building environment.
title FARE: Fast-Slow Agentic Robotic Exploration
topic Robotics
url https://arxiv.org/abs/2601.14681