Language-Grounded Hierarchical Planning and Execution with Multi-Robot 3D Scene Graphs
Language-Grounded Hierarchical Planning and Execution with Multi-Robot 3D Scene Graphs
In this paper, we introduce a multi-robot system that integrates mapping, localization, and task and motion planning (TAMP) enabled by 3D scene graphs to execute complex instructions expressed in natural language. Our system builds a shared 3D scene graph incorporating an open-set object-based map, which is leveraged for multi-robot 3D scene graph fusion. This representation supports real-time, view-invariant relocalization (via the object-based map) and planning (via the 3D scene graph), allowing a team of robots to reason about their surroundings and execute complex tasks. Additionally, we introduce a planning approach that translates operator intent into Planning Domain Definition Language (PDDL) goals using a Large Language Model (LLM) by leveraging context from the shared 3D scene graph and robot capabilities. We provide an experimental assessment of the performance of our system on real-world tasks in large-scale, outdoor environments.
Jared Strader、Aaron Ray、Jacob Arkin、Mason B. Peterson、Yun Chang、Nathan Hughes、Christopher Bradley、Yi Xuan Jia、Carlos Nieto-Granda、Rajat Talak、Chuchu Fan、Luca Carlone、Jonathan P. How、Nicholas Roy
计算技术、计算机技术
Jared Strader,Aaron Ray,Jacob Arkin,Mason B. Peterson,Yun Chang,Nathan Hughes,Christopher Bradley,Yi Xuan Jia,Carlos Nieto-Granda,Rajat Talak,Chuchu Fan,Luca Carlone,Jonathan P. How,Nicholas Roy.Language-Grounded Hierarchical Planning and Execution with Multi-Robot 3D Scene Graphs[EB/OL].(2025-06-09)[2025-06-17].https://arxiv.org/abs/2506.07454.点此复制
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