Bridging Perception and Action: A Lightweight Multimodal Meta-Planner Framework for Robust Earth Observation Agents

📅 2026-05-06
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📝 Abstract
Autonomous Earth Observation (EO) agents are transitioning from passive perception to complex, multi-step task execution. However, current architectures that integrate planning and execution within a single model often struggle with combinatorial complexity and reasoning errors in dynamic EO scenarios. To resolve these challenges, we propose the Lightweight Multimodal Meta-Planner (LMMP) framework. LMMP incorporates a dual-awareness mechanism that grounds strategic plans in both multimodal image features and high-level task semantics. Crucially, we introduce a Meta Task Library to inject remote sensing expert knowledge directly into the workflow, which standardizes domain logic and ensures plans are physically feasible. We further implement a two-stage training pipeline, initializing the Meta-Planner via expert-distilled Supervised Fine-Tuning and refining it through Direct Preference Optimization based on execution feedback. Extensive experiments on a dataset derived from EarthBench and ThinkGeo demonstrate that LMMP significantly improves tool-calling accuracy and task success rates. Moreover, the framework exhibits strong ``plug-and-play'' versatility, consistently enhancing the performance of diverse executor backbones across previously unseen EO missions.
Problem

Research questions and friction points this paper is trying to address.

Autonomous Earth Observation
combinatorial complexity
reasoning errors
planning and execution
dynamic EO scenarios
Innovation

Methods, ideas, or system contributions that make the work stand out.

Lightweight Multimodal Meta-Planner
Dual-awareness Mechanism
Meta Task Library
Direct Preference Optimization
Autonomous Earth Observation
J
Jinghui Xu
State Key Laboratory of Space Information System and Integrated Application, Beijing 100095, China, Beijing Institute of Satellite Information Engineering, Beijing 100095, China, Shenzhen International Graduate School, Tsinghua University, Shenzhen, China
B
Boyi Shangguan
State Key Laboratory of Space Information System and Integrated Application, Beijing 100095, China, Beijing Institute of Satellite Information Engineering, Beijing 100095, China
M
Mengke Zhu
State Key Laboratory of Space Information System and Integrated Application, Beijing 100095, China, Beijing Institute of Satellite Information Engineering, Beijing 100095, China
Hao Liu
Hao Liu
University of Electronic Science and Technology of China
RISstacked intelligent metasurfaceDRL
J
Junhuan Jiang
Data Science Institute, University of Technology Sydney, Australia
G
Guangjun He
State Key Laboratory of Space Information System and Integrated Application, Beijing 100095, China, Beijing Institute of Satellite Information Engineering, Beijing 100095, China
Pengming Feng
Pengming Feng
Senior Engineer
Machine learningremote sensing
S
Shichao Jin
State Key Laboratory of Space Information System and Integrated Application, Beijing 100095, China, Beijing Institute of Satellite Information Engineering, Beijing 100095, China
B
Bin Liang
School of Electric and Information Engineering, Beijing Jiaotong University, Beijing 100044, China
Yongzhe Chang
Yongzhe Chang
UNSW/Data 61 PhD, Tsinghua postdoc.
machine learningreinforcement learning
Tiantian Zhang
Tiantian Zhang
Tsinghua University
Reinforcement LearningClusteringData Mining
Xueqian Wang
Xueqian Wang
Tsinghua University
Information FusionTarget DetectionRadar ImagingImage Processing