RemoteAgent: Bridging Vague Human Intents and Earth Observation with RL-based Agentic MLLMs
Liang Yao, Shengxiang Xu, Fan Liu, Chuanyi Zhang, Bishun Yao, Rui Min, Yongjun Li, Chaoqian Ouyang, Shimin Di, Min-Ling Zhang

TL;DR
RemoteAgent is a novel framework that enables large language models to interpret vague human queries and efficiently perform earth observation tasks by combining internal reasoning with selective tool use.
Contribution
It introduces RemoteAgent, a new agentic system that aligns MLLMs with earth observation tasks using a specialized dataset and reinforcement fine-tuning for improved intent understanding.
Findings
RemoteAgent achieves robust intent recognition.
It delivers competitive performance across diverse EO tasks.
The framework efficiently combines internal reasoning with tool orchestration.
Abstract
Earth Observation (EO) systems are essentially designed to support domain experts who often express their requirements through vague natural language rather than precise, machine-friendly instructions. Depending on the specific application scenario, these vague queries can demand vastly different levels of visual precision. Consequently, a practical EO AI system must bridge the gap between ambiguous human queries and the appropriate multi-granularity visual analysis tasks, ranging from holistic image interpretation to fine-grained pixel-wise predictions. While Multi-modal Large Language Models (MLLMs) demonstrate strong semantic understanding, their text-based output format is inherently ill-suited for dense, precision-critical spatial predictions. Existing agentic frameworks address this limitation by delegating tasks to external tools, but indiscriminate tool invocation is…
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