OpenEarthAgent:一个用于工具增强地理空间智能体的统一框架 / OpenEarthAgent: A Unified Framework for Tool-Augmented Geospatial Agents
1️⃣ 一句话总结
这篇论文提出了一个名为OpenEarthAgent的统一框架,通过训练模型结合卫星图像、自然语言查询和多步骤推理,使AI能够像专家一样理解和分析复杂的地理空间问题,比如城市发展、环境监测和灾害评估。
Recent progress in multimodal reasoning has enabled agents that can interpret imagery, connect it with language, and perform structured analytical tasks. Extending such capabilities to the remote sensing domain remains challenging, as models must reason over spatial scale, geographic structures, and multispectral indices while maintaining coherent multi-step logic. To bridge this gap, OpenEarthAgent introduces a unified framework for developing tool-augmented geospatial agents trained on satellite imagery, natural-language queries, and detailed reasoning traces. The training pipeline relies on supervised fine-tuning over structured reasoning trajectories, aligning the model with verified multistep tool interactions across diverse analytical contexts. The accompanying corpus comprises 14,538 training and 1,169 evaluation instances, with more than 100K reasoning steps in the training split and over 7K reasoning steps in the evaluation split. It spans urban, environmental, disaster, and infrastructure domains, and incorporates GIS-based operations alongside index analyses such as NDVI, NBR, and NDBI. Grounded in explicit reasoning traces, the learned agent demonstrates structured reasoning, stable spatial understanding, and interpretable behaviour through tool-driven geospatial interactions across diverse conditions. We report consistent improvements over a strong baseline and competitive performance relative to recent open and closed-source models.
OpenEarthAgent:一个用于工具增强地理空间智能体的统一框架 / OpenEarthAgent: A Unified Framework for Tool-Augmented Geospatial Agents
这篇论文提出了一个名为OpenEarthAgent的统一框架,通过训练模型结合卫星图像、自然语言查询和多步骤推理,使AI能够像专家一样理解和分析复杂的地理空间问题,比如城市发展、环境监测和灾害评估。
源自 arXiv: 2602.17665