Remote Sensing ChatGPT: Solving Remote Sensing Tasks with ChatGPT and Visual Models
Haonan Guo, Xin Su, Chen Wu, Bo Du, Liangpei Zhang, Deren Li

TL;DR
This paper introduces Remote Sensing ChatGPT, an AI-powered agent that combines ChatGPT with visual models to interpret remote sensing images and perform complex tasks, making remote sensing analysis more accessible and automated.
Contribution
It presents a novel framework integrating ChatGPT with visual cues and remote sensing models to automate interpretation tasks, especially for non-experts.
Findings
Effective in handling diverse remote sensing tasks
Can be extended with more sophisticated models
Provides accessible remote sensing interpretation
Abstract
Recently, the flourishing large language models(LLM), especially ChatGPT, have shown exceptional performance in language understanding, reasoning, and interaction, attracting users and researchers from multiple fields and domains. Although LLMs have shown great capacity to perform human-like task accomplishment in natural language and natural image, their potential in handling remote sensing interpretation tasks has not yet been fully explored. Moreover, the lack of automation in remote sensing task planning hinders the accessibility of remote sensing interpretation techniques, especially to non-remote sensing experts from multiple research fields. To this end, we present Remote Sensing ChatGPT, an LLM-powered agent that utilizes ChatGPT to connect various AI-based remote sensing models to solve complicated interpretation tasks. More specifically, given a user request and a remote…
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Taxonomy
TopicsTopic Modeling · Multimodal Machine Learning Applications
