EarthMarker: A Visual Prompting Multi-modal Large Language Model for Remote Sensing
Wei Zhang, Miaoxin Cai, Tong Zhang, Jun Li, Yin Zhuang, and Xuerui Mao

TL;DR
EarthMarker is a novel multi-modal large language model designed for remote sensing that uses visual prompts to interpret complex imagery, bridging the domain gap between natural scenes and remote sensing data.
Contribution
It introduces a visual prompting approach for RS imagery interpretation and a cross-domain learning strategy to transfer knowledge from natural scenes.
Findings
Effective interpretation of RS imagery at multiple levels
Successful transfer of natural scene knowledge to RS domain
Construction of a multi-modal RS dataset RSVP
Abstract
Recent advances in prompt learning have allowed users to interact with artificial intelligence (AI) tools in multi-turn dialogue, enabling an interactive understanding of images. However, it is difficult and inefficient to deliver information in complicated remote sensing (RS) scenarios using plain language instructions alone, which would severely hinder deep comprehension of the latent content in imagery. Besides, existing prompting strategies in natural scenes are hard to apply to interpret the RS data due to significant domain differences. To address these challenges, the first visual prompting-based multi-modal large language model (MLLM) named EarthMarker is proposed in the RS domain. EarthMarker is capable of interpreting RS imagery at the image, region, and point levels by levering visual prompts (i.e., boxes and points). Specifically, a shared visual encoding method is developed…
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Taxonomy
TopicsGeographic Information Systems Studies · Multimodal Machine Learning Applications · Text and Document Classification Technologies
MethodsFocus
