Enhancing Remote Sensing Vision-Language Models Through MLLM and LLM-Based High-Quality Image-Text Dataset Generation
Yiguo He, Junjie Zhu, Yiying Li, Xiaoyu Zhang, Chunping Qiu, Jun Wang, Qiangjuan Huang, Ke Yang

TL;DR
This paper introduces a novel two-stage method for generating high-quality image captions for remote sensing images, creating a large dataset and fine-tuning models that outperform existing approaches in downstream tasks.
Contribution
The paper presents a new multi-perspective caption generation method and a large-scale dataset, significantly improving remote sensing vision-language model performance with less training data.
Findings
HQRS-CLIP surpasses previous SOTA in downstream tasks
RS-CoCa generates captions comparable to manual annotations
Proposed dataset and models are publicly released
Abstract
The application of Vision-language foundation models (VLFMs) to remote sensing (RS) imagery has garnered significant attention due to their superior capability in various downstream tasks. A key challenge lies in the scarcity of high-quality, large-scale, image-text paired training data. Recently, several works introduced extensive image-text datasets for RS and trained their VLFMs. However, due to the rudimentary methods used for generating captions, the quality of datasets is suboptimal, requiring larger volumes of training data, while only yielding modest performance improvements. In this paper, we propose a two-stage method named MpGI(Multi-Perspective Generation and Integration) for generating high-quality text captions for RS images. Firstly, we generate distinct and detailed descriptions from different perspectives using Rule-MLLM(Multimodal Large Language Model) Relay Generation…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Geographic Information Systems Studies
