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LHRS-Bot: Empowering Remote Sensing with VGI-Enhanced Large Multimodal Language Model

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The revolutionary capabilities of large language models (LLMs) have paved the way for multimodal large language models (MLLMs) and fostered diverse applications across various specialized domains. In the remote sensing (RS) field, however, the diverse geographical landscapes and varied objects in RS imagery are not adequately considered in recent MLLM endeavors. To bridge this gap, we construct a large-scale RS image-text dataset, LHRS-Align, and an informative RS-specific instruction dataset, LHRS-Instruct, leveraging the extensive volunteered geographic information (VGI) and globally available RS images. Building on this foundation, we introduce LHRS-Bot, an MLLM tailored for RS image understanding through a novel multi-level vision-language alignment strategy and a curriculum learning method. Additionally, we introduce LHRS-Bench, a benchmark for thoroughly evaluating MLLMs' abilities in RS image understanding. Comprehensive experiments demonstrate that LHRS-Bot exhibits a profound understanding of RS images and the ability to perform nuanced reasoning within the RS domain.

Dilxat Muhtar, Zhenshi Li, Feng Gu, Xueliang Zhang, Pengfeng Xiao• 2024

Related benchmarks

TaskDatasetResultRank
Scene ClassificationAID
Top-1 Acc91.26
69
Image ClassificationWHU-RS19
Accuracy93.17
60
Object DetectionDOTA
mAP17.1
49
Image ClassificationAID
Accuracy91.26
45
Geospatial ReasoningGeoMMBench (val)
Accuracy27
39
Scene ClassificationNWPU
Top-1 Acc83.94
38
Visual GroundingDIOR-RSVG
Accuracy@0.573.5
34
Remote Sensing Visual GroundingDIOR-RSVG official (test)
Acc@0.50.1759
30
Remote Sensing ClassificationSIRI-WHU
Top-1 Acc62.66
28
Object DetectionHRSC 2016
mAP24.4
23
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