arXiv Open Access 2025

IRSAMap:Towards Large-Scale, High-Resolution Land Cover Map Vectorization

Yu Meng Ligao Deng Zhihao Xi Jiansheng Chen Jingbo Chen +7 lainnya
Lihat Sumber

Abstrak

With the enhancement of remote sensing image resolution and the rapid advancement of deep learning, land cover mapping is transitioning from pixel-level segmentation to object-based vector modeling. This shift demands more from deep learning models, requiring precise object boundaries and topological consistency. However, existing datasets face three main challenges: limited class annotations, small data scale, and lack of spatial structural information. To overcome these issues, we introduce IRSAMap, the first global remote sensing dataset for large-scale, high-resolution, multi-feature land cover vector mapping. IRSAMap offers four key advantages: 1) a comprehensive vector annotation system with over 1.8 million instances of 10 typical objects (e.g., buildings, roads, rivers), ensuring semantic and spatial accuracy; 2) an intelligent annotation workflow combining manual and AI-based methods to improve efficiency and consistency; 3) global coverage across 79 regions in six continents, totaling over 1,000 km; and 4) multi-task adaptability for tasks like pixel-level classification, building outline extraction, road centerline extraction, and panoramic segmentation. IRSAMap provides a standardized benchmark for the shift from pixel-based to object-based approaches, advancing geographic feature automation and collaborative modeling. It is valuable for global geographic information updates and digital twin construction. The dataset is publicly available at https://github.com/ucas-dlg/IRSAMap

Topik & Kata Kunci

Penulis (12)

Y

Yu Meng

L

Ligao Deng

Z

Zhihao Xi

J

Jiansheng Chen

J

Jingbo Chen

A

Anzhi Yue

D

Diyou Liu

K

Kai Li

C

Chenhao Wang

K

Kaiyu Li

Y

Yupeng Deng

X

Xian Sun

Format Sitasi

Meng, Y., Deng, L., Xi, Z., Chen, J., Chen, J., Yue, A. et al. (2025). IRSAMap:Towards Large-Scale, High-Resolution Land Cover Map Vectorization. https://arxiv.org/abs/2508.16272

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Tahun Terbit
2025
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en
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arXiv
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Open Access ✓