作者
Jiang, Hao,Ku, Mengjun,Zhou, Xia
摘要
Accurate and detailed cropland maps are essential for food security, yet existing products for China exhibit substantial discrepancies. This study presents CropLayer, a 2 m resolution cropland map of China for 2020, developed from Mapbox and Google satellite imagery. The framework comprises three key stages: (1) image quality assessment (IQA) using a ResNet model to compensate for missing acquisition metadata; (2) cropland extraction via an active learning strategy guided by a Mask2Former segmentation model and XGBoost-based semantic correctness evaluation; and (3) integration of Mapbox and Google results through an XGBoost model informed by four feature groups: Geography, IQA, Regional Property, and Consistency. A three-level validation scheme (pixel, block, and region) ensures robust and interpretable accuracy across spatial scales. CropLayer achieves a pixel-level accuracy of 88.73 %, a block-level semantic correctness of 96.5 %, and provincial-level consistency, with 30 out of 32 provinces showing area estimates within ±10 % of official statistics. In comparison, only 1–9 provinces meet this criterion across eight existing datasets. CropLayer provides a reliable, high-resolution baseline for agricultural structure analysis, yield estimation, and land use planning in China. This dataset is formally linked to an article published at Earth System Science Data (ESSD):How to cite. Jiang, H., Ku, M., Zhou, X., Zheng, Q., Liu, Y., Xu, J., Li, D., Wang, C., Wei, J., Zhang, J., Chen, S., and Huang, J.: CropLayer: a 2 m resolution cropland map of China for 2020 from Mapbox and Google satellite imagery, Earth Syst. Sci. Data, 17, 6703–6729, https://doi.org/10.5194/essd-17-6703-2025, 2025 Access the full paper via: DOI: https://doi.org/10.5194/essd-17-6703-2025 Link: https://essd.copernicus.org/articles/17/6703/2025/