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Mapping annual 10-m soybean cropland with spatiotemporal sample migration.

Hongchi ZhangZihang LouDailiang PengBing ZhangWang LuoJianxi HuangXiaoyang ZhangLe YuFumin WangLinsheng HuangGuohua LiuShuang GaoJinkang HuSonglin YangEnhui Cheng
Published in: Scientific data (2024)
China, as the world's biggest soybean importer and fourth-largest producer, needs accurate mapping of its planting areas for global food supply stability. The challenge lies in gathering and collating ground survey data for different crops. We proposed a spatiotemporal migration method leveraging vegetation indices' temporal characteristics. This method uses a feature space of six integrals from the crops' phenological curves and a concavity-convexity index to distinguish soybean and non-soybean samples in cropland. Using a limited number of actual samples and our method, we extracted features from optical time-series images throughout the soybean growing season. The cloud and rain-affected data were supplemented with SAR data. We then used the random forest algorithm for classification. Consequently, we developed the 10-meter resolution ChinaSoybean10 maps for the ten primary soybean-producing provinces from 2019 to 2022. The map showed an overall accuracy of about 93%, aligning significantly with the statistical yearbook data, confirming its reliability. This research aids soybean growth monitoring, yield estimation, strategy development, resource management, and food scarcity mitigation, and promotes sustainable agriculture.
Keyphrases
  • climate change
  • deep learning
  • electronic health record
  • high resolution
  • machine learning
  • big data
  • data analysis
  • optical coherence tomography
  • artificial intelligence
  • mass spectrometry
  • neural network