Mapping upland crop–rice cropping systems for targeted sustainable intensification in South China

Bingwen Qiu, Linhai Yu, Peng Yang, Wenbin Wu, Jianfeng Chen, Xiaolin Zhu, Mingjie Duan
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Abstract

Upland crop-rice cropping systems (UCR) facilitate sustainable agricultural intensification. Accurate UCR cultivation mapping is needed to ensure food security, sustainable water management, and rural revitalization. However, datasets describing cropping systems are limited in spatial coverage and crop types. Mapping UCR is more challenging than crop identification and most existing approaches rely heavily on accurate phenology calendars and representative training samples, which limits its applications over large regions. We describe a novel algorithm (RRSS) for automatic mapping of upland crop–rice cropping systems using Sentinel-1 Synthetic Aperture Radar (SAR) and Sentinel-2 Multispectral Instrument (MSI) data. One indicator, the VV backscatter range, was proposed to discriminate UCR and another two indicators were designed by coupling greenness and pigment indices to further discriminate tobacco or oilseed UCR. The RRSS algorithm was applied to South China characterized by complex smallholder rice cropping systems and diverse topographic conditions. This study developed 10-m UCR maps of a major rice bowl in South China, the Xiang-Gan-Min (XGM) region. The performance of the RRSS algorithm was validated based on 5197 ground-truth reference sites, with an overall accuracy of 91.92%. There were 7348 km areas of UCR, roughly one-half of them located in plains. The UCR was represented mainly by oilseed-UCR and tobacco-UCR, which contributed respectively 69% and 15% of UCR area. UCR patterns accounted for only one-tenth of rice production, which can be tripled by intensification from single rice cropping. Application to complex and fragmented subtropical regions suggested the spatiotemporal robustness of the RRSS algorithm, which could be further applied to generate 10-m UCR datasets for application at national or global scales.
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绘制高地作物-水稻种植系统图,促进华南地区有针对性的可持续集约化发展
高地作物-水稻种植系统(UCR)有助于实现可持续的农业集约化。要确保粮食安全、可持续水资源管理和乡村振兴,就必须绘制准确的高地作物-水稻种植系统图。然而,描述种植系统的数据集在空间覆盖范围和作物类型方面都很有限。绘制 UCR 比作物识别更具挑战性,而且大多数现有方法都严重依赖精确的物候日历和具有代表性的训练样本,这限制了其在大区域的应用。我们介绍了一种利用哨兵-1 合成孔径雷达 (SAR) 和哨兵-2 多光谱仪器 (MSI) 数据自动绘制高地作物-水稻种植系统图的新型算法(RRSS)。提出了一个指标,即 VV 后向散射范围,用于区分 UCR,并通过耦合绿度和色素指数设计了另外两个指标,以进一步区分烟草或油菜 UCR。RRSS 算法应用于华南地区,该地区小农水稻种植系统复杂,地形条件多样。这项研究绘制了华南主要水稻种植区--湘赣闽(XGM)地区的 10 米 UCR 地图。基于 5197 个地面实况参考点验证了 RRSS 算法的性能,总体准确率为 91.92%。UCR 面积为 7348 公里,其中约二分之一位于平原地区。UCR 主要以油菜 UCR 和烟草 UCR 为代表,分别占 UCR 面积的 69% 和 15%。UCR 模式仅占水稻产量的十分之一,通过强化单一水稻种植,可将水稻产量提高两倍。对复杂而分散的亚热带地区的应用表明,RRSS 算法在时空上具有稳健性,可进一步应用于生成 10 米 UCR 数据集,以应用于国家或全球尺度。
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