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通过整合雷达和光学图像绘制非洲大陆玉米分布图并进行分布研究。

Continental maize mapping and distribution in Africa by integrating radar and optical imagery.

作者信息

Abdelrahim Nasser A M, Jin Shuanggen

机构信息

Shanghai Astronomical Observatory, Chinese Academy of Sciences, Shanghai, 200030, China.

School of Astronomy and Space Science, University of Chinese Academy of Sciences, Beijing, 100049, China.

出版信息

Environ Monit Assess. 2025 Sep 1;197(9):1072. doi: 10.1007/s10661-025-14502-8.

Abstract

High-resolution, accurate mapping of crops is critical to enhance food security, resource efficiency, and policy effectiveness in agriculture across Africa, where maize remains a crucial staple crop. However, mosaic landscapes, common cloud cover, and scarce ground information have hindered large-area and field-level maize monitoring. This study presents a novel continent-wide framework for mapping maize cultivation across Africa for the 2023-2024 growing season at 10-m resolution using multi-temporal and multi-sensor remote sensing data. Our approach integrates Sentinel-1 SAR and Sentinel-2 optical imagery with the support of expert-validated pseudo-ground truth samples, region-based spectral-temporal signature analysis, and object-oriented segmentation through the Simple Non-Iterative Clustering (SNIC) algorithm. Maize classification was performed using a random forest model, which achieved an overall accuracy of 87.8% (kappa = 0.81), with regional performance of above 91% in Southern Africa. The harvested maize area in Africa was estimated to be 44.1 million hectares, with the largest share belonging to the West African region (31.4%). Model estimates showed strong alignment with national agricultural statistics (Pearson's r = 0.88 when compared to FAOSTAT-reported areas). The resulting maps capture spatial variability in yield, cropping intensity, and field size. This study delivers one of the most detailed, cross-validated maize maps across Africa and proposes a method suitable for operational crop monitoring and food system planning amid climate variability.

摘要

在非洲,高分辨率、精确的作物测绘对于加强粮食安全、资源利用效率以及农业政策有效性至关重要,在非洲,玉米仍然是一种关键的主食作物。然而,马赛克式景观、常见的云层覆盖以及稀缺的地面信息阻碍了大面积和田间尺度的玉米监测。本研究提出了一个全新的全非洲范围框架,用于利用多时间和多传感器遥感数据,在10米分辨率下绘制2023 - 2024生长季非洲各地的玉米种植情况。我们的方法将哨兵 - 1合成孔径雷达(SAR)和哨兵 - 2光学图像相结合,并借助专家验证的伪地面真值样本、基于区域的光谱 - 时间特征分析以及通过简单非迭代聚类(SNIC)算法进行的面向对象分割。使用随机森林模型进行玉米分类,总体准确率达到87.8%(卡帕系数κ = 0.81),在南部非洲区域性能高于91%。据估计,非洲收获的玉米面积为4410万公顷,其中最大份额属于西非地区(31.4%)。模型估计结果与国家农业统计数据高度吻合(与粮农组织统计数据库报告的面积相比,皮尔逊相关系数r = 0.88)。生成的地图捕捉了产量、种植强度和田间规模的空间变异性。本研究提供了非洲最详细、经过交叉验证的玉米地图之一,并提出了一种适合在气候多变情况下进行作物监测和粮食系统规划的方法。

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