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Mapping Cropland in Smallholder-Dominated Savannas: Integrating Remote Sensing Techniques and Probabilistic Modeling

机译:在以小农户为主的稀树草原上绘制农田图:整合遥感技术和概率模型

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Traditional smallholder farming systems dominate the savanna range countries of sub-Saharan Africa and provide the foundation for the region’s food security. Despite continued expansion of smallholder farming into the surrounding savanna landscapes, food insecurity in the region persists. Central to the monitoring of food security in these countries, and to understanding the processes behind it, are reliable, high-quality datasets of cultivated land. Remote sensing has been frequently used for this purpose but distinguishing crops under certain stages of growth from savanna woodlands has remained a major challenge. Yet, crop production in dryland ecosystems is most vulnerable to seasonal climate variability, amplifying the need for high quality products showing the distribution and extent of cropland. The key objective in this analysis is the development of a classification protocol for African savanna landscapes, emphasizing the delineation of cropland. We integrate remote sensing techniques with probabilistic modeling into an innovative workflow. We present summary results for this methodology applied to a land cover classification of Zambia’s Southern Province. Five primary land cover categories are classified for the study area, producing an overall map accuracy of 88.18%. Omission error within the cropland class is 12.11% and commission error 9.76%.
机译:传统的小农耕作制度主导着撒哈拉以南非洲的热带草原国家,并为该地区的粮食安全奠定了基础。尽管小农耕作继续扩大到周围的热带稀树草原景观,但该地区的粮食不安全状况依然存在。对这些国家的粮食安全进行监测并了解其背后的过程的核心是可靠的高质量耕地数据集。遥感经常被用于此目的,但是将处于某些生长阶段的农作物与稀树草原林地区分开来仍然是一个重大挑战。然而,干旱地区生态系统中的农作物生产最容易受到季节性气候变化的影响,从而扩大了对显示农作物分布和范围的高质量产品的需求。该分析的主要目标是制定非洲热带稀树草原景观分类协议,强调农田的划分。我们将遥感技术与概率模型集成到创新的工作流程中。我们提供了适用于赞比亚南部省份土地覆盖分类的这种方法的摘要结果。研究区域分为五个主要的土地覆盖类别,总的地图准确性为88.18%。农田类别内的遗漏误差为12.11%,佣金误差为9.76%。

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