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The use of Sentinel-1 and -2 data for monitoring maize production inRwanda

机译:使用Sentinel-1和-2数据进行卢旺达监测玉米生产

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Although Rwanda has accomplished significant improvements in food production in recent years, one fifth of its population remains food insecure. Agricultural information is currently collected through seasonal agricultural surveys, but more frequent and timely data collection is needed to adequately inform public and private decision-makers about the status of crops during the growing season. Sentinel-1 and -2 data are freely available with new images provided every 4-5 days. While analysis of thesemultispectral images has been used for agricultural applications, there are few applications to smallholder agriculture. Major challenges for satellite image analysis in the context of Rwanda include heavily clouded scenes and small plot sizes that are often intercropped. Sentinel-2 scenes corresponding to mid-season were analyzed, and spectral signatures of maize could be distinguished from those of other crops. Seasonal mean filtering was applied to Sentinel-1 scenes, and there was significant overlapin the spectral signatures across different types of vegetation. Random Forest models for classification of Sentinel scenes were developed using a training dataset that was constructed from high-resolution multispectral images acquired by unmanned aerial vehicles (UAVs) in several different locations in Rwanda and labeled as to the crop type by trained observers. The models were applied to satellite images of the whole country of Rwanda and validated using a test dataset from the UAV images. The Sentinel-2 model had the user's accuracy for maize classification of 75%, while the Sentinel-1 model overestimated the maize area resulting in a user's accuracy of <50%.
机译:尽管卢旺达在最近几年已经完成了在食品生产显著的改进,其五分之一的人口仍然是粮食不安全。农业信息化是目前通过农业季节性调查收集的,但需要更频繁和更及时的数据收集到充分告知公众和私人决策者对作物生长期间的状态。定点-1和-2的数据是免费提供的与设置每4-5天的新图片。虽然thesemultispectral图像的分析已用于农业应用,很少有应用到小规模农业。在卢旺达的环境卫星图像分析面临的主要挑战包括大量云的场景,并且通常间作小地块面积。对应于赛季中期哨兵-2场景进行分析,玉米的光谱特征可能与其他作物的区分开来。季节性均值滤波应用于哨兵-1的场面,和overlapin在不同类型的植被的光谱特征有显著。随机森林模型哨兵场景分类中使用从无人驾驶飞行器(UAV)在卢旺达几个不同的地点采集并标明其由训练有素的观察员作物类型的高分辨率多光谱影像构建的训练数据集开发。该模型应用于卢旺达全国的卫星图像,并使用测试数据集从无人机图像验证。哨兵2模型具有用户对75%玉米分类精度,而哨兵-1模型高估导致<50%的用户的精度玉米面积。

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