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Insect detection and nitrogen management for irrigated potatoes using remote sensing from small unmanned aircraft systems

机译:小型无人机系统遥感的灌溉土豆昆虫检测和氮气管理

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Remote sensing with small unmanned aircraft systems (sUAS) has potential applications in agriculture because low flight altitudes allow image acquisition at very high spatial resolution. We set up experiments at the Oregon State University Hermiston Agricultural Research and Extension Center with different platforms and sensors to assess advantages and disadvantages of sUAS for precision farming. In 2013, we conducted an experiment with 4 levels of N fertilizer, and followed the changes in the normalized difference vegetation index (NDVI) over time. In late June, there were no differences in chlorophyll content or leaf area index (LAI) among the 3 higher application rates. Consistent with the field data, only plots with the lowest rate of applied N were distinguished by low NDVI. In early August, N deficiency was determined by NDVI, but it was too late to mitigate losses in potato yield and quality. Populations of the Colorado potato beetle (CPB) may rapidly increase, devouring the shoots, thus early detection and treatment could prevent yield losses. In 2014, we conducted an experiment with 4 levels of CPB infestation. Over one day, damage from CPB in some plots increased from 0 to 19%. A visual ranking of damage was not correlated with the total number of CPB or treatment. Plot-scale vegetation indices were not correlated with damage, although the damaged area determined by object-based feature extraction was highly correlated. Methods based on object-based image analysis of sUAS data have potential for early detection and reduced cost.
机译:使用小型无人驾驶飞机系统(SUAS)的遥感具有农业潜在的应用,因为低飞行高度允许在非常高的空间分辨率下进行图像采集。我们在俄勒冈州立大学赫尔米斯顿农业研究和延伸中心设立了实验,包括不同的平台和传感器,以评估SUAS精密养殖的优缺点。 2013年,我们进行了4级肥料的实验,并随着时间的推移随后随之而来的归一化差异植被指数(NDVI)的变化。 6月下旬,叶绿素含量或叶面积指数(LAI)在较高的施用率中没有差异。与现场数据一致,仅通过低NDVI来区分具有施加率最低的曲线。 8月初,NDVI确定了N缺乏症,但为时已晚,以减轻马铃薯产量和质量的损失。科罗拉多土豆甲虫(CPB)的种群可能迅速增加,吞噬枝条,从而早期检测和治疗可以预防产量损失。 2014年,我们进行了4级CPB侵扰的实验。超过一天,某些地块中CPB的损坏从0增加到19%。损坏的视觉排名与CPB或治疗的总数无关。绘图级植被指数与损坏没有相关,尽管基于物体的特征提取确定的受损区域非常相关。基于基于对象的SUA数据图像分析的方法具有早期检测和降低成本的潜力。

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