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Using Unmanned Aerial Systems (UAS) and Object-Based Image Analysis (OBIA) for Measuring Plant-Soil Feedback Effects on Crop Productivity

机译:使用无人机的空中系统(UAS)和基于对象的图像分析(OBIA)测量植物土反馈对作物生产率的影响

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摘要

Unmanned aerial system (UAS) acquired high-resolution optical imagery and object-based image analysis (OBIA) techniques have the potential to provide spatial crop productivity information. In general, plant-soil feedback (PSF) field studies are time-consuming and laborious which constrain the scale at which these studies can be performed. Development of non-destructive methodologies is needed to enable research under actual field conditions and at realistic spatial and temporal scales. In this study, the influence of six winter cover crop (WCC) treatments (monocultures Raphanus sativus, Lolium perenne, Trifolium repens, Vicia sativa and two species mixtures) on the productivity of succeeding endive (Cichorium endivia) summer crop was investigated by estimating crop volume. A three-dimensional surface and terrain model were photogrammetrically reconstructed from UAS imagery, acquired on 1 July 2015 in Wageningen, the Netherlands. Multi-resolution image segmentation (MIRS) and template matching algorithms were used in an integrated workflow to detect individual crops (accuracy = 99.8%) and delineate C. endivia crop covered area (accuracy = 85.4%). Mean crop area (R = 0.61) and crop volume (R = 0.71) estimates had strong positive correlations with in situ measured dry biomass. Productivity differences resulting from the WCC treatments were greater for estimated crop volume in comparison to in situ biomass, the legacy of Raphanus was most beneficial for estimated crop volume. The perennial ryegrass L. perenne treatment resulted in a significantly lower production of C. endivia. The developed workflow has potential for PSF studies as well as precision farming due to its flexibility and scalability. Our findings provide insight into the potential of UAS for determining crop productivity on a large scale.
机译:无人驾驶空中系统(UAS)获得的高分辨率光学图像和基于对象的图像分析(OBIA)技术具有提供空间作物生产力信息的潜力。通常,植物土反馈(PSF)现场研究是耗时和费力的,这限制了可以进行这些研究的规模。需要开发非破坏性方法,以便在实际场地和现实空间和时间尺度下实现研究。在这项研究中,通过估算作物,研究了六个冬季覆盖作物(WCC)治疗(单栽培Raphanus Sativus,Lolium Perenne,Trifolium,vicia sativa和两种种类的混合物)对后续莴苣(Cichorium endivia)夏季作物的生产率进行了研究体积。三维表面和地形模型从UAS图像摄影,从UAS图像重建,于2015年7月1日在荷兰Wageningen获得。多分辨率图像分割(MIRS)和模板匹配算法用于综合工作流程以检测单个作物(精度= 99.8%)和描绘C. endivia作物覆盖区域(精度= 85.4%)。平均作物面积(r = 0.61)和作物体积(r = 0.71)估计与原位测量的干生物质具有强烈的正相关性。与原位生物质相比,WCC治疗引起的生产率差异较大,估计的作物体积,Raphanus的遗产最有益于估计的作物体积。多年生黑麦草L. Perenne治疗导致C. endivia的产生显着降低。由于其灵活性和可扩展性,开发的工作流程具有PSF研究以及精密养殖。我们的调查结果提供了对大规模确定作物生产率的UAS的潜在洞察力。

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