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Remote, aerial phenotyping of maize traits with a mobile multi-sensor approach

机译:利用移动多传感器方法对玉米性状进行远程空中表型分析

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Background Field-based high throughput phenotyping is a bottleneck for crop breeding research. We present a novel method for repeated remote phenotyping of maize genotypes using the Zeppelin NT aircraft as an experimental sensor platform. The system has the advantage of a low altitude and cruising speed compared to many drones or airplanes, thus enhancing image resolution while reducing blurring effects. Additionally there was no restriction in sensor weight. Using the platform, red, green and blue colour space (RGB), normalized difference vegetation index (NDVI) and thermal images were acquired throughout the growing season and compared with traits measured on the ground. Ground control points were used to co-register the images and to overlay them with a plot map. Results NDVI images were better suited than RGB images to segment plants from soil background leading to two separate traits: the canopy cover (CC) and its NDVI value (NDVIPlant). Remotely sensed CC correlated well with plant density, early vigour, leaf size, and radiation interception. NDVIPlant was less well related to ground truth data. However, it related well to the vigour rating, leaf area index (LAI) and leaf biomass around flowering and to very late senescence rating. Unexpectedly, NDVIPlant correlated negatively with chlorophyll meter measurements. This could be explained, at least partially, by methodical differences between the used devices and effects imposed by the population structure. Thermal images revealed information about the combination of radiation interception, early vigour, biomass, plant height and LAI. Based on repeatability values, we consider two row plots as best choice to balance between precision and available field space. However, for thermography, more than two rows improve the precision. Conclusions We made important steps towards automated processing of remotely sensed data, and demonstrated the value of several procedural steps, facilitating the application in plant genetics and breeding. Important developments are: the ability to monitor throughout the season, robust image segmentation and the identification of individual plots in images from different sensor types at different dates. Remaining bottlenecks are: sufficient ground resolution, particularly for thermal imaging, as well as a deeper understanding of the relatedness of remotely sensed data and basic crop characteristics.
机译:背景技术基于田间的高通量表型分析是作物育种研究的瓶颈。我们提出了一种新的方法,用于使用Zeppelin NT飞机作为实验传感器平台对玉米基因型进行重复远程表型化。与许多无人机或飞机相比,该系统具有低海拔和巡航速度的优势,从而提高了图像分辨率,同时减少了模糊效果。另外,传感器重量没有限制。使用该平台,在整个生长季节中获取红色,绿色和蓝色空间(RGB),归一化差异植被指数(NDVI)和热图像,并将其与地面上测得的特征进行比较。地面控制点用于对图像进行配准并将其与绘图图叠加。结果NDVI图像比RGB图像更适合从土壤背景中分割植物,从而导致两个独立的特征:冠层覆盖(CC)和NDVI值(NDVIPlant)。遥感CC与植物密度,早期活力,叶片大小和辐射截获密切相关。 NDVIPlant与地面真实数据的相关性较差。然而,它与活力等级,叶面积指数(LAI)和开花前后的叶片生物量以及非常晚的衰老等级密切相关。出乎意料的是,NDVIPlant与叶绿素仪测量值呈负相关。这可以至少部分地通过所使用的设备之间的方法上的差异和人口结构所施加的影响来解释。热图像揭示了有关辐射拦截,早期活力,生物量,植物高度和LAI的组合信息。根据重复性值,我们认为两行图是在精度和可用字段空间之间取得平衡的最佳选择。但是,对于热成像,多于两行可提高精度。结论我们为自动化处理遥感数据迈出了重要的一步,并展示了一些程序步骤的价值,从而促进了在植物遗传学和育种中的应用。重要的发展是:能够在整个季节进行监视,强大的图像分割能力以及在不同日期从不同传感器类型识别图像中单个图的能力。仍然存在的瓶颈是:足够的地面分辨率,尤其是对于热成像,以及对遥感数据与基本农作物特性的相关性的更深入了解。

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