Remote imagery to assess water stress variability within the orchard.

D. Gómez-Candón
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Abstract

Abstract This paper describes the current status of the measurement of the spatial variability of water status at tree scale in fruit crops through remote sensing, and discusses the limitations and opportunities of these technologies. Remotely sensed multispectral and thermal imagery can provide high precision water status maps in orchards through stress indices, which are a very useful tool for irrigation monitoring and deficit irrigation strategies especially in areas where water resources are limited. They are also a powerful tool for breeders working on water stress phenotyping. The data can be obtained from multispectral sensors onboard satellites, airplanes, or unmanned aerial vehicles (UAVs). The main limitations of remote sensing, when working at tree scale, can be summarized in the following two points: (i) the processing time required to obtain water stress maps when almost real-time information is required (i.e., for irrigation scheduling purposes) and technical knowledge to interpret them; and (ii) the large costs of the technology. Some possible solutions may include: offering a consulting service that provides technical support, agronomic knowledge and specific training courses, the development and implementation of uniform and cheap standards, and promoting new research on image upscaling methods (sharpening) that, through the fusion of images at different scales, are able to increase the resolution offered by satellites and allow access to data quickly and inexpensively as a complement to UAV. Despite numerous efforts, a powerful and flexible methodology for obtaining evapotranspiration and water stress maps remains the greatest challenge for this technology.
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评估果园内水分胁迫变化的遥感图像。
摘要本文介绍了果树树尺度水分状况空间变异性的遥感测量现状,并讨论了这些技术的局限性和机遇。遥感多光谱和热成像可以通过胁迫指数提供高精度的果园水分状况图,为水资源有限地区的灌溉监测和亏缺灌溉策略提供了非常有用的工具。它们也是研究水分胁迫表型的育种者的有力工具。数据可以从卫星、飞机或无人驾驶飞行器(uav)上的多光谱传感器获得。在树比尺上工作时,遥感的主要限制可以概括为以下两点:(i)在需要几乎实时的信息时(即为了灌溉调度的目的)获得水压力图所需的处理时间和解释这些图所需的技术知识;(二)该技术的巨大成本。一些可能的解决方案可能包括:提供咨询服务,提供技术支持、农艺知识和具体培训课程,制定和实施统一和廉价的标准,以及促进对图像升级方法(锐化)的新研究,通过融合不同尺度的图像,能够提高卫星提供的分辨率,并允许快速和廉价地获取数据,作为无人机的补充。尽管做出了许多努力,但获取蒸散发和水压力图的强大而灵活的方法仍然是该技术面临的最大挑战。
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来源期刊
CAB Reviews: Perspectives in Agriculture, Veterinary Science, Nutrition and Natural Resources
CAB Reviews: Perspectives in Agriculture, Veterinary Science, Nutrition and Natural Resources Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
2.00
自引率
0.00%
发文量
41
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