Understanding effects of atmospheric variables on spectral vegetation indices derived from satellite based time series of multispectral images

Aleem Khaliq, M. Musci, M. Chiaberge
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引用次数: 3

Abstract

In agricultural practices, it is very essential to monitor crops phenological pattern over the time to manage agronomic activities such as irrigation, weed control, pest control, fertilization, drainage system etc. From the past decade, due to free availability of data and large coverage area, satellite based remote sensing has been most popular and widely used among other techniques such as physical ground surveys, ground based sensors and aerial based remote sensing. Sentinel-2 is European based satellite equipped with the state of the art multispectral imager which offers high spectral resolution (13- spectral bands), high spatial resolution (up to 10m pixel-1) and good temporal resolution (6 to 10days). Considering these features, time series of multispectral images of sentinel-2 has been used to establish temporal pattern of spectral vegetation indices (i.e. NDVI, SAVI, EVI, RVI) of crops to monitor the phenological behavior over time. In addition, the influence of various atmospheric variables (such as temperature in the air and precipitation ) on the derived spectral vegetation indices has also been investigated in this work. Land use and coverage area frame survey (LUCAS-2015) has been used as ground reference data for this study. This study shows that by using sentinel-2, understanding relation between atmospheric conditions and crops phenological behavior can be useful to manage agricultural activities.
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了解大气变量对基于卫星多光谱影像时间序列的光谱植被指数的影响
在农业实践中,长期监测作物物候模式对灌溉、杂草防治、病虫害防治、施肥、排水系统等农业活动的管理至关重要。近十年来,由于数据的可获得性和覆盖面积大,卫星遥感已成为物理地面测量、地面传感器和航空遥感等技术中最受欢迎和广泛应用的技术。哨兵2号是欧洲的卫星,配备了最先进的多光谱成像仪,提供高光谱分辨率(13个光谱波段)、高空间分辨率(高达10米像素-1)和良好的时间分辨率(6至10天)。考虑到这些特点,利用sentinel-2多光谱影像的时间序列,建立作物植被光谱指数(NDVI、SAVI、EVI、RVI)的时间格局,监测作物的物候行为。此外,本文还研究了各种大气变量(如大气温度和降水)对反演的光谱植被指数的影响。土地利用和覆盖面积框架调查(LUCAS-2015)作为本研究的地面参考数据。这项研究表明,通过使用sentinel-2,了解大气条件与作物物候行为之间的关系可以帮助管理农业活动。
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