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Automatic assessment of agro-environmental indicators from remotely sensed images of tree orchards and its evaluation using olive plantations

机译:从果园遥感图像中自动评估农业环境指标,并使用橄榄种植园进行评估

摘要

Key agronomic and environmental characteristics of tree orchards can be automatically assessed from remote sensing images by a computer program named Clustering Assessment® (CLUAS). The aim of this paper is to describe the CLUAS software development and the information generated by CLUAS for selected olive orchards and its validation with ground-truth data. CLUAS works as an add-on of ENVI®, and operates integrating the digital values (DV) of the neighbouring pixels within a defined range of DV. In the orchards plots trees, other vegetation cover and bare soil were the land uses considered and the range of digital values (BDV) which best define each of them determined. CLUAS provides parameters of each tree, such as the geometric centre, the number of pixels or area, and the integrated digital values or relative potential yield. CLUAS also characterizes key parameters of tree groves, such as the total area and the number, area and the relative potential productivity of the whole trees; and similarly for the other land uses such as vegetation cover and bare soil. Remote images with spatial resolution from 0.25 to 1.5 m were suitable for olive grove characterization. CLUAS can contribute to the site-specific management of tree groves, providing quantitative information on each tree, small areas of an orchard, or whole orchards. Ground-truth data taken in an olive orchard of about 2 ha at the Experimental Station of Cabra (Cordoba, Spain) in 2004 and 2005 and remote images of the same zone were studied for validation purposes. The wavebands green, NIR (near-infrared), panchromatic and the vegetation indexes normalized difference vegetation index (NDVI) and ratio vegetation index (RVI) were selected for olive grove image assessment by CLUAS. The average size of olive trees was similar regardless of the waveband or vegetation index used, varying from about 23.5-26.0 m2, and significantly interrelated between each other at 99%. Olive tree area and potential yield estimated by remote sensing were also highly related to the olive tree area estimated on the ground, with significant correlation coefficients at 99% varying from 0.62 to 0.82 and 0.52 to 0.74 in 2004 and 2005, respectively. On the other hand, olive tree size and potential yield estimated in green, panchromatic, NDVI and RVI images were significantly related to the ground-truth yield with correlation coefficients of around 0.50 in 2004, an >on> year, and of 0.30-0.40 in 2005, an >off> year, respectively. © 2007 Elsevier B.V. All rights reserved.
机译:可以通过名为ClusteringAssessment®(CLUAS)的计算机程序根据遥感图像自动评估果园的关键农艺和环境特征。本文的目的是描述CLUAS软件的开发以及由CLUAS为选定的橄榄园生成的信息,以及使用地面真实数据进行的验证。 CLUAS是ENVI®的附加组件,可对定义的DV范围内的相邻像素的数字值(DV)进行积分。在果园中,树木,其他植被覆盖物和裸露的土壤都是考虑的土地用途,并且确定了最能定义它们的数字值(BDV)的范围。 CLUAS提供每棵树的参数,例如几何中心,像素数或面积数以及集成的数字值或相对电位产量。 CLUAS还描述了树丛的关键参数,例如总面积以及整棵树的数量,面积和相对潜在生产力;同样适用于其他土地用途,例如植被覆盖和裸露的土壤。具有0.25至1.5 m的空间分辨率的远程图像适用于橄榄树的表征。 CLUAS可以为树丛的特定地点管理做出贡献,提供有关每棵树,果园小面积或整个果园的定量信息。为了验证目的,研究了2004年和2005年在卡布拉实验站(西班牙科尔多瓦,西班牙)约2公顷橄榄园中采集的地面真相数据和同一区域的远程图像。选择绿波段,NIR(近红外),全色波段和植被指数归一化植被指数(NDVI)和比率植被指数(RVI)进行CLUAS橄榄树图像评估。不论所使用的波段或植被指数如何,橄榄树的平均大小都相似,大约在23.5-26.0 m2之间,并且彼此之间的相关性高达99%。遥感估计的橄榄树面积和潜在产量也与地面估计的橄榄树面积高度相关,在2004年和2005年,99%的显着相关系数分别从0.62至0.82和0.52至0.74变化。另一方面,在绿色,全色,NDVI和RVI图像中估计的橄榄树大小和潜在产量与地面真实产量显着相关,在2004年(> on>年)和0.30-0.40,相关系数约为0.50。在2005年,分别是> off>年。 ©2007 Elsevier B.V.保留所有权利。

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