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DOI10.1016/j.rse.2019.111480
Monitoring the incidence of Xylella fastidiosa infection in olive orchards using ground-based evaluations, airborne imaging spectroscopy and Sentinel-2 time series through 3-D radiative transfer modelling
Hornero A.; Hernández-Clemente R.; North P.R.J.; Beck P.S.A.; Boscia D.; Navas-Cortes J.A.; Zarco-Tejada P.J.
发表日期2020
ISSN00344257
卷号236
英文摘要Outbreaks of Xylella fastidiosa (Xf) in Europe generate considerable economic and environmental damage, and this plant pest continues to spread. Detecting and monitoring the spatio-temporal dynamics of the disease symptoms caused by Xf at a large scale is key to curtailing its expansion and mitigating its impacts. Here, we combined 3-D radiative transfer modelling (3D-RTM), which accounts for the seasonal background variations, with passive optical satellite data to assess the spatio-temporal dynamics of Xf infections in olive orchards. We developed a 3D-RTM approach to predict Xf infection incidence in olive orchards, integrating airborne hyperspectral imagery and freely available Sentinel-2 satellite data with radiative transfer modelling and field observations. Sentinel-2A time series data collected over a two-year period were used to assess the temporal trends in Xf-infected olive orchards in the Apulia region of southern Italy. Hyperspectral images spanning the same two-year period were used for validation, along with field surveys; their high resolution also enabled the extraction of soil spectrum variations required by the 3D-RTM to account for canopy background effect. Temporal changes were validated with more than 3000 trees from 16 orchards covering a range of disease severity (DS) and disease incidence (DI) levels. Among the wide range of structural and physiological vegetation indices evaluated from Sentinel-2 imagery, the temporal variation of the Atmospherically Resistant Vegetation Index (ARVI) and Optimized Soil-Adjusted Vegetation Index (OSAVI) showed superior performance for DS and DI estimation (r2 VALUES>0.7, p < 0.001). When seasonal understory changes were accounted for using modelling methods, the error of DI prediction was reduced 3-fold. Thus, we conclude that the retrieval of DI through model inversion and Sentinel-2 imagery can form the basis for operational vegetation damage monitoring worldwide. Our study highlight the value of interpreting temporal variations in model retrievals to detect anomalies in vegetation health. © 2019 Elsevier Inc.
英文关键词Hyperspectral; Radiative transfer; Sentinel-2; Temporal change; Xylella fastidiosa
语种英语
scopus关键词Bacteria; Orchards; Radiative transfer; Satellite imagery; Spectroscopy; Time series; Vegetation; Atmospherically resistant vegetation indices; Hyper-spectral imageries; HyperSpectral; Radiative transfer modelling; Sentinel-2; Spatio-temporal dynamics; Temporal change; Xylella fastidiosa; 3D modeling; airborne sensing; bacterial disease; dicotyledon; disease incidence; ground-based measurement; infectivity; monitoring system; orchard; radiative transfer; Sentinel; temporal variation; three-dimensional modeling; time series analysis; Xylella fastidiosa
来源期刊Remote Sensing of Environment
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/179573
作者单位Department of Geography, Swansea University, Swansea, SA2 8PP, United Kingdom; European Commission (EC), Joint Research Centre (JRC), Directorate D-Sustainable Resources, Via E. Fermi 2749 – TP 261, 26a/043, Ispra, VA I-21027, Italy; CNR, Istituto per la Protezione Sostenibile delle Piante (IPSP), via Amendola, 122/D, Bari, I-70126, Italy; Instituto de Agricultura Sostenible (IAS), Consejo Superior de Investigaciones Científicas (CSIC), Avenida Menéndez Pidal s/n, Córdoba, 14004, Spain; School of Agriculture and Food, Faculty of Veterinary and Agricultural Sciences and Department of Infrastructure Engineering, Melbourne School of Engineering, University of Melbourne, Melbourne, Victoria, Australia
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Hornero A.,Hernández-Clemente R.,North P.R.J.,et al. Monitoring the incidence of Xylella fastidiosa infection in olive orchards using ground-based evaluations, airborne imaging spectroscopy and Sentinel-2 time series through 3-D radiative transfer modelling[J],2020,236.
APA Hornero A..,Hernández-Clemente R..,North P.R.J..,Beck P.S.A..,Boscia D..,...&Zarco-Tejada P.J..(2020).Monitoring the incidence of Xylella fastidiosa infection in olive orchards using ground-based evaluations, airborne imaging spectroscopy and Sentinel-2 time series through 3-D radiative transfer modelling.Remote Sensing of Environment,236.
MLA Hornero A.,et al."Monitoring the incidence of Xylella fastidiosa infection in olive orchards using ground-based evaluations, airborne imaging spectroscopy and Sentinel-2 time series through 3-D radiative transfer modelling".Remote Sensing of Environment 236(2020).
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