Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security

A global observation capacity is required for agricultural production forecasts and food security alert systems. The European Commission�s Joint Research Center (JRC) uses low resolution satellite imagery to map vegetation status. The derived maps are used for near real-time production forecasts as...

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Main Authors: DELINCE Jacques, KLISCH Anja, ATZBERGER Clement
Language:English
Published: KU Leuven 2008
Subjects:
Online Access:https://publications.jrc.ec.europa.eu/repository/handle/JRC46437
http://wis.kuleuven.be/stat/fmsr2008.php?page=home
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spelling ftjrc:oai:publications.jrc.ec.europa.eu:JRC46437 2023-05-15T18:02:19+02:00 Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security DELINCE Jacques KLISCH Anja ATZBERGER Clement 2008 Online https://publications.jrc.ec.europa.eu/repository/handle/JRC46437 http://wis.kuleuven.be/stat/fmsr2008.php?page=home ENG eng KU Leuven JRC46437 2008 ftjrc 2022-05-01T08:16:08Z A global observation capacity is required for agricultural production forecasts and food security alert systems. The European Commission�s Joint Research Center (JRC) uses low resolution satellite imagery to map vegetation status. The derived maps are used for near real-time production forecasts as well as for the anticipation of food security problems.The daily imagery used by JRC covers the entire globe at 1 km spatial resolution. An uninterrupted time series is available since 1998. To highlight the response of the vegetation, red and near infrared spectral responses are combined into a widely used vegetation index; the normalized difference vegetation index (NDVI). Growth anomalies are detected at the pixel scale by comparing the actual NDVI with the long term average NDVI.Sensing the Earth surface is not trivial as the electromagnetic radiation, which carries the information about the surface status, is scattered and absorbed by the Earth atmosphere. In addition, clouds may (partly) obstruct the field of view of the sensor. Altogether these perturbations lead to NDVI signals which are far lower of what would have been observed under perfect measurement conditions.To eliminate the strongest perturbations, the daily imagery is generally analyzed as 10-days maximum value composite (MVC) imagery (Holben et al., 1986). In this simple pre-processing step, for a given pixel location, only the highest NDVI value is retained for each 10-day (dekadal) period, thus minimizing the mentioned perturbations.Nevertheless, even dekadal NDVI-MVC images still contain perturbations. Sharp edge lines may appear in regions where insufficient registrations were available for the compositing process. Missing values occur for example at higher latitudes during polar night. Clouds and/or atmospheric conditions with high aerosol load may persist longer than 10 days, leading to sub-optimal MVC outputs which are easily recognized as irregular dips.The oral presentation aims at presenting and comparing three different smoothing strategies:� Best index slope extraction (BISE) algorithm (Viovy et al., 1992)� Weighted least square regression (Swets et al., 1999)� Savitzky-Golay polynomial filtering (Savitzky & Golay, 1964; Chen et al., 2004)The algorithms are currently used at JRC for minimizing the undesired atmospheric/cloud effects, with the ultimate goal to enhance the signal stemming from the land surface. All approaches work within gliding windows of variable size and have been adapted to deal with missing values. Advantages and disadvantages of the different methods will be presented in the context of agricultural production estimates and for deriving phenological indicators useful in global change studies. JRC.G.3 - Monitoring agricultural resources Other/Unknown Material polar night Joint Research Centre, European Commission: JRC Publications Repository
institution Open Polar
collection Joint Research Centre, European Commission: JRC Publications Repository
op_collection_id ftjrc
language English
description A global observation capacity is required for agricultural production forecasts and food security alert systems. The European Commission�s Joint Research Center (JRC) uses low resolution satellite imagery to map vegetation status. The derived maps are used for near real-time production forecasts as well as for the anticipation of food security problems.The daily imagery used by JRC covers the entire globe at 1 km spatial resolution. An uninterrupted time series is available since 1998. To highlight the response of the vegetation, red and near infrared spectral responses are combined into a widely used vegetation index; the normalized difference vegetation index (NDVI). Growth anomalies are detected at the pixel scale by comparing the actual NDVI with the long term average NDVI.Sensing the Earth surface is not trivial as the electromagnetic radiation, which carries the information about the surface status, is scattered and absorbed by the Earth atmosphere. In addition, clouds may (partly) obstruct the field of view of the sensor. Altogether these perturbations lead to NDVI signals which are far lower of what would have been observed under perfect measurement conditions.To eliminate the strongest perturbations, the daily imagery is generally analyzed as 10-days maximum value composite (MVC) imagery (Holben et al., 1986). In this simple pre-processing step, for a given pixel location, only the highest NDVI value is retained for each 10-day (dekadal) period, thus minimizing the mentioned perturbations.Nevertheless, even dekadal NDVI-MVC images still contain perturbations. Sharp edge lines may appear in regions where insufficient registrations were available for the compositing process. Missing values occur for example at higher latitudes during polar night. Clouds and/or atmospheric conditions with high aerosol load may persist longer than 10 days, leading to sub-optimal MVC outputs which are easily recognized as irregular dips.The oral presentation aims at presenting and comparing three different smoothing strategies:� Best index slope extraction (BISE) algorithm (Viovy et al., 1992)� Weighted least square regression (Swets et al., 1999)� Savitzky-Golay polynomial filtering (Savitzky & Golay, 1964; Chen et al., 2004)The algorithms are currently used at JRC for minimizing the undesired atmospheric/cloud effects, with the ultimate goal to enhance the signal stemming from the land surface. All approaches work within gliding windows of variable size and have been adapted to deal with missing values. Advantages and disadvantages of the different methods will be presented in the context of agricultural production estimates and for deriving phenological indicators useful in global change studies. JRC.G.3 - Monitoring agricultural resources
author DELINCE Jacques
KLISCH Anja
ATZBERGER Clement
spellingShingle DELINCE Jacques
KLISCH Anja
ATZBERGER Clement
Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security
author_facet DELINCE Jacques
KLISCH Anja
ATZBERGER Clement
author_sort DELINCE Jacques
title Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security
title_short Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security
title_full Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security
title_fullStr Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security
title_full_unstemmed Smoothing Time Series of Satellite Derived Vegetation Indices for Global Monitoring of Agricultural Productivity and Food Security
title_sort smoothing time series of satellite derived vegetation indices for global monitoring of agricultural productivity and food security
publisher KU Leuven
publishDate 2008
url https://publications.jrc.ec.europa.eu/repository/handle/JRC46437
http://wis.kuleuven.be/stat/fmsr2008.php?page=home
genre polar night
genre_facet polar night
op_relation JRC46437
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