Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017

Analyzing time series data with remote sensing provides a better understanding of vegetation dynamics, since previous conditions and changes that have occurred over a given period are known. The objective of this paper was to analyze the current status and recent advances in the use of time ser...

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Main Authors: José Manuel Zúñiga-Vásquez, Carlos Arturo Aguirre-Salado, Marín Pompa-García
Format: Article
Language:English
Published: Facultad de Ciencias Agrarias. Universidad Nacional de Cuyo 2020-06-01
Series:Revista de la Facultad de Ciencias Agrarias
Subjects:
Online Access:https://revistas.uncu.edu.ar/ojs3/index.php/RFCA/article/view/2981
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spelling doaj-9f108f5cad624a2c87070689dd1e90e82021-04-30T11:55:53ZengFacultad de Ciencias Agrarias. Universidad Nacional de CuyoRevista de la Facultad de Ciencias Agrarias0370-46611853-86652020-06-01521Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017José Manuel Zúñiga-Vásquez0Carlos Arturo Aguirre-Salado1Marín Pompa-García2Universidad Juárez del Estado de Durango. Facultad de Ciencias Forestales. Río Papaloapan y Blvd. Durango s/n. Col. Valle del Sur. 34120, Durango. Durango, México. Universidad Autónoma de San Luis Potosí. Facultad de Ingeniería. Manuel Nava Nº 8. Zona Universitaria. 78280. San Luis Potosí. S. L. P. México. Universidad Juárez del Estado de Durango. Facultad de Ciencias Forestales. Río Papaloapan y Blvd. Durango s/n. Col. Valle del Sur. 34120, Durango. Durango, México. Analyzing time series data with remote sensing provides a better understanding of vegetation dynamics, since previous conditions and changes that have occurred over a given period are known. The objective of this paper was to analyze the current status and recent advances in the use of time series data obtained from remote sensors for vegetation monitoring. A systematic search of scientific papers was performed and 167 papers were found, published during the period 1996 to 2017. No significant difference in the amount of years analyzed was found between time series analyzed with a single sensor and those analyzed with a combination of several sensors (i.e. Landsat and SPOT, Landsat and Sentinel, among others). However, the combination of data from different sensors (fusion of images) can improve the quality of the results. Special attention must also be given to the fusion of optical and radar data, since this offers more unique spectral and structural information for land cover and land use assessments. Highlights Remote sensing provides a better understanding of vegetation dynamics. The number of vegetation monitoring papers published using time series data are becoming more frequent. The fusion of Landsat and Sentinel-2 satellite data shows great potential for timely monitoring of rapid changes. The fusion of optical and radar data points to a new trend in remote sensing, including the use of geospatial open data sources. https://revistas.uncu.edu.ar/ojs3/index.php/RFCA/article/view/2981phenologyland coveranalysis of multi-temporal remote sensingspatio-temporal analysisimage fusion
collection DOAJ
language English
format Article
sources DOAJ
author José Manuel Zúñiga-Vásquez
Carlos Arturo Aguirre-Salado
Marín Pompa-García
spellingShingle José Manuel Zúñiga-Vásquez
Carlos Arturo Aguirre-Salado
Marín Pompa-García
Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017
Revista de la Facultad de Ciencias Agrarias
phenology
land cover
analysis of multi-temporal remote sensing
spatio-temporal analysis
image fusion
author_facet José Manuel Zúñiga-Vásquez
Carlos Arturo Aguirre-Salado
Marín Pompa-García
author_sort José Manuel Zúñiga-Vásquez
title Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017
title_short Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017
title_full Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017
title_fullStr Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017
title_full_unstemmed Monitoring vegetation using remote sensing time series data: a review of the period 1996-2017
title_sort monitoring vegetation using remote sensing time series data: a review of the period 1996-2017
publisher Facultad de Ciencias Agrarias. Universidad Nacional de Cuyo
series Revista de la Facultad de Ciencias Agrarias
issn 0370-4661
1853-8665
publishDate 2020-06-01
description Analyzing time series data with remote sensing provides a better understanding of vegetation dynamics, since previous conditions and changes that have occurred over a given period are known. The objective of this paper was to analyze the current status and recent advances in the use of time series data obtained from remote sensors for vegetation monitoring. A systematic search of scientific papers was performed and 167 papers were found, published during the period 1996 to 2017. No significant difference in the amount of years analyzed was found between time series analyzed with a single sensor and those analyzed with a combination of several sensors (i.e. Landsat and SPOT, Landsat and Sentinel, among others). However, the combination of data from different sensors (fusion of images) can improve the quality of the results. Special attention must also be given to the fusion of optical and radar data, since this offers more unique spectral and structural information for land cover and land use assessments. Highlights Remote sensing provides a better understanding of vegetation dynamics. The number of vegetation monitoring papers published using time series data are becoming more frequent. The fusion of Landsat and Sentinel-2 satellite data shows great potential for timely monitoring of rapid changes. The fusion of optical and radar data points to a new trend in remote sensing, including the use of geospatial open data sources.
topic phenology
land cover
analysis of multi-temporal remote sensing
spatio-temporal analysis
image fusion
url https://revistas.uncu.edu.ar/ojs3/index.php/RFCA/article/view/2981
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AT marinpompagarcia monitoringvegetationusingremotesensingtimeseriesdataareviewoftheperiod19962017
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