Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing Techniques
Vegetation has a substantial role as an indicator of anthropic effects, specifically in cases where urban planning is required. This is especially the case in the management of coastal cities, where vegetation exerts several effects that heighten the quality of life (alleviation of unpleasant weat...
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doaj-85945981cd9e4965b95351a0bafa9c672020-11-25T03:43:14ZengUniversidade Federal do Rio de JaneiroAnuário do Instituto de Geociências1982-39080101-97592019-05-014232741http://dx.doi.org/10.11137/2019_3_27_41Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesNatalia V. Revollo0G. Noelia Revollo Sarmiento1M. Andrea Huamantinco Cisneros2Claudio A. Delrieux3M. Cintia Piccolo4UNS-CONICETUNS-CONICETUNSUNS-CONICETUNS-CONICETVegetation has a substantial role as an indicator of anthropic effects, specifically in cases where urban planning is required. This is especially the case in the management of coastal cities, where vegetation exerts several effects that heighten the quality of life (alleviation of unpleasant weather conditions, mitigation of erosion, aesthetics, among others). For this reason, there is an increased interest in the development of automated tools for studying the temporal and spatial evolution of the vegetation cover in wide urban areas, with an adequate spatial and temporal resolution. We present an automated image processing workflow for computing the variation of vegetation cover using any publicly available satellite imagery (ASTER, SPOT, LANDSAT, MODIS, among others) and a set of image processing algorithms specifically developed. The automatic processing methodology was developed to evaluate the spatial and temporal evolution of vegetation cover, including the Normalized Difference Vegetation Index (NDVI), the vegetation cover percentage and the vegetation variation. A prior urban area digitalization is required. The methodology was applied in Monte Hermoso city, Argentina. The vegetation cover per city block was computed and three transects over the city were outlined to evaluate the changes in NDVI values. This allows the computation of several information products, like NDVI profiles, vegetation variation assessment, and classification of city areas regarding vegetation. The information is available in GIS-readable formats, making it useful as support for urban planning decisions.http://www.anuario.igeo.ufrj.br/2019_3/2019_03_27_41.pdfimage processing techniquesndvi indexvegetation covercoastal management |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Natalia V. Revollo G. Noelia Revollo Sarmiento M. Andrea Huamantinco Cisneros Claudio A. Delrieux M. Cintia Piccolo |
spellingShingle |
Natalia V. Revollo G. Noelia Revollo Sarmiento M. Andrea Huamantinco Cisneros Claudio A. Delrieux M. Cintia Piccolo Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing Techniques Anuário do Instituto de Geociências image processing techniques ndvi index vegetation cover coastal management |
author_facet |
Natalia V. Revollo G. Noelia Revollo Sarmiento M. Andrea Huamantinco Cisneros Claudio A. Delrieux M. Cintia Piccolo |
author_sort |
Natalia V. Revollo |
title |
Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing Techniques |
title_short |
Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing Techniques |
title_full |
Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing Techniques |
title_fullStr |
Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing Techniques |
title_full_unstemmed |
Assessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing TechniquesAssessing the Evolution in Remotely Sensed Vegetation Index Using Image Processing Techniques |
title_sort |
assessing the evolution in remotely sensed vegetation index using image processing techniquesassessing the evolution in remotely sensed vegetation index using image processing techniques |
publisher |
Universidade Federal do Rio de Janeiro |
series |
Anuário do Instituto de Geociências |
issn |
1982-3908 0101-9759 |
publishDate |
2019-05-01 |
description |
Vegetation has a substantial role as an indicator of anthropic effects, specifically in cases where urban planning
is required. This is especially the case in the management of coastal cities, where vegetation exerts several effects that
heighten the quality of life (alleviation of unpleasant weather conditions, mitigation of erosion, aesthetics, among others).
For this reason, there is an increased interest in the development of automated tools for studying the temporal and spatial
evolution of the vegetation cover in wide urban areas, with an adequate spatial and temporal resolution.
We present an automated image processing workflow for computing the variation of vegetation cover using any
publicly available satellite imagery (ASTER, SPOT, LANDSAT, MODIS, among others) and a set of image processing
algorithms specifically developed. The automatic processing methodology was developed to evaluate the spatial and
temporal evolution of vegetation cover, including the Normalized Difference Vegetation Index (NDVI), the vegetation
cover percentage and the vegetation variation. A prior urban area digitalization is required.
The methodology was applied in Monte Hermoso city, Argentina. The vegetation cover per city block was computed and three transects over the city were outlined to evaluate the changes in NDVI values. This allows the computation of several information products, like NDVI profiles, vegetation variation assessment, and classification of city
areas regarding vegetation. The information is available in GIS-readable formats, making it useful as support for urban
planning decisions. |
topic |
image processing techniques ndvi index vegetation cover coastal management |
url |
http://www.anuario.igeo.ufrj.br/2019_3/2019_03_27_41.pdf |
work_keys_str_mv |
AT nataliavrevollo assessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniquesassessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniques AT gnoeliarevollosarmiento assessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniquesassessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniques AT mandreahuamantincocisneros assessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniquesassessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniques AT claudioadelrieux assessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniquesassessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniques AT mcintiapiccolo assessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniquesassessingtheevolutioninremotelysensedvegetationindexusingimageprocessingtechniques |
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