Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)

Local economy, based on animal husbandry in Northern Zagros forest leads to increase employing leaves and branches (pollarding) compared to the other parts of Zagros. Pollarding is a convenient method in forest utilization to supply fodder and it has been always trying to obtain its stable productio...

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Main Authors: O Rashidi Tazhan, M Pir Bavahgar, H Ghazanfari
Format: Article
Language:English
Published: University of Guilan 2019-03-01
Series:Caspian Journal of Environmental Sciences
Subjects:
oli
ann
Online Access:https://cjes.guilan.ac.ir/article_3347_01e364488e3f74d98d5a84086db87a2b.pdf
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spelling doaj-38669a1ede0340d9b243b938b72a58352020-11-25T03:56:03ZengUniversity of GuilanCaspian Journal of Environmental Sciences 1735-30331735-38662019-03-01171839610.22124/cjes.2019.33473347Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)O Rashidi Tazhan0M Pir Bavahgar1H Ghazanfari2Department of Forestry, Center for Research & Development of Northern Zagros Forests, University of Kurdistan, Sanandaj, IranDepartment of Forestry, Center for Research & Development of Northern Zagros Forests, University of Kurdistan, Sanandaj, IranDepartment of Forestry, Center for Research & Development of Northern Zagros Forests, University of Kurdistan, Sanandaj, IranLocal economy, based on animal husbandry in Northern Zagros forest leads to increase employing leaves and branches (pollarding) compared to the other parts of Zagros. Pollarding is a convenient method in forest utilization to supply fodder and it has been always trying to obtain its stable production by proper management skills. One of the most important forest management tools in a given forest is to provide up-to-date spatial maps of pollarded regions. The objective of this study was to investigate the capability of multi-temporal Landsat 8 OLI sensor for mapping pollarding areas of Northern Zagros forests. So that, we employed Landsat 8-OLI single and multi-date images acquired on 2014 and 2015. To assess the accuracy of output maps, a complete ground-truth of the study area was used to calculate the accuracy heuristics for the output maps. Different classification approaches were applied including minimum distance and maximum likelihood classifiers, artificial neural networks and fuzzy method. The classification accuracy was calculated on the basis of overall accuracy and kappa coefficient. The results indicated that artificial neural network and fuzzy classifier present the highest accuracy than the other classifiers. It was also found that utilizing the multi-temporal OLI imageries improves the accuracy over employing a single date. The results indicate that the multi-temporal imagery is moderately capable of mapping pollarded stands and classifying pollarding types, using ANN and Fuzzy classifiers.https://cjes.guilan.ac.ir/article_3347_01e364488e3f74d98d5a84086db87a2b.pdfolipollardingzagros forestsann
collection DOAJ
language English
format Article
sources DOAJ
author O Rashidi Tazhan
M Pir Bavahgar
H Ghazanfari
spellingShingle O Rashidi Tazhan
M Pir Bavahgar
H Ghazanfari
Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)
Caspian Journal of Environmental Sciences
oli
pollarding
zagros forests
ann
author_facet O Rashidi Tazhan
M Pir Bavahgar
H Ghazanfari
author_sort O Rashidi Tazhan
title Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)
title_short Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)
title_full Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)
title_fullStr Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)
title_full_unstemmed Detecting pollarded stands in Northern Zagros forests, using artificial neural network classifier on multi-temporal lansat-8(OLI) imageries (case study: Armarde, Baneh)
title_sort detecting pollarded stands in northern zagros forests, using artificial neural network classifier on multi-temporal lansat-8(oli) imageries (case study: armarde, baneh)
publisher University of Guilan
series Caspian Journal of Environmental Sciences
issn 1735-3033
1735-3866
publishDate 2019-03-01
description Local economy, based on animal husbandry in Northern Zagros forest leads to increase employing leaves and branches (pollarding) compared to the other parts of Zagros. Pollarding is a convenient method in forest utilization to supply fodder and it has been always trying to obtain its stable production by proper management skills. One of the most important forest management tools in a given forest is to provide up-to-date spatial maps of pollarded regions. The objective of this study was to investigate the capability of multi-temporal Landsat 8 OLI sensor for mapping pollarding areas of Northern Zagros forests. So that, we employed Landsat 8-OLI single and multi-date images acquired on 2014 and 2015. To assess the accuracy of output maps, a complete ground-truth of the study area was used to calculate the accuracy heuristics for the output maps. Different classification approaches were applied including minimum distance and maximum likelihood classifiers, artificial neural networks and fuzzy method. The classification accuracy was calculated on the basis of overall accuracy and kappa coefficient. The results indicated that artificial neural network and fuzzy classifier present the highest accuracy than the other classifiers. It was also found that utilizing the multi-temporal OLI imageries improves the accuracy over employing a single date. The results indicate that the multi-temporal imagery is moderately capable of mapping pollarded stands and classifying pollarding types, using ANN and Fuzzy classifiers.
topic oli
pollarding
zagros forests
ann
url https://cjes.guilan.ac.ir/article_3347_01e364488e3f74d98d5a84086db87a2b.pdf
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