Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery

The poplar species in the forest ecosystems are one of the most valuable and beneficial species for the society and environment. Conventional methods require high cost, time and labor need, and the results obtained vary and are insu˚cient in terms of achieved accuracy level. Determination of poplar...

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Main Authors: Tonbul H., Colkesen I., Kavzoglu T.
Format: Article
Language:English
Published: Sciendo 2020-05-01
Series:Journal of Geodetic Science
Subjects:
Online Access:https://doi.org/10.1515/jogs-2020-0003
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spelling doaj-4012727357da48ae89a80eb56fb6b3f52021-09-06T19:40:46ZengSciendoJournal of Geodetic Science2081-99432020-05-01101142210.1515/jogs-2020-0003jogs-2020-0003Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imageryTonbul H.0Colkesen I.1Kavzoglu T.2Gebze Technical University, Department of Geomatics Engineering, Gebze-Kocaeli, TurkeyGebze Technical University, Department of Geomatics Engineering, Gebze-Kocaeli, TurkeyGebze Technical University, Department of Geomatics Engineering, Gebze-Kocaeli, TurkeyThe poplar species in the forest ecosystems are one of the most valuable and beneficial species for the society and environment. Conventional methods require high cost, time and labor need, and the results obtained vary and are insu˚cient in terms of achieved accuracy level. Determination of poplar cultivated fields and mapping of their spatial sites play a vital role for decision-makers and planners to enhance the economic and ecological value of poplar trees. The study aims to map Poplar (P. deltoides) cultivated areas in Akyazi district of Sakarya, Turkey province using various combinations of the Sentinel-2A image bands. For this purpose, object-based classification based on multi-resolution segmentation algorithm was utilized to produce image objects and ensemble learning algorithms, namely, Adaboost (AdaB), Random Forest (RF), Rotation Forest (RotFor) and Canonical correlation forest (CCF) were applied to produce thematic maps. In order to analyze the effects of the spectral bands of the Sentinel-2A image on the object-based classification performance, three datasets consisting of different spectral band combinations (i.e. four 10 m bands, six 20 m bands and ten 10m pan-sharpened bands) were used. The results showed that the RotFor and CCF classifiers produced superior classification performances compared to the AdaB and RF classifiers for the band combinations regarded in this study. Moreover, it was found that determination of poplar tree class level accuracy reached to ~94% in terms of F-score. It was also observed that the inclusion of the six spectral bands at 20 m resolution resulted in a noteworthy increase in classification accuracy (up to 6%) compared to single 10m band combination.https://doi.org/10.1515/jogs-2020-0003ensemble learningpoplar treesobject-based image analysissentinel-2a
collection DOAJ
language English
format Article
sources DOAJ
author Tonbul H.
Colkesen I.
Kavzoglu T.
spellingShingle Tonbul H.
Colkesen I.
Kavzoglu T.
Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery
Journal of Geodetic Science
ensemble learning
poplar trees
object-based image analysis
sentinel-2a
author_facet Tonbul H.
Colkesen I.
Kavzoglu T.
author_sort Tonbul H.
title Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery
title_short Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery
title_full Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery
title_fullStr Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery
title_full_unstemmed Classification of poplar trees with object-based ensemble learning algorithms using Sentinel-2A imagery
title_sort classification of poplar trees with object-based ensemble learning algorithms using sentinel-2a imagery
publisher Sciendo
series Journal of Geodetic Science
issn 2081-9943
publishDate 2020-05-01
description The poplar species in the forest ecosystems are one of the most valuable and beneficial species for the society and environment. Conventional methods require high cost, time and labor need, and the results obtained vary and are insu˚cient in terms of achieved accuracy level. Determination of poplar cultivated fields and mapping of their spatial sites play a vital role for decision-makers and planners to enhance the economic and ecological value of poplar trees. The study aims to map Poplar (P. deltoides) cultivated areas in Akyazi district of Sakarya, Turkey province using various combinations of the Sentinel-2A image bands. For this purpose, object-based classification based on multi-resolution segmentation algorithm was utilized to produce image objects and ensemble learning algorithms, namely, Adaboost (AdaB), Random Forest (RF), Rotation Forest (RotFor) and Canonical correlation forest (CCF) were applied to produce thematic maps. In order to analyze the effects of the spectral bands of the Sentinel-2A image on the object-based classification performance, three datasets consisting of different spectral band combinations (i.e. four 10 m bands, six 20 m bands and ten 10m pan-sharpened bands) were used. The results showed that the RotFor and CCF classifiers produced superior classification performances compared to the AdaB and RF classifiers for the band combinations regarded in this study. Moreover, it was found that determination of poplar tree class level accuracy reached to ~94% in terms of F-score. It was also observed that the inclusion of the six spectral bands at 20 m resolution resulted in a noteworthy increase in classification accuracy (up to 6%) compared to single 10m band combination.
topic ensemble learning
poplar trees
object-based image analysis
sentinel-2a
url https://doi.org/10.1515/jogs-2020-0003
work_keys_str_mv AT tonbulh classificationofpoplartreeswithobjectbasedensemblelearningalgorithmsusingsentinel2aimagery
AT colkeseni classificationofpoplartreeswithobjectbasedensemblelearningalgorithmsusingsentinel2aimagery
AT kavzoglut classificationofpoplartreeswithobjectbasedensemblelearningalgorithmsusingsentinel2aimagery
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