Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning Classifiers

Miombo woodlands in Southern Africa are experiencing accelerated changes due to natural and anthropogenic disturbances. In order to formulate sustainable woodland management strategies in the Miombo ecosystem, timely and up-to-date land cover information is required. Recent advances in remote sensin...

Full description

Bibliographic Details
Main Authors: Courage Kamusoko, Jonah Gamba, Hitomi Murakami
Format: Article
Language:English
Published: MDPI AG 2014-06-01
Series:Land
Subjects:
Online Access:http://www.mdpi.com/2073-445X/3/2/524
id doaj-77816b5ac8464f95b43ef47e2861a32e
record_format Article
spelling doaj-77816b5ac8464f95b43ef47e2861a32e2020-11-24T22:07:26ZengMDPI AGLand2073-445X2014-06-013252454010.3390/land3020524land3020524Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning ClassifiersCourage Kamusoko0Jonah Gamba1Hitomi Murakami2Asia Air Survey (AAS) Co., Ltd., Kanagawa 215-0004, JapanTOPS Systems Corp., Tsukuba 305-0032, JapanDepartment of Computer and Information Science, Faculty of Science and Technology, Seikei University, Tokyo 180-8633, JapanMiombo woodlands in Southern Africa are experiencing accelerated changes due to natural and anthropogenic disturbances. In order to formulate sustainable woodland management strategies in the Miombo ecosystem, timely and up-to-date land cover information is required. Recent advances in remote sensing technology have improved land cover mapping in tropical evergreen ecosystems. However, woodland cover mapping remains a challenge in the Miombo ecosystem. The objective of the study was to evaluate the performance of decision trees (DT), random forests (RF), and support vector machines (SVM) in the context of improving woodland and non-woodland cover mapping in the Miombo ecosystem in Zimbabwe. We used Multidate Landsat 8 spectral and spatial dependence (Moran’s I) variables to map woodland and non-woodland cover. Results show that RF classifier outperformed the SVM and DT classifiers by 4% and 15%, respectively. The RF importance measures show that multidate Landsat 8 spectral and spatial variables had the greatest influence on class-separability in the study area. Therefore, the RF classifier has potential to improve woodland cover mapping in the Miombo ecosystem.http://www.mdpi.com/2073-445X/3/2/524ZimbabweMiombo woodlandsLandsat 8decision treesrandom forestssupport vector machines
collection DOAJ
language English
format Article
sources DOAJ
author Courage Kamusoko
Jonah Gamba
Hitomi Murakami
spellingShingle Courage Kamusoko
Jonah Gamba
Hitomi Murakami
Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning Classifiers
Land
Zimbabwe
Miombo woodlands
Landsat 8
decision trees
random forests
support vector machines
author_facet Courage Kamusoko
Jonah Gamba
Hitomi Murakami
author_sort Courage Kamusoko
title Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning Classifiers
title_short Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning Classifiers
title_full Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning Classifiers
title_fullStr Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning Classifiers
title_full_unstemmed Mapping Woodland Cover in the Miombo Ecosystem: A Comparison of Machine Learning Classifiers
title_sort mapping woodland cover in the miombo ecosystem: a comparison of machine learning classifiers
publisher MDPI AG
series Land
issn 2073-445X
publishDate 2014-06-01
description Miombo woodlands in Southern Africa are experiencing accelerated changes due to natural and anthropogenic disturbances. In order to formulate sustainable woodland management strategies in the Miombo ecosystem, timely and up-to-date land cover information is required. Recent advances in remote sensing technology have improved land cover mapping in tropical evergreen ecosystems. However, woodland cover mapping remains a challenge in the Miombo ecosystem. The objective of the study was to evaluate the performance of decision trees (DT), random forests (RF), and support vector machines (SVM) in the context of improving woodland and non-woodland cover mapping in the Miombo ecosystem in Zimbabwe. We used Multidate Landsat 8 spectral and spatial dependence (Moran’s I) variables to map woodland and non-woodland cover. Results show that RF classifier outperformed the SVM and DT classifiers by 4% and 15%, respectively. The RF importance measures show that multidate Landsat 8 spectral and spatial variables had the greatest influence on class-separability in the study area. Therefore, the RF classifier has potential to improve woodland cover mapping in the Miombo ecosystem.
topic Zimbabwe
Miombo woodlands
Landsat 8
decision trees
random forests
support vector machines
url http://www.mdpi.com/2073-445X/3/2/524
work_keys_str_mv AT couragekamusoko mappingwoodlandcoverinthemiomboecosystemacomparisonofmachinelearningclassifiers
AT jonahgamba mappingwoodlandcoverinthemiomboecosystemacomparisonofmachinelearningclassifiers
AT hitomimurakami mappingwoodlandcoverinthemiomboecosystemacomparisonofmachinelearningclassifiers
_version_ 1725820427218976768