Cargando…

The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems

Classifying and mapping natural systems such as wetlands using remote sensing frequently relies on data derived from regions of interest (ROIs), often acquired during field campaigns. ROIs tend to be heterogeneous in complex systems with a variety of land cover classes. However, traditional supervis...

Descripción completa

Detalles Bibliográficos
Autores principales: Berhane, Tedros M., Costa, Hugo, Lane, Charles R., Anenkhonov, Oleg A., Chepinoga, Victor V., Autrey, Bradley C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7784669/
https://www.ncbi.nlm.nih.gov/pubmed/33408881
http://dx.doi.org/10.3390/rs11050551
_version_ 1783632336819060736
author Berhane, Tedros M.
Costa, Hugo
Lane, Charles R.
Anenkhonov, Oleg A.
Chepinoga, Victor V.
Autrey, Bradley C.
author_facet Berhane, Tedros M.
Costa, Hugo
Lane, Charles R.
Anenkhonov, Oleg A.
Chepinoga, Victor V.
Autrey, Bradley C.
author_sort Berhane, Tedros M.
collection PubMed
description Classifying and mapping natural systems such as wetlands using remote sensing frequently relies on data derived from regions of interest (ROIs), often acquired during field campaigns. ROIs tend to be heterogeneous in complex systems with a variety of land cover classes. However, traditional supervised image classification is predicated on pure single-class observations to train a classifier. This ultimately encourages end-users to create single-class ROIs, nudging ROIs away from field-based points or gerrymandering the ROI, which may produce ROIs unrepresentative of the landscape and potentially insert error into the classification. In this study, we explored WorldView-2 images and 228 field-based data points to define ROIs of varying heterogeneity levels in terms of class membership to classify and map 22 discrete classes in a large and complex wetland system. The goal was to include rather than avoid ROI heterogeneity and assess its impact on classification accuracy. Parametric and nonparametric classifiers were tested with ROI heterogeneity that varied from 7% to 100%. Heterogeneity was governed by ROI area, which we increased from the field-sampling frame of ~100 m(2) nearly 19-fold to ~2124 m(2). In general, overall accuracy (OA) tended downwards with increasing heterogeneity but stayed relatively high until extreme heterogeneity levels were reached. Moreover, the differences in OA were not statistically significant across several small-to-large heterogeneity levels. Per-class user’s and producer’s accuracies behaved similarly. Our findings suggest that ROI heterogeneity did not harm classification accuracy unless heterogeneity became extreme, and thus there are substantial practical advantages to accommodating heterogeneous ROIs in image classification. Rather than attempting to avoid ROI heterogeneity by gerrymandering, classification in wetland environments, as well as analyses of other complex environments, should embrace ROI heterogeneity.
format Online
Article
Text
id pubmed-7784669
institution National Center for Biotechnology Information
language English
publishDate 2019
record_format MEDLINE/PubMed
spelling pubmed-77846692021-01-05 The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems Berhane, Tedros M. Costa, Hugo Lane, Charles R. Anenkhonov, Oleg A. Chepinoga, Victor V. Autrey, Bradley C. Remote Sens (Basel) Article Classifying and mapping natural systems such as wetlands using remote sensing frequently relies on data derived from regions of interest (ROIs), often acquired during field campaigns. ROIs tend to be heterogeneous in complex systems with a variety of land cover classes. However, traditional supervised image classification is predicated on pure single-class observations to train a classifier. This ultimately encourages end-users to create single-class ROIs, nudging ROIs away from field-based points or gerrymandering the ROI, which may produce ROIs unrepresentative of the landscape and potentially insert error into the classification. In this study, we explored WorldView-2 images and 228 field-based data points to define ROIs of varying heterogeneity levels in terms of class membership to classify and map 22 discrete classes in a large and complex wetland system. The goal was to include rather than avoid ROI heterogeneity and assess its impact on classification accuracy. Parametric and nonparametric classifiers were tested with ROI heterogeneity that varied from 7% to 100%. Heterogeneity was governed by ROI area, which we increased from the field-sampling frame of ~100 m(2) nearly 19-fold to ~2124 m(2). In general, overall accuracy (OA) tended downwards with increasing heterogeneity but stayed relatively high until extreme heterogeneity levels were reached. Moreover, the differences in OA were not statistically significant across several small-to-large heterogeneity levels. Per-class user’s and producer’s accuracies behaved similarly. Our findings suggest that ROI heterogeneity did not harm classification accuracy unless heterogeneity became extreme, and thus there are substantial practical advantages to accommodating heterogeneous ROIs in image classification. Rather than attempting to avoid ROI heterogeneity by gerrymandering, classification in wetland environments, as well as analyses of other complex environments, should embrace ROI heterogeneity. 2019-03-06 /pmc/articles/PMC7784669/ /pubmed/33408881 http://dx.doi.org/10.3390/rs11050551 Text en This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Berhane, Tedros M.
Costa, Hugo
Lane, Charles R.
Anenkhonov, Oleg A.
Chepinoga, Victor V.
Autrey, Bradley C.
The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems
title The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems
title_full The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems
title_fullStr The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems
title_full_unstemmed The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems
title_short The Influence of Region of Interest Heterogeneity on Classification Accuracy in Wetland Systems
title_sort influence of region of interest heterogeneity on classification accuracy in wetland systems
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7784669/
https://www.ncbi.nlm.nih.gov/pubmed/33408881
http://dx.doi.org/10.3390/rs11050551
work_keys_str_mv AT berhanetedrosm theinfluenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT costahugo theinfluenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT lanecharlesr theinfluenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT anenkhonovolega theinfluenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT chepinogavictorv theinfluenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT autreybradleyc theinfluenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT berhanetedrosm influenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT costahugo influenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT lanecharlesr influenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT anenkhonovolega influenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT chepinogavictorv influenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems
AT autreybradleyc influenceofregionofinterestheterogeneityonclassificationaccuracyinwetlandsystems