Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.

This paper proposes a supervised classification scheme to identify 40 tree species (2 coniferous, 38 broadleaf) belonging to 22 families and 36 genera in high spatial resolution QuickBird multispectral images (HMS). Overall kappa coefficient (OKC) and species conditional kappa coefficients (SCKC) we...

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Main Authors: Chinsu Lin, Sorin C Popescu, Gavin Thomson, Khongor Tsogt, Chein-I Chang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0125554
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spelling doaj-9bf3b3bbb4824824ad5ea135b654c99e2021-03-03T20:04:35ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01105e012555410.1371/journal.pone.0125554Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.Chinsu LinSorin C PopescuGavin ThomsonKhongor TsogtChein-I ChangThis paper proposes a supervised classification scheme to identify 40 tree species (2 coniferous, 38 broadleaf) belonging to 22 families and 36 genera in high spatial resolution QuickBird multispectral images (HMS). Overall kappa coefficient (OKC) and species conditional kappa coefficients (SCKC) were used to evaluate classification performance in training samples and estimate accuracy and uncertainty in test samples. Baseline classification performance using HMS images and vegetation index (VI) images were evaluated with an OKC value of 0.58 and 0.48 respectively, but performance improved significantly (up to 0.99) when used in combination with an HMS spectral-spatial texture image (SpecTex). One of the 40 species had very high conditional kappa coefficient performance (SCKC ≥ 0.95) using 4-band HMS and 5-band VIs images, but, only five species had lower performance (0.68 ≤ SCKC ≤ 0.94) using the SpecTex images. When SpecTex images were combined with a Visible Atmospherically Resistant Index (VARI), there was a significant improvement in performance in the training samples. The same level of improvement could not be replicated in the test samples indicating that a high degree of uncertainty exists in species classification accuracy which may be due to individual tree crown density, leaf greenness (inter-canopy gaps), and noise in the background environment (intra-canopy gaps). These factors increase uncertainty in the spectral texture features and therefore represent potential problems when using pixel-based classification techniques for multi-species classification.https://doi.org/10.1371/journal.pone.0125554
collection DOAJ
language English
format Article
sources DOAJ
author Chinsu Lin
Sorin C Popescu
Gavin Thomson
Khongor Tsogt
Chein-I Chang
spellingShingle Chinsu Lin
Sorin C Popescu
Gavin Thomson
Khongor Tsogt
Chein-I Chang
Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.
PLoS ONE
author_facet Chinsu Lin
Sorin C Popescu
Gavin Thomson
Khongor Tsogt
Chein-I Chang
author_sort Chinsu Lin
title Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.
title_short Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.
title_full Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.
title_fullStr Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.
title_full_unstemmed Classification of Tree Species in Overstorey Canopy of Subtropical Forest Using QuickBird Images.
title_sort classification of tree species in overstorey canopy of subtropical forest using quickbird images.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description This paper proposes a supervised classification scheme to identify 40 tree species (2 coniferous, 38 broadleaf) belonging to 22 families and 36 genera in high spatial resolution QuickBird multispectral images (HMS). Overall kappa coefficient (OKC) and species conditional kappa coefficients (SCKC) were used to evaluate classification performance in training samples and estimate accuracy and uncertainty in test samples. Baseline classification performance using HMS images and vegetation index (VI) images were evaluated with an OKC value of 0.58 and 0.48 respectively, but performance improved significantly (up to 0.99) when used in combination with an HMS spectral-spatial texture image (SpecTex). One of the 40 species had very high conditional kappa coefficient performance (SCKC ≥ 0.95) using 4-band HMS and 5-band VIs images, but, only five species had lower performance (0.68 ≤ SCKC ≤ 0.94) using the SpecTex images. When SpecTex images were combined with a Visible Atmospherically Resistant Index (VARI), there was a significant improvement in performance in the training samples. The same level of improvement could not be replicated in the test samples indicating that a high degree of uncertainty exists in species classification accuracy which may be due to individual tree crown density, leaf greenness (inter-canopy gaps), and noise in the background environment (intra-canopy gaps). These factors increase uncertainty in the spectral texture features and therefore represent potential problems when using pixel-based classification techniques for multi-species classification.
url https://doi.org/10.1371/journal.pone.0125554
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