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Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model

Vegetation is an important part of ecosystem and estimation of fractional vegetation cover is of significant meaning to monitoring of vegetation growth in a certain region. With Landsat TM images and HJ-1B images as data source, an improved selective endmember linear spectral mixture model (SELSMM)...

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Autores principales: Li, Ying, Wang, Hong, Li, Xiao Bing
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4408063/
https://www.ncbi.nlm.nih.gov/pubmed/25905772
http://dx.doi.org/10.1371/journal.pone.0124608
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author Li, Ying
Wang, Hong
Li, Xiao Bing
author_facet Li, Ying
Wang, Hong
Li, Xiao Bing
author_sort Li, Ying
collection PubMed
description Vegetation is an important part of ecosystem and estimation of fractional vegetation cover is of significant meaning to monitoring of vegetation growth in a certain region. With Landsat TM images and HJ-1B images as data source, an improved selective endmember linear spectral mixture model (SELSMM) was put forward in this research to estimate the fractional vegetation cover in Huangfuchuan watershed in China. We compared the result with the vegetation coverage estimated with linear spectral mixture model (LSMM) and conducted accuracy test on the two results with field survey data to study the effectiveness of different models in estimation of vegetation coverage. Results indicated that: (1) the RMSE of the estimation result of SELSMM based on TM images is the lowest, which is 0.044. The RMSEs of the estimation results of LSMM based on TM images, SELSMM based on HJ-1B images and LSMM based on HJ-1B images are respectively 0.052, 0.077 and 0.082, which are all higher than that of SELSMM based on TM images; (2) the R(2) of SELSMM based on TM images, LSMM based on TM images, SELSMM based on HJ-1B images and LSMM based on HJ-1B images are respectively 0.668, 0.531, 0.342 and 0.336. Among these models, SELSMM based on TM images has the highest estimation accuracy and also the highest correlation with measured vegetation coverage. Of the two methods tested, SELSMM is superior to LSMM in estimation of vegetation coverage and it is also better at unmixing mixed pixels of TM images than pixels of HJ-1B images. So, the SELSMM based on TM images is comparatively accurate and reliable in the research of regional fractional vegetation cover estimation.
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spelling pubmed-44080632015-05-04 Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model Li, Ying Wang, Hong Li, Xiao Bing PLoS One Research Article Vegetation is an important part of ecosystem and estimation of fractional vegetation cover is of significant meaning to monitoring of vegetation growth in a certain region. With Landsat TM images and HJ-1B images as data source, an improved selective endmember linear spectral mixture model (SELSMM) was put forward in this research to estimate the fractional vegetation cover in Huangfuchuan watershed in China. We compared the result with the vegetation coverage estimated with linear spectral mixture model (LSMM) and conducted accuracy test on the two results with field survey data to study the effectiveness of different models in estimation of vegetation coverage. Results indicated that: (1) the RMSE of the estimation result of SELSMM based on TM images is the lowest, which is 0.044. The RMSEs of the estimation results of LSMM based on TM images, SELSMM based on HJ-1B images and LSMM based on HJ-1B images are respectively 0.052, 0.077 and 0.082, which are all higher than that of SELSMM based on TM images; (2) the R(2) of SELSMM based on TM images, LSMM based on TM images, SELSMM based on HJ-1B images and LSMM based on HJ-1B images are respectively 0.668, 0.531, 0.342 and 0.336. Among these models, SELSMM based on TM images has the highest estimation accuracy and also the highest correlation with measured vegetation coverage. Of the two methods tested, SELSMM is superior to LSMM in estimation of vegetation coverage and it is also better at unmixing mixed pixels of TM images than pixels of HJ-1B images. So, the SELSMM based on TM images is comparatively accurate and reliable in the research of regional fractional vegetation cover estimation. Public Library of Science 2015-04-23 /pmc/articles/PMC4408063/ /pubmed/25905772 http://dx.doi.org/10.1371/journal.pone.0124608 Text en © 2015 Li et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Li, Ying
Wang, Hong
Li, Xiao Bing
Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model
title Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model
title_full Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model
title_fullStr Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model
title_full_unstemmed Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model
title_short Fractional Vegetation Cover Estimation Based on an Improved Selective Endmember Spectral Mixture Model
title_sort fractional vegetation cover estimation based on an improved selective endmember spectral mixture model
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4408063/
https://www.ncbi.nlm.nih.gov/pubmed/25905772
http://dx.doi.org/10.1371/journal.pone.0124608
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