Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From Cameroon

Forest degradation is an important issue in global environmental studies, albeit not yet well defined in quantitative terms. The present work addresses the problem, by starting with the assumption that forest spatial structure can provide an indication of the process of forest degradation, this bein...

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Main Authors: Elsa C. De Grandi, Edward Mitchard, Iain H. Woodhouse, Gianfranco D. De Grandi
Format: Article
Language:English
Published: IEEE 2015-01-01
Series:IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7103285/
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author Elsa C. De Grandi
Edward Mitchard
Iain H. Woodhouse
Gianfranco D. De Grandi
author_facet Elsa C. De Grandi
Edward Mitchard
Iain H. Woodhouse
Gianfranco D. De Grandi
author_sort Elsa C. De Grandi
collection DOAJ
description Forest degradation is an important issue in global environmental studies, albeit not yet well defined in quantitative terms. The present work addresses the problem, by starting with the assumption that forest spatial structure can provide an indication of the process of forest degradation, this being reflected in the spatial statistics of synthetic aperture radar (SAR) backscatter observations. The capability of characterizing landcover classes, such as intact and degraded forest (DF), is tested by supervised analysis of ENVISAT ASAR and ALOS PALSAR backscatter spatial statistics, provided by wavelet frames. The test is conducted in a closed semideciduous forest in Cameroon, Central Africa. Results showed that wavelet variance scaling signatures, which are measures of the SAR backscatter two-point statistics in the combined space-scale domain, are able to differentiate landcover classes by capturing their spatial distribution. Discrimination between intact and DF was found to be enabled by functional analysis of the wavelet scaling signatures of C-band ENVISAT ASAR data. Analytic parameters, describing the functional form of the scaling signatures when fitted by a third-degree polynomial, resulted in a statistically significant difference between the signatures of intact and DF. The results with ALOS PALSAR, on the other hand, were not significant. The technique sets the stage for promising developments for tracking forest disturbance, especially with the future availability of C-band data provided by ESA Sentinel-1.
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spelling doaj.art-80ae8b6656cb4aae829aa8491db481082022-12-21T21:58:49ZengIEEEIEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing2151-15352015-01-01873572358410.1109/JSTARS.2015.24205967103285Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From CameroonElsa C. De Grandi0Edward Mitchard1Iain H. Woodhouse2Gianfranco D. De Grandi3School of GeoSciences, University of Edinburgh, Edinburgh, U.K.School of GeoSciences, University of Edinburgh, Edinburgh, U.K.School of GeoSciences, University of Edinburgh, Edinburgh, U.K. European Commission, Joint Research Center, Ispra, ItalyForest degradation is an important issue in global environmental studies, albeit not yet well defined in quantitative terms. The present work addresses the problem, by starting with the assumption that forest spatial structure can provide an indication of the process of forest degradation, this being reflected in the spatial statistics of synthetic aperture radar (SAR) backscatter observations. The capability of characterizing landcover classes, such as intact and degraded forest (DF), is tested by supervised analysis of ENVISAT ASAR and ALOS PALSAR backscatter spatial statistics, provided by wavelet frames. The test is conducted in a closed semideciduous forest in Cameroon, Central Africa. Results showed that wavelet variance scaling signatures, which are measures of the SAR backscatter two-point statistics in the combined space-scale domain, are able to differentiate landcover classes by capturing their spatial distribution. Discrimination between intact and DF was found to be enabled by functional analysis of the wavelet scaling signatures of C-band ENVISAT ASAR data. Analytic parameters, describing the functional form of the scaling signatures when fitted by a third-degree polynomial, resulted in a statistically significant difference between the signatures of intact and DF. The results with ALOS PALSAR, on the other hand, were not significant. The technique sets the stage for promising developments for tracking forest disturbance, especially with the future availability of C-band data provided by ESA Sentinel-1.https://ieeexplore.ieee.org/document/7103285/Degraded forest (DF)spatial statisticssynthetic aperture radar (SAR)texturewavelet transform
spellingShingle Elsa C. De Grandi
Edward Mitchard
Iain H. Woodhouse
Gianfranco D. De Grandi
Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From Cameroon
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
Degraded forest (DF)
spatial statistics
synthetic aperture radar (SAR)
texture
wavelet transform
title Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From Cameroon
title_full Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From Cameroon
title_fullStr Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From Cameroon
title_full_unstemmed Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From Cameroon
title_short Spatial Wavelet Statistics of SAR Backscatter for Characterizing Degraded Forest: A Case Study From Cameroon
title_sort spatial wavelet statistics of sar backscatter for characterizing degraded forest a case study from cameroon
topic Degraded forest (DF)
spatial statistics
synthetic aperture radar (SAR)
texture
wavelet transform
url https://ieeexplore.ieee.org/document/7103285/
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