DocumentCode :
80742
Title :
Spectral Discrimination of Insect Defoliation Levels in Mopane Woodland Using Hyperspectral Data
Author :
Adelabu, Samuel ; Mutanga, Onisimo ; Adam, Elhadi ; Sebego, Reuben
Author_Institution :
Geogr. Dept., Univ. of KwaZulu-Natal, Pietermaritzburg, South Africa
Volume :
7
Issue :
1
fYear :
2014
fDate :
Jan. 2014
Firstpage :
177
Lastpage :
186
Abstract :
Mopane woodland are a source of valuable resources that contribute substantially to rural economies and nutrition across Southern Africa. However, a number of factors have, of late, brought the sustainability of the mopane woodland resources into question. One of such factors is the difficulty in monitoring of defoliation process within the woodland. In this study we set out to discriminate the levels of change in forest canopy cover detectable after insect defoliation using ground based hyperspectral measurements in mopane woodland. Canopy spectral measurements were taken from three levels of defoliation: Undefoliated (UD), Partly defoliated (PD) and Refoliating plants (R) using ASD FieldSpec HandHeld 2. A pre-filtering approach (ANOVA) was compared with random forest independent variable selector in selecting the significant wavelengths for classification. Furthermore, a backward feature elimination method was used to select optimal wavelengths for discriminating the different levels of defoliation in mopane woodland. Results show that optimal wavelengths located at 707 nm, 710 nm, 711 nm, 712 nm, 713 nm, 714 nm, 727 nm, and 1066 nm were able to discriminate between the three levels of defoliation. The results further show that there was no significant difference in the overall accuracy of classification when random forest variable selector was used 82.42% (Kappa = 0.64) and the pre-filtering approach (ANOVA) 81.21% (Kappa = 0.68) used before building the classification. Overall, the study clearly demonstrated that the dynamic process of defoliation in mopane woodland can be assessed and detected using hyperspectral dataset and effective algorithm for discrimination.
Keywords :
vegetation; ASD FieldSpec HandHeld; Southern Africa; backward feature elimination method; canopy spectral measurements; defoliation dynamic process; defoliation process monitoring; forest canopy cover; hyperspectral data; insect defoliation levels; mopane woodland resources; partly defoliated plant; pre-filtering approach; random forest independent variable selector; random forest variable selector; refoliating plant; rural economies; spectral discrimination; undefoliated plant; wavelength 1066 nm; wavelength 707 nm; wavelength 710 nm; wavelength 711 nm; wavelength 712 nm; wavelength 713 nm; wavelength 714 nm; wavelength 727 nm; Accuracy; Analysis of variance; Hyperspectral imaging; Insects; Vegetation; Wavelength measurement; ANOVA; defoliation; hyperspectral; mopane woodland; random forest;
fLanguage :
English
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher :
ieee
ISSN :
1939-1404
Type :
jour
DOI :
10.1109/JSTARS.2013.2258329
Filename :
6521428
Link To Document :
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