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Regional scale dryland vegetation classification with an integrated lidar-hyperspectral approach
پدید آورنده
Dashti, H; Poley, A; Glenn, NF; Ilangakoon, N; Spaete, L; Roberts, D; Enterkine, J; Flores, AN; Ustin, SL; Mitchell, JJ
موضوع
رده
کتابخانه
Center and Library of Islamic Studies in European Languages
محل استقرار
استان:
Qom
ـ شهر:
Qom
تماس با کتابخانه :
32910706
-
025
NATIONAL BIBLIOGRAPHY NUMBER
Number
LA61j394qd
TITLE AND STATEMENT OF RESPONSIBILITY
Title Proper
Regional scale dryland vegetation classification with an integrated lidar-hyperspectral approach
General Material Designation
[Article]
First Statement of Responsibility
Dashti, H; Poley, A; Glenn, NF; Ilangakoon, N; Spaete, L; Roberts, D; Enterkine, J; Flores, AN; Ustin, SL; Mitchell, JJ
SUMMARY OR ABSTRACT
Text of Note
© 2019 by the authors. The sparse canopy cover and large contribution of bright background soil, along with the heterogeneous vegetation types in close proximity, are common challenges for mapping dryland vegetation with remote sensing. Consequently, the results of a single classification algorithm or one type of sensor to characterize dryland vegetation typically show low accuracy and lack robustness. In our study, we improved classification accuracy in a semi-arid ecosystem based on the use of vegetation optical (hyperspectral) and structural (lidar) information combined with the environmental characteristics of the landscape. To accomplish this goal, we used both spectral angle mapper (SAM) and multiple endmember spectral mixture analysis (MESMA) for optical vegetation classification. Lidar-derived maximum vegetation height and delineated riparian zones were then used to modify the optical classification. Incorporating the lidar information into the classification scheme increased the overall accuracy from 60% to 89%. Canopy structure can have a strong influence on spectral variability and the lidar provided complementary information for SAM's sensitivity to shape but not magnitude of the spectra. Similar approaches to map large regions of drylands with low uncertainty may be readily implemented with unmixing algorithms applied to upcoming space-based imaging spectroscopy and lidar. This study advances our understanding of the nuances associated with mapping xeric and mesic regions, and highlights the importance of incorporating complementary algorithms and sensors to accurately characterize the heterogeneity of dryland ecosystems.
SET
Date of Publication
2019
Title
UC Davis
ELECTRONIC LOCATION AND ACCESS
Electronic name
مطالعه متن کتاب
[Article]
275578
a
Y
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