High-resolution mapping of upland swamp vegetation using an unmanned aerial vehicle-hyperspectral system
Author(s) -
Bikram Pratap Banerjee,
Simit Raval,
Patrick J. Cullen
Publication year - 2017
Publication title -
journal of spectral imaging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.256
H-Index - 6
ISSN - 2040-4565
DOI - 10.1255/jsi.2017.a6
Subject(s) - hyperspectral imaging , remote sensing , swamp , vegetation (pathology) , vegetation classification , environmental science , aerial survey , imaging spectrometer , geography , spectrometer , ecology , medicine , physics , pathology , quantum mechanics , biology
Mapping of vegetation species and communities in sensitive ecosystems is essential for identification andmanagement of anthropogenic impacts. Unmanned aerial vehicle (UAV)-hyperspectral systems are among the latesttechnologies in remote sensing that hold a potential for obtaining unprecedented quality of remote sensing data forvegetation mapping and health status monitoring applications. In this study, high-resolution (1–1.5 cm) spectral imaging data (15 bands) from a tunable spectrometer is used to map five species of vegetation in a complex upland swampenvironment. The overall accuracy of classification was found to be 88.9% with a kappa coefficient of 0.83. Threeclasses (bare earth, sedgeland grass and black sheoak) have achieved higher accuracy (above 78%) and one class(bracken fern) has lower accuracy (58%). UAV-hyperspectral technology is, therefore, an effective tool to identify andmap sensitive swamp vegetation. The technology can be potentially applied to determine the health status of thespecies.
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