Title
Multispectral Remote Sensing from Unmanned Aircraft: Image Processing Workflows and Applications for Rangeland Environments
Abstract
Using unmanned aircraft systems (UAS) as remote sensing platforms offers the unique ability for repeated deployment for acquisition of high temporal resolution data at very high spatial resolution. Multispectral remote sensing applications from UAS are reported in the literature less commonly than applications using visible bands, although light-weight multispectral sensors for UAS are being used increasingly.. In this paper, we describe challenges and solutions associated with efficient processing of multispectral imagery to obtain orthorectified, radiometrically calibrated image mosaics for the purpose of rangeland vegetation classification. We developed automated batch processing methods for file conversion, band-to-band registration, radiometric correction, and orthorectification. An object-based image analysis approach was used to derive a species-level vegetation classification for the image mosaic with an overall accuracy of 87%. We obtained good correlations between: (1) ground and airborne spectral reflectance (R-2 = 0.92); and (2) spectral reflectance derived from airborne and WorldView-2 satellite data for selected vegetation and soil targets. UAS-acquired multispectral imagery provides quality high resolution information for rangeland applications with the potential for upscaling the data to larger areas using high resolution satellite imagery.
Year
DOI
Venue
2011
10.3390/rs3112529
REMOTE SENSING
Keywords
Field
DocType
Unmanned Aircraft Systems (UAS),multispectral,reflectance,classification
Computer vision,Satellite imagery,Multispectral image,Remote sensing,Image processing,Multispectral pattern recognition,Artificial intelligence,Vegetation classification,Geology,Image resolution,Temporal resolution,Orthophoto
Journal
Volume
Issue
Citations 
3
11
45
PageRank 
References 
Authors
4.17
5
4
Name
Order
Citations
PageRank
Andrea S. Laliberte19511.54
mark a goforth2454.17
c m steele3475.02
Albert Rango410115.65