Effects of Pixel Resolution, Mapping Window Size, and Spectral Species
Classification on Remote Sensing of Plant Beta Diversity Using
biodivMapR and Hyperspectral Imagery
Abstract
Using imaging spectroscopy (hyperspectral imaging), we sought to assess
the effects of image pixel resolution, size of mapping windows composed
of pixels, and number of spectral species assigned to pixels on the
capacity to map plant beta diversity using the biodivMapR algorithm, in
support of the planned NASA Surface Biology and Geology (SBG) satellite
remote sensing mission. BiodivMapR classifies pixels as spectral
species, then calculates beta diversity as dissimilarity of spectral
species among mapping windows each composed of multiple pixels. We used
NEON airborne 1 m resolution hyperspectral images collected at three
sites representing native longleaf pine ecosystems in the southeastern
U.S. and aggregated pixels to sizes ranging from 1-90 m for comparative
analyses. Plant community composition was groundtruthed. Results show
that the capacity to detect plant beta diversity decreases with fewer
pixels per mapping window, such that pixel resolution limits the size of
mapping windows effective for representing beta diversity. Mapping
window size in turn limits the spatial resolution of beta diversity maps
composed of mapping windows. Assigning too few pixels per window, as
well as assigning too many spectral species per image, results in
overestimation of dissimilarity among locations that have plant species
in common. This overestimation undermines the capacity to contrast
mapping window dissimilarity within versus among community types and
reduces the information content of beta diversity maps. These results
demonstrate the advantage of maximizing spatial resolution of
hyperspectral imaging instruments on the anticipated NASA SBG satellite
mission and similar remote sensing projects.