Back to Search Start Over

Automatic classification of land cover on smith island, VA, using HyMAP imagery

Authors :
Bachmann, Charles M.
Donato, Timothy F.
Lamela, Gia M.
Rhea, W. Joseph
Bettenhausen, Michael H.
Fusina, Robert A.
Du Bois, Kevin R.
Porter, John H.
Truitt, Barry R.
Source :
IEEE Transactions on Geoscience and Remote Sensing. Oct, 2002, Vol. 40 Issue 10, p2313, 18 p.
Publication Year :
2002

Abstract

Automatic land cover classification maps were developed from Airborne Hyperspectral Scanner (HyMAP) imagery acquired May 8, 2000 over Smith Island, VA, a barrier island in the Virginia Coast Reserve. Both unsupervised and supervised classification approaches were used to create these products to evaluate relative merits and to develop models that would be useful to natural resource managers at higher spatial resolution than has been available previously. Ground surveys made by us in late October and early December 2000 and again in May, August, and October 2001 and May 2002 provided ground truth data for 20 land cover types. Locations of pure land cover types recorded with global positioning system (GPS) data from these surveys were used to extract spectral end-members for training and testing supervised and cover classification models. Unsupervised exploratory models were also developed using spatial-spectral windows and projection pursuit (PP), a class of algorithms suitable for extracting multimodal views of the data. PP projections were clustered by ISODATA to produce an unsupervised classification. Supervised models, which relied on the GPS data, used only spectral inputs because for some categories in particular areas, labeled data consisted of isolated single-pixel waypoints. Both approaches to the classification problem produced consistent results for some categories such as Spartina alterniflora, although there were differences for other categories. Initial models for supervised classification based on 112 HyMAP spectra, labeled in ground surveys, obtained reasonably consistent results for many of the dominant categories, with a few exceptions. For an invasive plant species, Phragmites australis, a particular concern of natural resource managers, this approach initially had an excessively high false-alarm rate. Increasing the number of spectral training samples by an order of magnitude and making concomitant improvements to the georectification led to dramatic improvements in this and other categories. The unsupervised spatial-spectral approach also found a cluster closely associated with Phragmites patches near the thicket boundary, but this approach did not identify the exposed Phragmites. Examples of in situ reflectance measurements obtained with an Analytical Spectral Devices FR spectrometer in early May 2001 are compared against HyMAP image spectra at model-predicted pixels and at validated GPS waypoints. Index Terms--Barrier islands, hyperspectral, in situ spectrometry, invasive plant species, land cover classification, neural networks, principle component analysis, projection pursuit, supervised classification, unsupervised classification.

Details

ISSN :
01962892
Volume :
40
Issue :
10
Database :
Gale General OneFile
Journal :
IEEE Transactions on Geoscience and Remote Sensing
Publication Type :
Academic Journal
Accession number :
edsgcl.95914470