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13 - Perspectives on the use of land-cover data for ecological investigations

from PART III - Landscape patterns

Published online by Cambridge University Press:  20 November 2009

Thomas R. Loveland
Affiliation:
US Geological Survey USA
Alisa L. Gallant
Affiliation:
Raytheon ITSS USA
James E. Vogelmann
Affiliation:
Raytheon ITSS USA
John A. Wiens
Affiliation:
The Nature Conservancy, Washington DC
Michael R. Moss
Affiliation:
University of Guelph, Ontario
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Summary

An important ingredient of many research applications in landscape ecology is land-cover data. Land-cover databases reflect the patterns of vegetation, the extent of anthropogenic activity, and the potential for future uses and disturbances of the landscape. These databases are essential for studies of landscape spatial configuration and investigations of ecological status, trends, stresses, and relationships. The evolution of land-cover databases and landscape applications is an iterative process, driven by new developments at both ends. There is a strong demand at all scales for land-cover data, and those developing such data sets must constantly work toward improvements in data content, quality, and documentation to meet the diverse needs of scientific users.

The development of land-cover databases is a major focus of the US Geological Survey (USGS) National Land-cover Characterization Program. Projects span local, to regional, to global venues (e.g., Loveland et al., 1991, 2000; Vogelmann et al., 2001) and the results contribute to a wide range of applications (e.g., Jones et al., 1997, 2001; DeFries and Los, 1999; Hurtt et al., 2001; Maselli and Rembold, 2001). While some of the applications are quite innovative, we find others worrisome, considering the limitations of the source materials, mapping technologies, and expertise inherent in data development. These limitations are important to landscape ecologists because the resultant imperfections in the data sets affect the accuracy, consistency, and credibility of the analyses applied to them.

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Publisher: Cambridge University Press
Print publication year: 2005

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