Exploration of satellite-measured vegetation seasonality for Landfire land cover
The purpose of this study is to explore the use of satellite data and other sources of spatial data for large area classification in the western United States to support research on potential fire hazards. Extensive field information was made available to this project from two sources: Forest Inventory and Assessment (FIA) and Utah State University. Seasonal spectral patterns of reflectance generated for select vegetation communities indicated that substantial spectral changes occurred through the growing season for most land cover types. In many cases, pronounced spectral differences characterized different types of vegetation, indicating a high probability that classification will accurately separate these particular types of land cover. However, spectral similarities between other types of land cover, such as Douglas fir and white fir, indicate potential classification challenges. Results from this study also show that decision tree analysis is highly effective for assessing quality of input field data and for generating large area land cover classification data sets. It was found that a 5-7% improvement in classification results could be achieved simply by not using those field plots that appeared to be sub-optimal for classification purposes based on image interpretation.
Citation Information
Publication Year | 2003 |
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Title | Exploration of satellite-measured vegetation seasonality for Landfire land cover |
Authors | James Vogelmann, Chengquan Huang, Brian L. Tolk, Gretchen G. Moisen, Zhiliang Zhu |
Publication Type | Conference Paper |
Publication Subtype | Conference Paper |
Index ID | 70263737 |
Record Source | USGS Publications Warehouse |
USGS Organization | Earth Resources Observation and Science (EROS) Center |