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Using Bi-Seasonal WorldView-2 Multi-Spectral Data and Supervised Random Forest Classification to Map Coastal Plant Communities in Everglades National Park

Using Bi-Seasonal WorldView-2 Multi-Spectral Data and Supervised Random Forest Classification to Map Coastal Plant Communities in Everglades National Park
Coastal plant communities are being transformed or lost because of sea level rise (SLR) and land-use change. In conjunction with SLR, the Florida Everglades ecosystem has undergone large-scale drainage and restoration, altering coastal vegetation throughout south Florida. To understand how coastal plant communities are changing over time, accurate mapping techniques are needed that can define plant communities at a fine-enough resolution to detect fine-scale changes. We explored using bi-seasonal versus single-season WorldView-2 satellite data to map three mangrove and four adjacent plant communities, including the buttonwood/glycophyte community that harbors the federally-endangered plant Chromolaena frustrata. Bi-seasonal data were more effective than single-season to differentiate all communities of interest. Bi-seasonal data combined with Light Detection and Ranging (LiDAR) elevation data were used to map coastal plant communities of a coastal stretch within Everglades National Park (ENP). Overall map accuracy was 86%. Black and red mangroves were the dominant communities and covered 50% of the study site. All the remaining communities had ≤10% cover, including the buttonwood/glycophyte community. ENP harbors 21 rare coastal species threatened by SLR. The spatially explicit, quantitative data provided by our map provides a fine-scale baseline for monitoring future change in these species’ habitats. Our results also offer a method to monitor vegetation change in other threatened habitats.
- Everglades Foundation United States
- Everglades Foundation United States
- Department of Biological Science Florida State University United States
- Florida International University United States
- Department of Biological Science Florida State University United States
mangrove, Chemical technology, conservation, Life Sciences, random forest classifier, TP1-1185, species spectral separability, Article, climate change, sea level rise, habitat monitoring, mangrove; species spectral separability; random forest classifier; rare species; habitat monitoring; sea level rise; climate change; conservation, rare species
mangrove, Chemical technology, conservation, Life Sciences, random forest classifier, TP1-1185, species spectral separability, Article, climate change, sea level rise, habitat monitoring, mangrove; species spectral separability; random forest classifier; rare species; habitat monitoring; sea level rise; climate change; conservation, rare species
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