1. Evaluation of sensor types and environmental controls on mapping biomass of coastal marsh emergent vegetation
- Author
-
Kristin B. Byrd, Jessica L. O’Connell, Stefania Di Tommaso, and Maggi Kelly
- Subjects
Hydrology ,geography ,River delta ,geography.geographical_feature_category ,Marsh ,Multispectral image ,Soil Science ,Hyperspectral imaging ,Geology ,Wetland ,Blue carbon ,Partial least squares regression ,Environmental science ,Computers in Earth Sciences ,Eutrophication ,Remote sensing - Abstract
article i nfo There isaneedtoquantify large-scale plantproductivityincoastalmarshestounderstandmarshresiliencetosea level rise, to help define eligibility for carbon offset credits, and to monitor impacts from land use, eutrophication and contamination. Remote monitoring of aboveground biomass of emergent wetland vegetation will help address this need. Differences in sensor spatial resolution, bandwidth, temporal frequency and cost constrain the accuracy of biomass maps produced for management applications. In addition the use of vegetation indices to map biomass may not be effective in wetlands due to confounding effects of water inundation on spectral re- flectance. Toaddress these challenges,we used partial least squares regression to select optimal spectral features in situ and with satellite reflectance data to develop predictive models of aboveground biomass for common emergent freshwater marsh species,Typhaspp. andSchoenoplectus acutus, at two restored marshes in the Sacra- mento-San Joaquin River Delta, California, USA. We usedfield spectrometer data to test model errors associated with hyperspectral narrowbands and multispectral broadbands, the influence of water inundation on prediction accuracy, and the ability to develop species specific models. We used Hyperion data, Digital Globe World View-2 (WV-2) data, and Landsat 7 data to scale up the best statistical models of biomass. Field spectrometer-based models of the full dataset showed that narrowband reflectance data predicted biomass somewhat, though not significantly better than broadband reflectance data (R 2
- Published
- 2014
- Full Text
- View/download PDF