Abstract

The Delmarva Peninsula in the eastern United States is partially characterized by thousands of small, forested, depressional wetlands that are highly sensitive to weather variability and climate change, but provide critical ecosystem services. Due to the relatively small size of these depressional wetlands and their occurrence under forest canopy cover, it is very challenging to map their inundation status based on existing remote sensing data and traditional classification approaches. In this study, we applied a state-of-the-art U-Net semantic segmentation network to map forested wetland inundation in the Delmarva area by integrating leaf-off WorldView-3 (WV3) multispectral data with fine spatial resolution light detection and ranging (lidar) intensity and topographic data, including a digital elevation model (DEM) and topographic wetness index (TWI). Wetland inundation labels generated from lidar intensity were used for model training and validation. The wetland inundation map results were also validated using field data, and compared to the U.S. Fish and Wildlife Service National Wetlands Inventory (NWI) geospatial dataset and a random forest output from a previous study. Our results demonstrate that our deep learning model can accurately determine inundation status with an overall accuracy of 95% (Kappa = 0.90) compared to field data and high overlap (IoU = 70%) with lidar intensity-derived inundation labels. The integration of topographic metrics in deep learning models can improve the classification accuracy for depressional wetlands. This study highlights the great potential of deep learning models to improve the accuracy of wetland inundation maps through use of high-resolution optical and lidar remote sensing datasets.

Highlights

  • Within the contiguous United States (CONUS), forested wetlands are common along the East Coast [1]

  • By including either topographic data (i.e., digital elevation model (DEM) or topographic wetness index (TWI)) into the deep learning model, our OA increased to 95% with a higher F1 score (>= 0.94) and Kappa coefficient (>= 0.89) (Table 2)

  • The lidar intensity-derived inundation labels showed a high overall accuracy (95%) compared to the 2015 field polygons, which was validated by a separate group of field points

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Summary

Introduction

Within the contiguous United States (CONUS), forested wetlands are common along the East Coast [1]. The inundation status of the wetlands provides a key indicator of climate variability and shifts in hydrological (e.g., floodwater storage), biogeochemical (e.g., carbon sequestration) and biological (e.g., habitats) functions [2]. Many of the forested wetlands occur in small (e.g.,

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