Abstract

To better understand and mitigate threats to the long-term health and functioning of wetlands, there is need to establish comprehensive inventorying and monitoring programs. Here, remote sensing data and machine learning techniques that could support or substitute traditional field-based data collection are evaluated. For the Bay of Quinte on Lake Ontario, Canada, different combinations of multi-angle/temporal quad pol RADARSAT-2, simulated compact pol RADARSAT Constellation Mission (RCM), and high and low spatial resolution Digital Elevation and Surface Models (DEM and DSM, respectively) were used to classify six land cover classes with Random Forests: shallow water, marsh, swamp, water, forest, and agriculture/non-forested. Results demonstrate that high accuracies can be achieved with multi-temporal SAR data alone (e.g., user’s and producer’s accuracies ≥90% for a model based on a spring image and a summer image), or via fusion of SAR and DEM and DSM data for single dates/incidence angles (e.g., user’s and producer’s accuracies ≥90% for a model based on a spring image, DEM, and DSM data). For all models based on single SAR images, simulated compact pol data generally achieved lower accuracies than quad pol RADARSAT-2 data. However, it was possible to compensate for observed differences through either multi-temporal/angle data fusion or the inclusion of DEM and DSM data (i.e., as a result, there was not a statistically significant difference between multiple models). With a higher repeat-pass cycle than RADARSAT-2, RCM is expected to be a reliable source of C-band SAR data that will contribute positively to ongoing efforts to inventory wetlands and monitor change in areas containing the same land cover classes evaluated here.

Highlights

  • Wetlands provide a number of ecosystem services to both plant and animal species, including some that are at risk, threatened, or regionally rare [1]

  • Results from this analysis have provided insight regarding the effect of the timing, incidence angle, and combination of Synthetic Aperture RADAR (SAR) and/or DEM/DSM data on Random Forests (RF) classification accuracies for three wetland, and four non-wetland classes

  • For some combinations of data, there were no statistically significant differences in accuracy between models based on QP or simulated compact pol (CP) RADARSAT Constellation Mission (RCM) imagery, it is expected to be a reliable source of C-band SAR data for inventorying and monitoring the wetland types evaluated here

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Summary

Introduction

Wetlands provide a number of ecosystem services to both plant and animal species, including some that are at risk, threatened, or regionally rare [1]. Humans benefit directly from wetlands since they filter water, prevent shoreline erosion, reduce flooding and are used for recreation [5] These sensitive ecosystems continue to face pressures associated with the adverse and cumulative effects of anthropogenic disturbance, pollution, climate change, and invasive species [6,7]. Climate change is expected to alter ambient temperatures, precipitation levels, and evapotranspiration rates, as well as modify and increase the variability of flow regimes [8,9]. For species that are adapted to certain water depths and flood durations, this is expected to impact both the quality and quantity of suitable habitat, and could create conditions that are favorable for the expansion of native generalist and/or invasive species [11]. This is especially concerning for places such as the Great Lakes Basin in North America, where invasive species such as Phragmites australisare already widespread [12]

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