• Media type: E-Article; Text
  • Title: Wetland Mapping in Great Lakes Using Sentinel-1/2 Time-Series Imagery and DEM Data in Google Earth Engine
  • Contributor: Mohseni, Farzane [Author]; Amani, Meisam [Author]; Mohammadpour, Pegah [Author]; Kakooei, Mohammad [Author]; Jin, Shuanggen [Author]; Moghimi, Armin [Author]
  • imprint: Basel : MDPI, 2023
  • Published in: Remote Sensing 15 (2023), Nr. 14 ; Remote Sensing
  • Issue: published Version
  • Language: English
  • DOI: https://doi.org/10.15488/15229; https://doi.org/10.3390/rs15143495
  • Keywords: Great Lakes ; random forest classification ; Google Earth Engine ; remote sensing ; wetlands
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  • Description: The Great Lakes (GL) wetlands support a variety of rare and endangered animal and plant species. Thus, wetlands in this region should be mapped and monitored using advanced and reliable techniques. In this study, a wetland map of the GL was produced using Sentinel-1/2 datasets within the Google Earth Engine (GEE) cloud computing platform. To this end, an object-based supervised machine learning (ML) classification workflow is proposed. The proposed method contains two main classification steps. In the first step, several non-wetland classes (e.g., Barren, Cropland, and Open Water), which are more distinguishable using radar and optical Remote Sensing (RS) observations, were identified and masked using a trained Random Forest (RF) model. In the second step, wetland classes, including Fen, Bog, Swamp, and Marsh, along with two non-wetland classes of Forest and Grassland/Shrubland were identified. Using the proposed method, the GL were classified with an overall accuracy of 93.6% and a Kappa coefficient of 0.90. Additionally, the results showed that the proposed method was able to classify the wetland classes with an overall accuracy of 87% and a Kappa coefficient of 0.91. Non-wetland classes were also identified more accurately than wetlands (overall accuracy = 96.62% and Kappa coefficient = 0.95).
  • Access State: Open Access