Integrating SAR and Optical Remote Sensing for Conservation-Targeted Wetlands Mapping

被引:24
作者
Sahour, Hossein [1 ]
Kemink, Kaylan M. [2 ]
O'Connell, Jessica [1 ]
机构
[1] Univ Texas Austin, Inst Marine Sci, Port Aransas, TX 78373 USA
[2] Ducks Unlimited Inc, Bismarck, ND 58503 USA
关键词
wetlands; Google Earth Engine; synthetic aperture radar; Sentinel-2; supervised classification; PRAIRIE POTHOLE REGION; DIFFERENCE WATER INDEX; SURFACE-WATER; INUNDATION DYNAMICS; LANDSAT IMAGES; COASTAL-PLAIN; VEGETATION; CLASSIFICATION; CHINA; NDWI;
D O I
10.3390/rs14010159
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The Prairie Pothole Region (PPR) contains numerous depressional wetlands known as potholes that provide habitats for waterfowl and other wetland-dependent species. Mapping these wetlands is essential for identifying viable waterfowl habitat and conservation planning scenarios, yet it is a challenging task due to the small size of the potholes, and the presence of emergent vegetation. This study develops an open-source process within the Google Earth Engine platform for mapping the spatial distribution of wetlands through the integration of Sentinel-1 C-band SAR (synthetic aperture radar) data with high-resolution (10-m) Sentinel-2 bands. We used two machine-learning algorithms (random forest (RF) and support vector machine (SVM)) to identify wetlands across the study area through supervised classification of the multisensor composite. We trained the algorithms with ground truth data provided through field studies and aerial photography. The accuracy was assessed by comparing the predicted and actual wetland and non-wetland classes using statistical coefficients (overall accuracy, Kappa, sensitivity, and specificity). For this purpose, we used four different out-of-sample test subsets, including the same year, next year, small vegetated, and small non-vegetated test sets to evaluate the methods on different spatial and temporal scales. The results were also compared to Landsat-derived JRC surface water products, and the Sentinel-2-derived normalized difference water index (NDWI). The wetlands derived from the RF model (overall accuracy 0.76 to 0.95) yielded favorable results, and outperformed the SVM, NDWI, and JRC products in all four testing subsets. To provide a further characterization of the potholes, the water bodies were stratified based on the presence of emergent vegetation using Sentinel-2-derived NDVI, and, after excluding permanent water bodies, using the JRC surface water product. The algorithm presented in the study is scalable and can be adopted for identifying wetlands in other regions of the world.
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页数:20
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