研究目的
To develop a water index from Sentinel-2 that improves native resolution and accuracy of water mapping at the same time.
研究成果
The study proposed a new automated water index method MuWI with the ability to natively produce 10 m water maps on Sentinel-2 MSI imagery. The methodological strength of the study is mainly the use of a machine learning algorithm SVM for objective, explicit index development. Accuracy comparisons among Landsat-developed water index methods showed that the proposed MuWI method produced water maps with increased spatial resolution (10-m) and lowered commission and omission errors.
研究不足
The study acknowledges uncertainties attributable to the processing of Sentinel-2 spectral reflectance and the temporal differences of water extents in validation images. The impact of vegetations on water mapping is not specially tested, which may considerably affect water mapping.
1:Experimental Design and Method Selection:
The study uses Support Vector Machine (SVM) to exploit the 10-m spectral bands among Sentinel-2 bands of three resolutions (10-m; 20-m; 60-m). The new Multi-Spectral Water Index (MuWI) is designed as the combination of normalized differences for threshold stability.
2:Sample Selection and Data Sources:
The proposed method is assessed on coincident Sentinel-2 and sub-meter images covering a variety of water types.
3:List of Experimental Equipment and Materials:
Sentinel-2 MSI images and sub-meter reference images from WorldView and Pléiades satellites.
4:Experimental Procedures and Operational Workflow:
The study involves training the SVM model using labeled water and non-water pixels, constructing OSH based on the trained SVM model, and linking MuWI to OSH.
5:Data Analysis Methods:
The accuracy of water mapping is measured by confusion matrix, overall accuracy, commission error, omission error, and Cohen’s kappa coefficient.
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