
The highest overall accuracy of our mapping results was 78.57% and the Kappa coefficient was 0.74, which indicated great potential of using the combination of S2 MSI and GE imagery for distinguishing and mapping mangrove species. The SVM classifier was used in mangrove species classification processing with eight groups of features, which were based on different S2 spectral bands and different GE spatial resolution textural features. Roll the dice to discover someplace new, take a guided tour with Voyager, and create. In the classification feature groups, the spectral bands were from the S2 MSI data and the textural features were based on GE imagery. With Google Earth for Chrome, fly anywhere in seconds and explore hundreds of 3D cities right in your browser. In this study, mangrove species classification in Shenzhen Bay, China was performed by using Sentinel 2 (S2) Multi Spectral Instrument (MSI) data and Google Earth (GE) high resolution imagery as data sources and their suitability in mapping mangrove forest at a species level was examined. Spectral bands and spatial resolution of remote sensing data are two important factors for accurate discrimination of mangrove species. Even add your annotations.Knowledge gained about the mangrove species mapping is essential to understand mangrove species development and to better estimate their ecological service value. Save and share your searches and favorites.Tilt and rotate the view to see 3D terrain and buildings.Search for schools, parks, restaurants, and hotels.

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