Publication | Closed Access
Discrimination and classification of mangrove forests using EO-1 Hyperion data: a case study of Indian Sundarbans
54
Citations
52
References
2017
Year
Precision AgricultureEnvironmental MonitoringVegetation IndicesBotanyEngineeringForest BiometricsForestryTerrestrial SensingSocial SciencesBiogeographyPattern RecognitionIndian SundarbansBiodiversityGeographyMangrove ForestsMangrove MaskHyperspectral ImagingDeforestationLand Cover MapEo-1 Hyperion DataIdentification AccuracyRemote SensingForest Inventory
In remote sensing the identification accuracy of mangroves is greatly influenced by terrestrial vegetation. This paper deals with the use of specific vegetation indices for extracting mangrove forests using Earth Observing-1 Hyperion image over a portion of Indian Sundarbans, followed by classification of mangroves into floristic composition classes. Five vegetation indices (three new and two published), namely Mangrove Probability Vegetation Index, Normalized Difference Wetland Vegetation Index, Shortwave Infrared Absorption Index, Normalized Difference Infrared Index and Atmospherically Corrected Vegetation Index were used in decision tree algorithm to develop the mangrove mask. Then, three full-pixel classifiers, namely Minimum Distance, Spectral Angle Mapper and Support Vector Machine (SVM) were evaluated on the data within the mask. SVM performed better than the other two classifiers with an overall precision of 99.08%. The methodology presented here may be applied in different mangrove areas for producing community zonation maps at finer levels.
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