TANG Huanli, LIU Kai, ZHU Yuanhui, et al. Mangrove Community Classification Based on WorldView-2 Image and SVM Method[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2015,54(4):102-111.
TANG Huanli, LIU Kai, ZHU Yuanhui, et al. Mangrove Community Classification Based on WorldView-2 Image and SVM Method[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2015,54(4):102-111.DOI:
Using remote sensing technology in Mangrove Community Classification is very significant for surveying
taking advantage of and protecting Mangrove resource. In this study
based on the spectrum characteristics of mangroves
vegetation index and texture information calculated from WorldView-2 satellite imagery
we used object-oriented classification method
SVM (Support Vector Machine)
in conjunction with field surveys to map mangrove forest at communities-level in Daweiwan District
Qi'ao Island
Zhuhai. The single-scale and multi-scale classification were also compared. The results indicated that WorldView-2 data
a very high-resolution satellite remote sensing imagery with 8 bands are very suitable for mangrove forest classification using objectoriented and SVM method. The overall accuracy and Kappa indices for mangrove forest classification at the species level in the study area were 84.2% and 0.794 for multi-scaled analysis and 69.8% and 0.616 for the single-scaled.