Bulletin of Surveying and Mapping ›› 2021, Vol. 0 ›› Issue (6): 12-15.doi: 10.13474/j.cnki.11-2246.2021.0168

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Wetland classification method of Dongting Lake district based on CART using GF-2 image

CHEN Leishi1,2, GAO Xiaxia1,2, LIAO Yufang1,2, DENG Jianbo1,2, ZHOU Bi1,2   

  1. 1. Hunan Meteorological Research Institute, Changsha 410118, China;
    2. Key Lab of Hunan Province for Meteorological Disaster Prevention and Mitigation, Changsha 410118, China
  • Received:2021-01-25 Revised:2021-04-17 Published:2021-06-28

Abstract: In order to improve the classification accuracy of wetland classification through satellite remote sensing, it is necessary to overcome the “same object with different spectrum, different object with the same spectrum” problem which exists in the wetland classification of high spatial resolution satellite image. The research explores the combination of the Chinese sub-meter-level GF-2 image, which has a broad application prospect, and the object-based image analysis classification algorithm based on classification and regression tree. Then, the classification and extraction of wetlands in the Dongting Lake district were carried out by using the Yuanjiang city in Hunan as an example. Multi-dimensional object features including spectral information, geometric features, terrain features and texture features were selected to train the classifier. Constructed a set of wetland classification methods of classification and regression tree based on GF-2 image. Accuracy evaluation data shows that the overall classification accuracy of the method reaches higher value. The results show that the method can provide ideas for the classification of Dongting Lake district wetland based on GF-2 image.

Key words: wetland, GF-2, classification and regression tree, object-based, classification features, Dongting Lake district

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