Remote Sensing (Aug 2022)

A Systematic Classification Method for Grassland Community Division Using China’s ZY1-02D Hyperspectral Observations

  • Dandan Wei,
  • Kai Liu,
  • Chenchao Xiao,
  • Weiwei Sun,
  • Weiwei Liu,
  • Lidong Liu,
  • Xizhi Huang,
  • Chunyong Feng

DOI
https://doi.org/10.3390/rs14153751
Journal volume & issue
Vol. 14, no. 15
p. 3751

Abstract

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The main feature of grassland degradation is the change in the vegetation community structure. Hyperspectral-based grassland community identification is the basis and a prerequisite for large-area high-precision grassland degradation monitoring and management. To obtain the distribution pattern of grassland communities in Xilinhot, Inner Mongolia Autonomous Region, China, we propose a systematic classification method (SCM) for hyperspectral grassland community identification using China’s ZiYuan 1-02D (ZY1-02D) satellite. First, the sample label data were selected from the field-collected samples, vegetation map data, and function zoning data for the Nature Reserve. Second, the spatial features of the images were extracted using extended morphological profiles (EMPs) based on the reduced dimensionality of principal component analysis (PCA). Then, they were input into the random forest (RF) classifier to obtain the preclassification results for grassland communities. Finally, to reduce the influence of salt-and-pepper noise, the label similarity probability filter (LSPF) method was used for postclassification processing, and the RF was again used to obtain the final classification results. The results showed that, compared with the other seven (e.g., SVM, RF, 3D-CNN) methods, the SCM obtained the optimal classification results with an overall classification accuracy (OCA) of 94.56%. In addition, the mapping results of the SCM showed its ability to accurately identify various ground objects in large-scale grassland community scenes.

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