4.5 Article

Extracting Terrain Texture Features for Landform Classification Using Wavelet Decomposition

Journal

Publisher

MDPI
DOI: 10.3390/ijgi10100658

Keywords

DEM; texture structure; wavelet decomposition scale; texture feature vector; landform classification

Funding

  1. National Natural Science Foundation of China [41930102, 41971339, 41771423]
  2. SDUST Research Fund [2019TDJH103]

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This study utilized texture feature analysis method to classify typical landforms in southwest Tibet, and found that DWT texture feature can achieve higher classification accuracy.
Accurate landform classification is a crucial component of geomorphology. Although extensive classification efforts have been exerted based on the terrain factor, the scale analysis to describe the macro and micro landform features still needs standard measurement. To obtain the appropriate analysis scale of landform structure feature, and then carry out landform classification using the terrain texture, the texture feature is introduced for reflecting landform spatial differentiation and homogeneity. First, applying the ALOS World 3D-30m (AW3D30) DEM and selecting typical landforms of the southwest Tibet Plateau, the discrete wavelet transform (DWT), which acts as the texture feature analysis method, is executed to dissect the multiscale structural features of the terrain texture. Second, through the structural indices of reconstructed texture images, the optimum decomposition scale of DWT is confirmed. Under these circumstances, wavelet coefficients and wavelet energy entropy are extracted as texture features. Finally, the random forest (RF) method is utilized to classify the landform. Results indicate that the texture feature of DWT can achieve higher classification accuracy, which increases by approximately 11.8% compared with the gray co-occurrence matrix (GLCM).

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