IEEE Geoscience and Remote Sensing Letters | 2021

Composite Kernel and Hybrid Discriminative Random Field Model Based on Feature Fusion for PolSAR Image Classification

 
 
 

Abstract


To effectively fuse the high-dimensional features, in this letter, we propose the composite kernel and hybrid discriminative random field model, abbreviated as CK-hybrid discriminative random field (HDRF), for polarimetric synthetic aperture radar (PolSAR) image classification. In the CK-HDRF model, given high-dimensional features with different characteristics, the unary potential is constructed by relating multiple kernel k-means (MKKM) clustering to the traditional HDRF model. In this way, the high-dimensional decomposition and texture features can be well fused, thus making their deserved contributions to the inference of the attributive class and further increasing the discrimination capacity of CK-HDRF. The pairwise potential is constructed by the generalized Ising model with an additional edge penalty function, and thus, it can well capture the underlying spatial relationship and maintain the edge locations in classification. Moreover, the statistics of PolSAR data are modeled by the Wishart-generalized gamma (WG $\\Gamma $ ) distribution. Experiments on real PolSAR images demonstrate the effectiveness of CK-HDRF in classification.

Volume 18
Pages 1069-1073
DOI 10.1109/LGRS.2020.2990711
Language English
Journal IEEE Geoscience and Remote Sensing Letters

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