JOURNAL OF RADARS
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JOURNAL OF RADARS  2017, Vol. 6 Issue (5): 541-553    DOI: 10.12000/JR16109
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Combined Conditional Random Fields Model for Supervised PolSAR Images Classification
Zou Huanxin*  Luo Tiancheng  Zhang Yue  Zhou Shilin
(College of Electronic Science and Engineering, National University of Defense Technology, Changsha 410073, China)
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Abstract More features and contextual information can be extracted and exploited to improve classification accuracy in complex Polarimetric Synthetic Aperture Radar (PolSAR) imagery classification. However, the problems of overfitting and feature interference caused by the increased high dimensions of features lead to poor classification performance. To address these problems, a PolSAR image classification method based on combined Conditional Random Fields (CRF) is proposed in this paper. Unlike the traditional way of utilizing multiple feature information wherein multiple feature vectors are directly stacked to form a new one, combined CRF first forms multiple feature subsets according to different feature types and utilizes these feature subsets to train the same CRF model to obtain multiple child classifiers, thus obtaining multiple classification results. Then, the final classification result is gained by fusing multiple child classification results with the normalized overall classification accuracy of each classifier as the weight. Extensive experiments conducted on two real-world PolSAR images demonstrate that the accuracy of the proposed method is significantly improved than that of the single child classifier. For both the data sets used for performance evaluation, the classification accuracies of the proposed method increased by 13.38% and 11.55% than those of the method of stacking features, respectively, and by 13.78% and 14.75% than those of support vector machine-based method, respectively.
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Zou Huanxin
Luo Tiancheng
Zhang Yue
Zhou Shilin
Key wordsPolarimetric Synthetic Aperture Radar (PolSAR)   Supervised classification   Conditional Random Fields (CRF)   Combined model     
Received: 2016-09-22; Published: 2017-07-31
Fund: The National Natural Science Foundation of China (61331015)
Cite this article:   
Zou Huanxin,Luo Tiancheng,Zhang Yue et al. Combined Conditional Random Fields Model for Supervised PolSAR Images Classification[J]. JOURNAL OF RADARS, 2017, 6(5): 541-553.
 
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