Publication | Closed Access
Unsupervised Classification of Multilook Polarimetric SAR Data Using Spatially Variant Wishart Mixture Model with Double Constraints
25
Citations
31
References
2018
Year
EngineeringMachine LearningMulti-image FusionUnsupervised Machine LearningImage ClassificationImage AnalysisData SciencePattern RecognitionPolsar ImagesImaging RadarBiostatisticsRadar Signal ProcessingStatisticsMachine VisionAutomatic Target RecognitionSynthetic Aperture RadarGeographyRadar ApplicationComputer VisionRadarDouble ConstraintsRemote SensingRadar Image ProcessingSpatial Information
This paper addresses the unsupervised classification problems for multilook Polarimetric synthetic aperture radar (PolSAR) images by proposing a patch-level spatially variant Wishart mixture model (SVWMM) with double constraints. We construct this model by jointly modeling the pixels in a patch (rather than an individual pixel) so as to effectively capture the local correlation in the PolSAR images. More importantly, a responsibility parameter is introduced to the proposed model, providing not only the possibility to represent the importance of different pixels within a patch but also the additional flexibility for incorporating the spatial information. As such, double constraints are further imposed by simultaneously utilizing the similarities of the neighboring pixels, respectively, defined on two different parameter spaces (i.e., the hyperparameter in the posterior distribution of mixing coefficients and the responsibility parameter). Furthermore, the variational inference algorithm is developed to achieve effective learning of the proposed SVWMM with the closed-form updates, facilitating the automatic determination of the cluster number. Experimental results on several PolSAR data sets from both airborne and spaceborne sensors demonstrate that the proposed method is effective and it enables better performances on unsupervised classification than the conventional methods.
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