Publication | Closed Access
Unsupervised classification of polarimetric synthetic aperture Radar images using fuzzy clustering and EM clustering
215
Citations
22
References
2005
Year
EngineeringUnsupervised Machine LearningImage AnalysisEm ClusteringData ScienceData MiningPattern RecognitionImaging RadarRadar Signal ProcessingFuzzy Pattern RecognitionSynthetic Aperture RadarRobust Fuzzy C-meansFifth Clustering TechniqueRadarRemote SensingRadar Image ProcessingClustering (Data Mining)Fuzzy ClusteringClustering Mechanism
Five clustering techniques are compared by classifying a polarimetric synthetic aperture radar image. The pixels are complex covariance matrices, which are known to have the complex Wishart distribution. Two techniques are fuzzy clustering algorithms based on the standard /spl lscr//sub 1/ and /spl lscr//sub 2/ metrics. Two others are new, combining a robust fuzzy C-means clustering technique with a distance measure based on the Wishart distribution. The fifth clustering technique is an application of the expectation-maximization algorithm assuming the data are Wishart. The clustering algorithms that are based on the Wishart are demonstrably more effective than the clustering algorithms that appeal only to the /spl lscr//sub p/ norms. The results support the conclusion that the pixel model is more important than the clustering mechanism.
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