Publication | Closed Access
A Kernel Clustering Algorithm With Fuzzy Factor: Application to SAR Image Segmentation
85
Citations
16
References
2014
Year
EngineeringFuzzy C-meansKernel MethodKernel Clustering AlgorithmImage AnalysisData ScienceData MiningPattern RecognitionSar Image SegmentationBiostatisticsFuzzy Pattern RecognitionFuzzy LogicKernel Fcm AlgorithmFuzzy FactorSynthetic Aperture RadarMedical Image ComputingComputer VisionRadarRemote SensingRadar Image ProcessingTexture AnalysisFuzzy ClusteringImage Segmentation
The presence of multiplicative noise in synthetic aperture radar (SAR) images makes segmentation and classification difficult to handle. Although a fuzzy C-means (FCM) algorithm and its variants (e.g., the FCM_S, the fast generalized FCM, the fuzzy local information C-means, etc.) can achieve satisfactory segmentation results and are robust to Gaussian noise, uniform noise, and salt and pepper noise, they are not adaptable to SAR image speckle. This letter presents a kernel FCM algorithm with pixel intensity and location information for SAR image segmentation. We incorporate a weighted fuzzy factor into the objective function, which considers the spatial and intensity distances of all neighboring pixels simultaneously. In addition, the energy measures of SAR image wavelet decomposition are used to represent the texture information, and a kernel metric is adopted to measure the feature similarity. The weighted fuzzy factor and the kernel distance measure are both robust to speckle. Experimental results on synthetic and real SAR images demonstrate that the proposed algorithm is effective for SAR image segmentation.
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