Publication | Closed Access
Ship Classification Based on Superstructure Scattering Features in SAR Images
71
Citations
13
References
2016
Year
EngineeringMarine EngineeringNaval ArchitectureSupport Vector MachineImage AnalysisSuperstructure Scattering FeaturesData SciencePattern RecognitionImaging RadarRadar Signal ProcessingAutomatic Target RecognitionSynthetic Aperture RadarShip ClassificationRadar ApplicationComputer VisionRadarAerospace EngineeringRemote SensingShip IsolationRadar Image Processing
This letter presents a novel method for ship classification that uses synthetic-aperture-radar images to distinguish ships based on superstructure scattering features. The ratio of dimensions, which combines the 2-D and 3-D properties of scattering, is explored as an effective and credible means to describe the scattering features of ships. The proposed method consists of three main stages: 1) ship isolation from the sea; 2) parametric vector (F) estimation; and 3) categorization using a support vector machine (SVM) classifier. To depict ship features more accurately and reduce feature redundancy, we propose employing peak extraction to divide a ship into bow, middle, and stern instead of into three equal parts. The classification method is tested with RadarSat-2 images, and ground-truth information is supplied by an automatic identification system. The experimental results show that the proposed method can achieve satisfactory ship-classification performance compared with existing methods, with an overall accuracy exceeding 80%.
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