Abstract

ABSTRACT The purpose of the paper is to extract the region of interest (ROI) from the coarse detected synthetic aperture radar (SAR) images and discriminate if the RO I contains a target or not, so as to eliminate the false alarm, and prepare for the target recognition. Th e automatic target clustering is one of the most difficult tasks in the SAR-image automatic target recognition system. The density-based spatial clustering of applications with noise (DBSCAN) relies on a density-based notion of clusters which is designed to discover clusters of arbitrary shape. DBSCAN was first used in the SAR image processing, which has many excellent features: only two insensitivity parameters (radius of neighborhood and minimum number of points) are needed; clusters of arbitrary shapes which fit in with the coarse detected SAR images can be discovered; and the cal culation time and memory can be reduced. In the multi-feature ROI discrimination scheme, we extract several target features which contain the geometry features such asthe area discriminator and Radon -transform based target profile discriminator, the distribution characteristics such as the EFF discrimina tor, and the EM scattering property such as the PPR discriminator. The synthesized judgment effectively eliminates the false alarms. Keywords: automatic target recognition, synthetic aperture radar images,

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