Abstract:
Sea clutter modeling and parameter estimation/prediction are important basis of system design, performance assessment, and target detection of maritime radars. In additio...Show MoreMetadata
Abstract:
Sea clutter modeling and parameter estimation/prediction are important basis of system design, performance assessment, and target detection of maritime radars. In addition to parameter estimation from measured data, parameter prediction from radar parameters, sea state, and the viewing geometry of the radar is an alternative. In this letter, a dual-polarimetric full-recorded sea clutter database measured by an island-based X-band experimental radar on the Yellow Sea of China is introduced. On this database, the model selection reveals that the compound-Gaussian model with inverse Gaussian (CGIG) texture is suited for HH high-resolution sea clutter data, the generalized Pareto (GP) intensity distributions are for HH moderate-resolution data, and the K amplitude distributions are for high and moderate-resolution VV polarized data. Further, three five-parametric empirical formulas are constructed to predict the shape parameter of the CGIG, GP, and K distributions of sea clutter from the area of spatial resolution cell, the grazing angle, the significant wave height (SWH), the average wave period, and the wave direction relative to the sight line of radar. The new empirical formulas attain more accurate prediction than existing empirical formula on the database.
Published in: IEEE Geoscience and Remote Sensing Letters ( Volume: 20)