Abstract :
The crucial theoretical aspects in solving scattering inverse problems, as required for radar sensing and image formation, are related to the development of system-oriented statistical signal processing techniques, exploiting in some optimal way the available model-level and system-level "degrees of freedom". Control of these degrees of freedom is the hope for solving many existing algorithm design and system-level problems that cause the ill-posed nature of the radar image formation inverse problems. We address a new approach to radar imaging (RI) problems, stated and treated as ill-posed problems of restoring the extended object power scattering function by processing the data signals distorted in the stochastic measurement channel. By exploiting the idea of combining the experiment design and descriptive regularization theory methods (see Falkovich, S.E. et al., Radio i Sviaz, 1989; Harmanci, K. et al., IEEE Trans. Sig. Proc., vol.48, no.1, p.1-13, 2000; Kravchenko, V.F. et al., J. Commun. Technology and Electronics, vol.45, no.8, p.872-5, 2000) for the scattering inverse problems solution, we propose a fused experiment-design-regularization (EDR) technique for high-resolution radar image formation. With this technique, we derive a family of EDR imaging algorithms and illustrate their efficiency with simulation results.
Keywords :
design of experiments; electromagnetic wave scattering; inverse problems; radar imaging; radar resolution; radar theory; stochastic processes; telecommunication channels; experimental design; high-resolution radar image formation; ill-posed problems; radar imaging; radar sensing; regularization technique; scattering inverse problem; statistical signal processing; stochastic measurement channel; Algorithm design and analysis; Control systems; Image restoration; Inverse problems; Power system restoration; Radar imaging; Radar scattering; Radar signal processing; Radar theory; Signal processing algorithms;