Unifying the Experiment Design and Constrained Regularization Paradigms for Reconstructive Imaging with Remote Sensing Data

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Miniatura

Fecha

2006

Autores

Shkvarko, Yuriy
Leyva-Montiel, José L.
Villalón-Turrubiates, Iván E.

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Editor

IEEE

Resumen

Descripción

In this paper, the problem of estimating from a finite set of measurements of the radar remotely sensed complex data signals, the power spatial spectrum pattern (SSP) of the wavefield sources distributed in the environment is cast in the framework of Bayesian minimum risk (MR) paradigm unified with the experiment design (ED) regularization technique. The fused MR-ED regularization of the ill-posed nonlinear inverse problem of the SSP reconstruction is performed via incorporating into the MR estimation strategy the projection-regularization ED constraints. The simulation examples are incorporated to illustrate the efficiency of the proposed unified MR-ED technique.

Palabras clave

Signal Processing, Image Reconstruction, Regularization

Citación

Y. Shkvarko; J.L. Leyva-Montiel; I.E. Villalón-Turrubiates (2006). “Unifying the Experiment Design and Constrained Regularization Paradigms for Reconstructive Imaging with Remote Sensing Data”. Proceedings of the IEEE International Conference on Image Processing (ICIP), Atlanta, EEUU, pp.3241-3244.