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Iterative regularization methods for atmospheric remote sensing
Authors:Adrian Doicu  Franz Schreier  Michael Hess
Affiliation:DLR—German Aerospace Center, Remote Sensing Technology Institute, Oberpfaffenhofen, 82234 Weß ling, Germany
Abstract:In this paper we present different inversion algorithms for nonlinear ill-posed problems arising in atmosphere remote sensing. The proposed methods are Landweber's method (LwM), the iteratively regularized Gauss-Newton method, and the conventional and regularizing Levenberg-Marquardt method. In addition, some accelerated LwMs and a technique for smoothing the Levenberg-Marquardt solution are proposed. The numerical performance of the methods is studied by means of simulations. Results are presented for an inverse problem in atmospheric remote sensing, i.e., temperature sounding with an airborne uplooking high-resolution far-infrared spectrometer.
Keywords:Inverse problems   Nonlinear least squares   Regularization   Atmospheric spectroscopy   Remote sensing
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