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Quantitative microwave tomography from sparse measurements using a robust huber regularizer

Boekbijdrage - Boekhoofdstuk Conferentiebijdrage

In statistical theory, the Huber function yields robust estimations reducing the effect of outliers. In this paper, we employ the Huber function as regularization in a challenging inverse problem: quantitative microwave imaging. Quantitative microwave tomography aims at estimating the permittivity profile of a scattering object based on measured scattered fields, which is a nonlinear, ill-posed inverse problem. The results on 3D data sets are encouraging: the reconstruction error is reduced and the permittivity profile can be estimated from fewer measurements compared to state-of-the art inversion procedures.
Boek: IEEE International Conference on Image Processing, Proceedings
Pagina's: 2073 - 2076
ISBN:9781467325325
Jaar van publicatie:2012
BOF-keylabel:ja
IOF-keylabel:ja
Toegankelijkheid:Closed