Title :
A Multiplicative Regularized Gauss–Newton Inversion for Shape and Location Reconstruction
Author :
Mojabi, Puyan ; LoVetri, Joe ; Shafai, Lotfollah
Author_Institution :
Dept. of Electr. & Comput. Engi neering, Univ. of Manitoba, Winnipeg, MB, Canada
Abstract :
A multiplicative regularized Gauss-Newton inversion algorithm is proposed for shape and location reconstruction of homogeneous targets with known permittivities. The data misfit cost functional is regularized with two different multiplicative regularizers. The first regularizer is the weighted -norm total variation which provides an edge-preserving regularization. The second one imposes a priori information about the permittivities of the objects being imaged. Using both synthetically and experimentally collected data sets, we show that the proposed algorithm is robust in reconstructing the shape and location of homogeneous targets.
Keywords :
Newton method; image reconstruction; a priori information; edge-preserving regularization; homogeneous target; location reconstruction; multiplicative regularized Gauss-Newton inversion algorithm; multiplicative regularizer; shape reconstruction; weighted -norm total variation; Algorithm design and analysis; Image reconstruction; Permittivity; Robustness; Shape; Gauss–Newton inversion; microwave tomography; regularization;
Journal_Title :
Antennas and Propagation, IEEE Transactions on
DOI :
10.1109/TAP.2011.2165487