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Applicable Analysis
An International Journal
Volume 98, 2019 - Issue 12
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Articles

Elastic-net regularization for nonlinear electrical impedance tomography with a splitting approach

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Pages 2201-2217 | Received 22 Dec 2017, Accepted 08 Mar 2018, Published online: 21 Mar 2018
 

ABSTRACT

Image reconstruction of EIT mathematically is a typical nonlinear and severely ill-posed inverse problem. Appropriate priors or penalties are required to enable the reconstruction. The commonly used l2-norm can enforce the stability to preserve local smoothness, and the current l1-norm can enforce the sparsity to preserve sharp edges. Considering the fact that l2-norm penalty always makes the solution overly smooth and l1-norm penalty always makes the solution too sparse, elastic-net regularization approach with a convex combination term of l1-norm and l2-norm emerges for fully nonlinear EIT inverse problems. Our aim is to combine the strength of both terms: sparsity in the transform domain and smoothness in the physical domain, in an attempt to improve the reconstruction resolution and robustness to noise. Nonlinearity and non-smoothness of the generated composite minimization problem make it challenging to find an efficient numerical solution. Then we develop one simple and fast numerical optimization scheme based on the split Bregman technique for the joint penalties regularization. The method is validated using simulated data for some typical conductivity distributions. Results indicate that the proposed inversion model with an appropriate parameter choice achieves an efficient regularization solution and enhances the quality of the reconstructed image.

AMS SUBJECT CLASSIFICATIONS:

Notes

No potential conflict of interest was reported by the authors.

Additional information

Funding

The work of Jing Wang is supported by the National Natural Science Foundation of China (NSFC) [grant number 11626092], Bo Han by NSFC [grant number 41474102], Wei Wang by NSFC [grant number 11401257].

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