2019
DOI: 10.2478/joeb-2019-0002
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Enhancing sharp features by locally relaxing regularization for reconstructed images in electrical impedance tomography

Abstract: Image reconstruction in EIT is an inverse problem, which is ill posed and hence needs regularization. Regularization brings stability to reconstructed EIT image with respect to noise in the measured data. But this is at the cost of smoothening of sharp edges and high curvature details of shapes in the image, affecting the quality. We propose a novel iterative regularization method based on detection of probable location of the inclusion, for locally relaxing the regularization by appropriate amount, to overcom… Show more

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“…This ill-posed nature makes the EIT system more sensitive to noise, and small measurement errors may lead to larger errors in the reconstruction, resulting in image artifacts (Martin and Choi 2017). To stabilize the solution of the inverse problem in the presence of noise, regularization is required (Ranade andGharpure 2019, Xu et al 2018). Regularization improves the stability of the solution at the cost of image RES as the reconstructed images have blurred edges (Wang et al 2019).…”
Section: Introductionmentioning
confidence: 99%
“…This ill-posed nature makes the EIT system more sensitive to noise, and small measurement errors may lead to larger errors in the reconstruction, resulting in image artifacts (Martin and Choi 2017). To stabilize the solution of the inverse problem in the presence of noise, regularization is required (Ranade andGharpure 2019, Xu et al 2018). Regularization improves the stability of the solution at the cost of image RES as the reconstructed images have blurred edges (Wang et al 2019).…”
Section: Introductionmentioning
confidence: 99%