会议专题

Image reconstruction in Magnetic Induction Tomography using eigenvalue threshold regularization

Image reconstruction in magnetic induction tomography (MIT) aims to reconstruct the internal conductivity distribution in target object according to phase deviation data of detecting coil inducting eddy current in imaging region. Newton-one-step Error reconstructor (NOSER) is a common reconstruction algorithm in MIT, and Hessian matrix is an important part of NOSER, but Hessian matrix is ill-posed for little data changes greatly affecting reconstructed images. In order to obtain stable images, its necessary to modify Hessian matrix. In this paper, two-dimensional forward problem of MIT was performed by Galerkin finite element method and the regularized NOSER based on eigenvalue threshold method by setting an ideal conduction number to recompose diagonal matrix was presented to reduce the ill-pose. Imaging models was reconstructed with different regularization algorithms using the simulated data, compared with Tikhonov and truncated singular value decomposition, eigenvalue threshold algorithm could obtain a better image quality with higher resolution. The results demonstrate that the eigenvalue threshold regularization algorithm improves image accuracy and anti-noise characteristic; the algorithm has no iterative procedure, it also enhances imaging speed. The algorithm provides foundation for clinical application of MIT technology.

magnetic induction tomography reconstruction algorithm regularization eigenvalue threshold

Li Ke Peipei Pang Qiang Du

Institute of Biomedical and Electromagnetic Engineering,Shenyang University of Technology, Shenyang, Liaoning 110870, China

国际会议

2011 4th International Conference on Biomedical Engineering and Informatics(第四届生物医学工程与信息学国际会议 BMEI 2011)

上海

英文

314-317

2011-10-15(万方平台首次上网日期,不代表论文的发表时间)