A Primal Dual – Interior Point Framework for EIT Reconstruction and Regularization with 1-Norm and 2-Norm
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چکیده
Image Reconstruction in Electric Impedance Tomography (EIT) is an ill-posed problem. Ill-posedness affects the reconstruction in two ways: 1) the image is very sensitive to measurement noise, instrumentation and modeling errors 2) in order to reconstruct meaningful images regularization technique need to be used. This limits the ability to reconstruct sharp images. Traditionally image reconstruction is formulated as:
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تاریخ انتشار 2009