Abstract

Electrical impedance tomography (EIT) is a fast and cost-effective technique that provides a tomographic conductivity image of a subject from boundary current-voltage data. This paper proposes a time and memory efficient method for solving a large scale 3D EIT image reconstruction problem and the ill-posed linear inverse problem. First, we use block-based sampling for a large number of measured data from many electrodes. This method will reduce the size of Jacobian matrix and can improve accuracy of reconstruction by using more electrodes. And then, a sparse matrix reduction technique is proposed using thresholding to set very small values of the Jacobian matrix to zero. By adjusting the Jacobian matrix into a sparse format, the element with zeros would be eliminated, which results in a saving of memory requirement. Finally, we built up the relationship between compressed sensing and EIT definitely and induce the CS: two-step Iterative Shrinkage/Thresholding and block-based method into EIT image reconstruction algorithm. The results show that block-based compressed sensing enables the large scale 3D EIT problem to be efficient. For a 72-electrodes EIT system, our proposed method could save at least 61% of memory and reduce time by 72% than compressed sensing method only. The improvements will be obvious by using more electrodes. And this method is not only better at anti-noise, but also faster and better resolution.

Highlights

  • Electrical Impedance Tomography (EIT) [1] is an imaging technique which calculates the electrical conductivity distribution within medium using electrical measurements from a series of electrodes on the medium surface

  • This paper proposes a time and memory efficient method for solving a large scale 3D Electrical impedance tomography (EIT) image reconstruction problem and the ill-posed linear inverse problem

  • This paper uses Two-step iterative shrinkage/thresholding algorithm [6] which are used in compressed sensing [7]

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Summary

Introduction

Electrical Impedance Tomography (EIT) [1] is an imaging technique which calculates the electrical conductivity distribution within medium using electrical measurements from a series of electrodes on the medium surface. (2014) 3-D EIT Image Reconstruction Using a Block-Based Compressed Sensing Approach. This paper proposes a time and memory efficient method for solving a large scale 3D EIT image reconstruction problem and the ill-posed linear inverse problem. We use block-based sampling [3], threshold limits on Jacobian matrix [4] and compressed sensing [5] in 3D EIT reconstruction image. In order to remove noise of X-ray image, we propose an anisotropic diffusion filter, and it’s an adaptive smoothing technique. Shock filter algorithm is proposed for the X-ray image segmentation and enhancement. A two-stage shock filter is proposed to optimize the result of shock processing

Block-Based Compressed Sensing in 3-D EIT
EIT Image Reconstruction
Block-Based Sampling
Sparse Jacobian and Threshold Limits
Compressed Sensing
Simulation Results
Analysis of Memory and Time
Comparisons
Conclusion
Full Text
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