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Iterative reconstruction methods using regularization and optimal current patterns in electrical impedance tomography

机译:在电阻抗层析成像中使用正则化和最佳电流模式的迭代重建方法

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摘要

An iterative reconstruction method which minimizes the effects of ill-conditioning is discussed. Based on the modified Newton-Raphson algorithm, a regularization method which integrates prior information into the image reconstruction was developed. This improves the conditioning of the information matrix in the modified Newton-Raphson algorithm. Optimal current patterns were used to obtain voltages with maximal signal-to-noise ratio (SNR). A complete finite element model (FEM) was used for both the internal and the boundary electric fields. Reconstructed images from phantom data show that the use of regularization optimal current patterns, and a complete FEM model improves image accuracy. The authors also investigated factors affecting the image quality of the iterative algorithm such as the initial guess, image iteration, and optimal current updating.
机译:讨论了一种迭代重建方法,该方法可最大程度地减少不良状况的影响。基于改进的Newton-Raphson算法,提出了一种将先验信息集成到图像重建中的正则化方法。这改进了改进的Newton-Raphson算法中信息矩阵的条件。最佳电流模式用于获得具有最大信噪比(SNR)的电压。完整的有限元模型(FEM)用于内部和边界电场。从幻像数据重建的图像显示,使用正则化最佳电流模式以及完整的FEM模型可提高图像精度。作者还研究了影响迭代算法图像质量的因素,例如初始猜测,图像迭代和最佳电流更新。

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