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Learning Sparsifying Transforms for Image Reconstruction in Electrical Impedance Tomography

机译:学习电阻断层扫描中图像重建的稀疏变换

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Electrical Impedance Tomography (EIT) is a fast and non-invasive imaging technology that reconstructs the internal electrical properties of a subject. However, its functionality is limited by low spatial resolution arising from an ill-posed and ill-conditioned inverse problem. Several sparsity-promoting regularization methods have been applied to improve the quality of EIT image reconstruction, including various ℓ0 and ℓ1-based analytical models (TV, TwIST, etc.), and a patch-based sparse representation via a learned dictionary (using the K-SVD algorithm), dubbed CS-EIT. To further exploit the potential of compressed sensing in Electrical Impedance Tomography, this paper incorporates the recent novel method of transform learning for EIT image reconstruction. We propose a blind compressed sensing algorithm, dubbed TL-EIT, which simultaneously optimizes the sparsifying transform and updates the reconstructed image. We demonstrate using both synthetic and in vivo data that the proposed TL-EIT is more effective than other sparsity-based algorithms for reconstructing high-quality EIT images. In addition, TL-EIT also accelerates the reconstruction process in comparison to other learning-based algorithms like CS-EIT.
机译:电阻抗断层扫描(EIT)是一种快速和非侵入性的成像技术,可重建受试者的内部电气性质。然而,其功能受到不良和不良逆问题产生的低空间分辨率的限制。采用了几种稀疏性促进正则化方法来提高EIT图像重建的质量,包括各种ℓ 0 和ℓ 1 基于分析模型(电视,扭曲等),以及通过学习词典的基于补丁的稀疏表示(使用K-SVD算法),被称为CS-EIT。为了进一步利用电阻抗断层扫描的压缩感应的潜力,本文包含了最近的改造学习方法,用于EIT图像重建。我们提出了一种盲目压缩的传感算法,称为TL-EIT,其同时优化稀疏变换并更新重建的图像。我们使用合成和体内数据演示所提出的TL-EIT比其他基于稀疏性的算法更有效,用于重建高质量的EIT图像。此外,TL-EIT还与其他基于学习的算法相比加速了重建过程,如CS-EIT。

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