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Image reconstruction for electrical capacitance tomography exploiting sparsity

机译:用于电容断层扫描利用稀疏性的图像重建

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We present a new image reconstruction method for Electrical Capacitance Tomography (ECT) by exploiting the sparsity of reconstructed images. ECT image reconstruction is generally ill-posed because the number of measurements is small whereas the image dimensions are large. Inspired by recent developments in Compressive Sensing (CS), given the sparsity of the signal (image), our idea is to apply an efficient and stable algorithm through L1 regularization to recover the sparse signal with sufficient measurements that have cardinality comparable to the sparsity of the signal. In this paper, we apply an efficient GPSR (Gradient Projection for Sparse Reconstruction) algorithm to reconstruct the sparse signal under DCT basis (GPSR-DCT). Our results on real data show that the proposed GPSR-DCT algorithm can better preserve object boundary and shape, as compared to a representative state-of-the-art ECT image reconstruction algorithm, Projected Landweber Iteration with Linear Back Projection initialization (LBP-PLI).
机译:我们通过利用重构的图像的稀疏呈现的电容层析成像(ECT)的新图像重建方法。 ECT图像重建一般病态因为而图像尺寸大的测量的数目是小的。给出的信号(图像)的稀疏最近的事态发展在压缩感知(CS)的启发,我们的理念是通过L1正则化应用的高效,稳定的算法来恢复稀疏信号有足够的测量有基数相当的稀疏信号。在本文中,我们采用一个有效的GPSR(梯度投影的稀疏重建)算法来重建下DCT基(GPSR-DCT)的稀疏信号。我们的实际数据的结果表明,所提出GPSR-DCT算法可以更好地保留对象边界和形状,相比于代表国家的最先进的ECT图像重建算法,投影的Landweber迭代线性反投影初始化(LBP-PLI )。

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