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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Modified CS-MUSIC for diffuse optical tomography using joint sparsity
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Modified CS-MUSIC for diffuse optical tomography using joint sparsity

机译:使用关节稀疏性修改CS-Music用于漫射光学断层扫描

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In this paper, a modified compressive multiple signal classification (CS-MUSIC) algorithm has been proposed for diffuse optical tomography (DOT) reconstruction. The basic principle involved in DOT is that it illuminates the biological tissue using near infrared light and reconstructs the optical parameters of the tissue from the boundary measurements. The inverse problem of diffuse optical tomography is non-linear and severely ill-conditioned due to the zig-zag nature of light propagation by photons that diffuses through the tissue. Although nonlinear iterative methods are commonly used to solve this problem, they are computationally expensive since the forward problem has to be solved iteratively as well as they do not perform well for complex geometries. Recently, the DOT with compressive sensing (CS) has received a great attention due to its efficient possible reconstructions in DOT imaging. In this, the DOT inverse problem has been formulated as an multiple measurement vector (MMV) problem by using joint sparsity and CS frame work. The modified CS-MUSIC is a novel, non-iterative, and exact algorithm to reconstruct the absorption parameter change for Delta alpha from the boundary data. In addition, this algorithm takes hybridization of sensor array signal processing and probabilistic compressive lensing. The experimental validation of the proposed algorithm has been done on a paraffin wax rectangular phantom through a DOT imaging setup. The performance metrics such as structural similarity index (SSIM), mean square error (MSE), normalized mean square error (NMSE) have been used to evaluate the performance of the reconstruction in this paper. Extensive numerical simulations show that the modified CS-MUSIC algorithm outperforms the current state-of-the-art algorithms and reliably reconstructs the absorption change in DOT. (C) 2018 Elsevier GmbH. All rights reserved.
机译:本文已经提出了一种修改的压缩多信号分类(CS-Music)算法用于漫反射光学断层扫描(点)重建。 DOT中涉及的基本原理是它使用近红外光照射生物组织,并从边界测量重建组织的光学参数。漫射光学断层扫描的逆问题是由于通过组织扩散的光子的光传播的Z型ZAG性质而是非线性的并且严重不良。尽管非线性迭代方法通常用于解决这个问题,但是它们是计算昂贵的,因为必须迭代地解决前向问题以及它们对于复杂的几何形状而不表现良好。最近,具有压缩感测的点(CS)由于其在点成像中的高效可能的重建而受到极大的关注。在此,通过使用关节稀疏性和CS帧工作已经将点逆问题标制作者作为多测量向量(MMV)问题。修改的CS-Music是一种新颖的,非迭代和精确的算法,用于从边界数据重建Δα的Δα的吸收参数变化。此外,该算法采用传感器阵列信号处理和概率压缩透镜的杂交。通过点成像设置在石蜡矩形模型上完成了所提出的算法的实验验证。诸如结构相似性指数(SSIM),均值平方误差(MSE),归一化平均方误差(NMSE)等性能指标已被用于评估本文重建的性能。广泛的数值模拟表明,修改的CS-Music算法优于当前最先进的算法,并且可靠地重建点的吸收变化。 (c)2018年Elsevier GmbH。版权所有。

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