基于子空间的CS-Music漫射光学层析成像

B. Dileep, Tapan Das, P. Dutta
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引用次数: 0

摘要

漫射光学层析成像(DOT)是一种低成本的成像方式,可以重建高浑浊介质的光学系数。然而,由于光子在生物组织中的扩散特性,反问题是病态的、非线性的和不稳定的。传统的DOT成像方法需要在每次迭代时重复求解正演问题,计算量很大。近年来,压缩感知(CS)理论在DOT成像中得到了广泛的应用,在许多DOT成像问题中为稀疏目标的重建提供了重要的依据。本文的主要目标是利用基于多测量向量(MMV)的CS框架解决DOT逆问题,并研究了CS- music(多信号分类)等稀疏恢复算法。通过DOT实验装置对石蜡矩形样品进行了CS-MUSIC的实验验证。本文还对传统的DOT成像方法如最小二乘法进行了研究。使用性能度量均方误差(MSE)来评价DOT成像的重建性能。仿真结果表明,CS-MUSIC算法在DOT成像中优于传统的DOT成像方法。本研究的优点是不需要重复求解传统DOT所固有的正演问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subspace Based CS-Music for Diffuse Optical Tomography
Diffuse optical tomography (DOT) is a low cost imaging modality that reconstructs the optical coefficients of a highly turbid medium. However, the inverse problem is ill-posed, nonlinear, and unstable due to diffusive nature of optical photons through the biological tissue. The conventional DOT imaging methods require the forward problem to be solved repeatedly at each iteration which makes it computationally expensive. Recently, the theory of compressive sensing (CS) has been used in DOT and provided significant reconstruction of sparse objects in many DOT imaging problems. The main objective of this paper is to solve the DOT inverse problem using MMV (multiple measurement vectors) based CS framework and the sparse recovery algorithm like CS-MUSIC (multiple signal classification) is studied. The experimental validation of the CS-MUSIC has been done on a paraffin wax rectangular sample through a DOT experimental set up. We also studied the conventional DOT imaging method like least square method in this paper. The performance metric mean square error (MSE) is used to evaluate the performance of the reconstruction in DOT imaging. Simulation results showed that the CS-MUSIC algorithm outperforms the conventional DOT imaging method in DOT imaging. The advantage of this study is that the forward problem need not be solved repeatedly which are inherent in conventional DOT.
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