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压缩扩散光学层析成像:利用联合稀疏性的非迭代精确重建。

Compressive diffuse optical tomography: noniterative exact reconstruction using joint sparsity.

机构信息

Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology, Daejon 305-701, Korea.

出版信息

IEEE Trans Med Imaging. 2011 May;30(5):1129-42. doi: 10.1109/TMI.2011.2125983. Epub 2011 Mar 10.

Abstract

Diffuse optical tomography (DOT) is a sensitive and relatively low cost imaging modality that reconstructs optical properties of a highly scattering medium. However, due to the diffusive nature of light propagation, the problem is severely ill-conditioned and highly nonlinear. Even though nonlinear iterative methods have been commonly used, they are computationally expensive especially for three dimensional imaging geometry. Recently, compressed sensing theory has provided a systematic understanding of high resolution reconstruction of sparse objects in many imaging problems; hence, the goal of this paper is to extend the theory to the diffuse optical tomography problem. The main contributions of this paper are to formulate the imaging problem as a joint sparse recovery problem in a compressive sensing framework and to propose a novel noniterative and exact inversion algorithm that achieves the l(0) optimality as the rank of measurement increases to the unknown sparsity level. The algorithm is based on the recently discovered generalized MUSIC criterion, which exploits the advantages of both compressive sensing and array signal processing. A theoretical criterion for optimizing the imaging geometry is provided, and simulation results confirm that the new algorithm outperforms the existing algorithms and reliably reconstructs the optical inhomogeneities when we assume that the optical background is known to a reasonable accuracy.

摘要

漫射光学断层成像(DOT)是一种敏感且相对低成本的成像方式,可重建高散射介质的光学特性。然而,由于光传播的扩散性质,该问题的条件非常差且高度非线性。尽管已经普遍使用非线性迭代方法,但它们的计算成本很高,特别是对于三维成像几何形状。最近,压缩感知理论为许多成像问题中稀疏物体的高分辨率重建提供了系统的理解;因此,本文的目标是将该理论扩展到漫射光学断层成像问题。本文的主要贡献是将成像问题表述为压缩感知框架中的联合稀疏恢复问题,并提出一种新的非迭代且精确的反演算法,该算法在测量的秩增加到未知稀疏度水平时达到 l(0)最优性。该算法基于最近发现的广义 MUSIC 准则,利用了压缩感知和阵列信号处理的优势。提供了一种优化成像几何形状的理论准则,并且当我们假设光学背景具有合理的准确性时,模拟结果证实了新算法能够可靠地重建光学不均匀性,并且优于现有算法。

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