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L1-norm based nonlinear reconstruction improves quantitative accuracy of spectral diffuse optical tomography

机译:基于L1范数的非线性重建提高了光谱漫射光学层析成像的定量精度

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摘要

Spectrally constrained diffuse optical tomography (SCDOT) is known to improve reconstruction in diffuse optical imaging; constraining the reconstruction by coupling the optical properties across multiple wavelengths suppresses artefacts in the resulting reconstructed images. In other work, L1-norm regularization has been shown to improve certain types of image reconstruction problems as its sparsity-promoting properties render it robust against noise and enable the preservation of edges in images, but because the L1-norm is non-differentiable, it is not always simple to implement. In this work, we show how to incorporate L1 regularization into SCDOT. Three popular algorithms for L1 regularization are assessed for application in SCDOT: iteratively reweighted least square algorithm (IRLS), alternating directional method of multipliers (ADMM), and fast iterative shrinkage-thresholding algorithm (FISTA). We introduce an objective procedure for determining the regularization parameter in these algorithms and compare their performance in simulated experiments, and in real data acquired from a tissue phantom. Our results show that L1 regularization consistently outperforms Tikhonov regularization in this application, particularly in the presence of noise.
机译:光谱约束漫射光学层析成像(SCDOT)可以改善漫射光学成像的重建;通过在多个波长上耦合光学特性来限制重建,可以抑制所得重建图像中的伪影。在其他工作中,L1范数正则化已被证明可以改善某些类型的图像重建问题,因为其稀疏性增强特性使其具有较强的抗噪性并能够保留图像中的边缘,但是由于L1范数是不可微的,实施并不总是那么简单。在这项工作中,我们展示了如何将L1正则化合并到SCDOT中。评估了三种流行的L1正则化算法在SCDOT中的应用:迭代加权最小二乘算法(IRLS),交替方向乘数方法(ADMM)和快速迭代收缩阈值算法(FISTA)。我们介绍了一种确定这些算法中的正则化参数的客观程序,并比较了它们在模拟实验和从组织体模获取的真实数据中的性能。我们的结果表明,在此应用中,L1正则化始终优于Tikhonov正则化,尤其是在存在噪声的情况下。

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