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Fast and Robust Reconstruction Approach for Sparse Fluorescence Tomography Based on Adaptive Matching Pursuit

机译:基于自适应匹配追踪的稀疏荧光层析成像快速鲁棒重建方法

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Fluorescence molecular tomography (FMT) has been receiving much attention for its applications in in vivo small animal imaging. Fluorescent sources to be reconstructed are usually small and sparse, which can be considered as a priori information. The stage-wise orthogonal matching pursuit algorithm (StOMP) with L1 regularization has been applied in FMT problem to get a sparse solution and proved efficient and at least 2 orders of magnitude faster than iterated-shrinkage-based algorithms. A sparsity factor that indicates the number of unknowns is determined by estimation in advance in StOMP. However, different FMT experiments have different sparsity factors and the StOMP algorithm doesn't provide a way to determine a specific sparsity factor accurately. Estimation of sparsity factor empirically in StOMP makes the algorithm not robust and applicable in different FMT experiments, which usually results in unacceptable results. In this paper, we propose a novel approach based on adaptive matching pursuit to make reconstruction results more stable and method easier to use. The proposed algorithm is able to find an optimal sparsity factor and a satisfactory solution always, no matter what value of the initial sparsity factor is estimated. Besides, the proposed algorithm adopts an automatical updating strategy. It ends after only a few iterations and doesn't add extral time burden compared to StOMP. So the proposed algorithm is still as fast as the StOMP algorithm. Comparisons are made between the StOMP algorithm and the proposed algorithm in numerical experiments to show the advantages of our method.
机译:荧光分子层析成像(FMT)在体内小动物成像中的应用受到了广泛关注。要重建的荧光源通常很小且稀疏,可以将其视为先验信息。具有L1正则化的阶段式正交匹配追踪算法(StOMP)已被应用到FMT问题中以获得稀疏解,并且被证明是有效的并且比基于迭代收缩的算法快至少2个数量级。通过预先在StOMP中进行估计来确定指示未知数的稀疏性因子。但是,不同的FMT实验具有不同的稀疏性因子,并且StOMP算法没有提供准确确定特定稀疏性因子的方法。在StOMP中凭经验估计稀疏因子会使该算法不稳健,并且不适用于不同的FMT实验,这通常会导致不可接受的结果。在本文中,我们提出了一种基于自适应匹配追踪的新方法,以使重建结果更稳定且方法更易于使用。无论估计初始稀疏因子的值是多少,提出的算法都能始终找到最佳稀疏因子和令人满意的解决方案。此外,该算法采用了自动更新策略。与StOMP相比,它只需几次迭代即可结束,并且不会增加额外的时间负担。因此,提出的算法仍然与StOMP算法一样快。在数值实验中对StOMP算法和所提出的算法进行了比较,以证明我们方法的优势。

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