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Microwave induced thermoacoustic tomography based on probabilistic reconstruction

机译:基于概率重建的微波热声层析成像

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The performance of the existing reconstruction algorithms based on compressive sensing (CS) in microwave induced thermoacoustic tomography (MITAT) is influenced by the positions of detectors. Besides, some a priori information, such as target distribution or the correlation among thermoacoustic signals, has not been taken into account. In this letter, a probabilistic reconstruction algorithm in MITAT based on sparse Bayesian learning is proposed. Different from norm-based point estimation algorithms in CS, the sound pressure distribution which needs to be estimated is provided by probability distributions in the probabilistic reconstruction algorithm and an image is reconstructed based on the posterior density. Compared with the widely used norm-based point estimation algorithms (GPSR, Lasso) whose solution is not always the sparsest, the sparse Bayesian learning framework is globally convergent which can produce the sparsest solution at the posterior mean. Therefore, the robustness of the probabilistic reconstruction is better than that of norm-based point estimation algorithms. In addition, the estimations of the initial pressure distributions can be more accurately provided if the correlation of thermoacoustic signals can be considered, especially under the condition of low signal to noise ratio (SNR). Simulations and experiments on real breast tumors demonstrate that the proposed algorithm improves the robustness of reconstruction and show better performance at low SNRs. Published by AIP Publishing.
机译:现有的基于压缩感测(CS)的重建算法在微波感应热声层析成像(MITAT)中的性能受探测器位置的影响。此外,还没有考虑到一些先验信息,例如目标分布或热声信号之间的相关性。本文提出了一种基于稀疏贝叶斯学习的MITAT概率重建算法。与CS中基于规范的点估计算法不同,概率估计算法中的概率分布提供了需要估计的声压分布,并基于后验密度重建了图像。与解决方案并非总是最稀疏的,广泛使用的基于规范的点估计算法(GPSR,Lasso)相比,稀疏贝叶斯学习框架是全局收敛的,可以产生后验均值的最稀疏解。因此,概率重建的鲁棒性优于基于规范的点估计算法。此外,如果可以考虑热声信号的相关性,尤其是在信噪比(SNR)低的情况下,则可以更准确地提供初始压力分布的估计值。在真实乳腺肿瘤上的仿真和实验表明,该算法提高了重建的鲁棒性,并在低SNR时表现出更好的性能。由AIP Publishing发布。

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