Indian Institute of Science, Department of Computational and Data Sciences, Bangalore, India.
Nanyang Technological University, School of Chemical and Biomedical Engineering, Singapore.
J Biomed Opt. 2018 Feb;23(7):1-11. doi: 10.1117/1.JBO.23.7.071204.
As limited data photoacoustic tomographic image reconstruction problem is known to be ill-posed, the iterative reconstruction methods were proven to be effective in terms of providing good quality initial pressure distribution. Often, these iterative methods require a large number of iterations to converge to a solution, in turn making the image reconstruction procedure computationally inefficient. In this work, two variants of vector polynomial extrapolation techniques were deployed to accelerate two standard iterative photoacoustic image reconstruction algorithms, including regularized steepest descent and total variation regularization methods. It is shown using numerical and experimental phantom cases that these extrapolation methods that are proposed in this work can provide significant acceleration (as high as 4.7 times) along with added advantage of improving reconstructed image quality.
由于有限数据的光声断层扫描图像重建问题是病态的,因此迭代重建方法已被证明在提供良好的初始压力分布方面是有效的。通常,这些迭代方法需要进行大量迭代才能收敛到解,这反过来又使图像重建过程计算效率低下。在这项工作中,两种向量多项式外推技术的变体被用于加速两种标准的迭代光声图像重建算法,包括正则化最陡下降法和全变差正则化方法。通过数值和实验性的幻影案例表明,本工作中提出的这些外推方法可以提供显著的加速(高达 4.7 倍),同时还可以提高重建图像的质量。