We consider efficient methods for computing solutions to dynamic inverse problems, where both the quantities of interest and the forward operator (measurement process) may change at different time instances but we want to solve for all the images simultaneously. We are interested in large-scale ill-posed problems that are made more challenging by their dynamic nature and, possibly, by the limited amount of available data per measurement step. To remedy these difficulties, we apply regularization methods that enforce simultaneous regularization in space and time (such as edge enhancement at each time instant and proximity at consecutive time instants) and achieve this with low computational cost and enhanced accuracy. More precisely, we develop iterative methods based on a majorization-minimization (MM) strategy with quadratic tangent majorant, which allows the resulting least squares problem to be solved with a generalized Krylov subspace (GKS) method; the regularization parameter can be defined automatically and efficiently at each iteration. Numerical examples from a wide range of applications, such as limited-angle computerized tomography (CT), space-time image deblurring, and photoacoustic tomography (PAT), illustrate the effectiveness of the described approaches.
翻译:我们考虑对动态反向问题采用有效的计算方法,即兴趣量和前方操作员(测量过程)在不同时间可能发生变化,但我们希望同时解决所有图像。我们感兴趣的是大规模错误的问题,这些问题因其动态性质而更具挑战性,而且可能通过每个测量步骤可获得的有限数据而更具挑战性。为克服这些困难,我们采用规范化方法,在空间和时间上同时实行规范化(例如,在瞬时和相近时的边缘增强),以较低的计算成本和准确度实现这一点。更准确地说,我们开发了基于主要最小化(MM)战略的迭代方法,以四面色度主要成像为基础,通过通用的 Krylov 子空间(GKKS) 方法解决由此产生的最小平方问题;在每次循环时,可自动有效地界定规范化参数。从多种应用中得出的数字实例,例如有限角计算机化成像仪、空间时图像分解和光谱图学(PAT),说明所描述的方法的有效性。