Many imaging problems can be formulated as inverse problems expressed as finite-dimensional optimization problems. These optimization problems generally consist of minimizing the sum of a data fidelity and regularization terms. In [23,26], connections between these optimization problems and (multi-time) Hamilton--Jacobi partial differential equations have been proposed under the convexity assumptions of both the data fidelity and regularization terms. In particular, under these convexity assumptions, some representation formulas for a minimizer can be obtained. From a Bayesian perspective, such a minimizer can be seen as a maximum a posteriori estimator. In this chapter, we consider a certain class of non-convex regularizations and show that similar representation formulas for the minimizer can also be obtained. This is achieved by leveraging min-plus algebra techniques that have been originally developed for solving certain Hamilton--Jacobi partial differential equations arising in optimal control. Note that connections between viscous Hamilton--Jacobi partial differential equations and Bayesian posterior mean estimators with Gaussian data fidelity terms and log-concave priors have been highlighted in [25]. We also present similar results for certain Bayesian posterior mean estimators with Gaussian data fidelity and certain non-log-concave priors using an analogue of min-plus algebra techniques.
翻译:许多成像问题可以被描述成以有限维度优化问题的形式表达的反面问题。这些优化问题通常包括将数据忠实性和正规化条件的总和最小化。[23,26] 在[23, 26] 中,根据数据忠实性和正规化条件的共性假设,提出了优化问题和(多时)汉密尔顿-贾科比部分差异方程式之间的(多时)汉密尔顿-贾科比部分差异方程式。特别是,根据这些共性假设,可以取得最小化者的一些代表方程式。从巴耶西亚的角度看,这种最小化者可以被视为一个最高顺差估测点。在本章中,我们考虑某种非共性规范化的规范,并表明也可以获得类似的最小化者代表方程式。这是通过利用最初为解决某些汉密尔顿-贾科比部分差异方程式在最佳控制中产生的微增代数变方程式技术来实现的。注意,从Bayesiannal-deplia-dealalales presentalalalal-cographicalal ex ex ex res-deal-dealcalcal-colais pas pas pres pres pres pres