论文标题
求解第一类的弗雷霍尔姆方程的粒子方法
A Particle Method for Solving Fredholm Equations of the First Kind
论文作者
论文摘要
第一类的Fredholm积分方程是不适合线性逆问题的原型示例。他们模拟了扭曲的嘈杂观测和间接密度估计的重建,并出现在仪器可变回归中。但是,他们的数值解决方案仍然是一个具有挑战性的问题。当前许多可用的技术都需要对解决方案领域进行初步离散化,并对其规律性做出强烈的假设。例如,流行的期望最大化平滑(EMS)方案需要假设分段恒定解决方案,这对于大多数应用而言是不合适的。我们在这里提出了一种绕过这两个问题的新型粒子方法。该算法可以被认为是EMS方案的蒙特卡洛近似,不仅可以对域进行自适应随机离散化,而且还会导致平滑的近似解决方案。我们分析了EMS迭代和相应粒子算法的理论特性。与标准EMS相比,我们通过实验表明,我们的新型粒子方法为现实系统提供了最先进的性能,包括从正电子发射断层扫描中的运动去膨胀和重建大脑的横截面图像。
Fredholm integral equations of the first kind are the prototypical example of ill-posed linear inverse problems. They model, among other things, reconstruction of distorted noisy observations and indirect density estimation and also appear in instrumental variable regression. However, their numerical solution remains a challenging problem. Many techniques currently available require a preliminary discretization of the domain of the solution and make strong assumptions about its regularity. For example, the popular expectation maximization smoothing (EMS) scheme requires the assumption of piecewise constant solutions which is inappropriate for most applications. We propose here a novel particle method that circumvents these two issues. This algorithm can be thought of as a Monte Carlo approximation of the EMS scheme which not only performs an adaptive stochastic discretization of the domain but also results in smooth approximate solutions. We analyze the theoretical properties of the EMS iteration and of the corresponding particle algorithm. Compared to standard EMS, we show experimentally that our novel particle method provides state-of-the-art performance for realistic systems, including motion deblurring and reconstruction of cross-section images of the brain from positron emission tomography.