In Positron Emission Tomography, movement leads to blurry reconstructions when not accounted for. Whether known a priori or estimated jointly to reconstruction, motion models are increasingly defined in continuum rather that in discrete, for example by means of diffeomorphisms. The present work provides both a statistical and functional analytic framework suitable for handling such models. It is based on time-space Poisson point processes as well as regarding images as measures, and allows to compute the maximum likelihood problem for line-of-response data with a known movement model. Solving the resulting optimisation problem, we derive an Maximum Likelihood Expectation Maximisation (ML-EM) type algorithm which recovers the classical ML-EM algorithm as a particular case for a static phantom. The algorithm is proved to be monotone and convergent in the low-noise regime. Simulations confirm that it correctly removes the blur that would have occurred if movement were neglected.
翻译:在 Positron Emission Tomgraphy 中,移动导致不计及的模糊重建。 无论是已知的先验数据还是共同估算的重建数据,运动模型都日益被连续地定义,而不是在离散的模型中,例如通过异己形态法。 目前的工作提供了适合于处理这些模型的统计和功能分析框架。它基于时空 Poisson点过程以及图像作为衡量标准,并允许用已知的移动模型计算反应线数据的最大可能性问题。 解决由此产生的优化问题, 我们得出了一种最大相似预期最大化(ML-EM)类型算法, 将经典 ML- EM 算法恢复为静态幻影的特例。 事实证明, 算法是单调的, 并在低噪音系统中趋同。 模拟证实它正确地消除了如果运动被忽视会发生的模糊。