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Regularized nonlinear least squares methods for hit position reconstruction in small gamma cameras

机译:小型伽马相机中命中位置重建的正则化非线性最小二乘法

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摘要

In order to improve the performance of a gamma camera, it's fundamental to accurately reconstruct the photon hit position on the detector surface. In the last years, the increasing demand of small highly-efficient PET systems led to the development of new hit position estimation methods, with the purpose of improving the performances near the edges of the detector, where most of the information is typically lost. In this paper we apply iterative optimization methods, based on the regularization of the nonlinear least squares problem, to estimate the photon hit position. Numerical results show that, compared with the classic Anger algorithm, the proposed methods allow to recover more information near the edges.
机译:为了提高伽马相机的性能,准确重建探测器表面上的光子命中位置是至关重要的。在过去的几年中,小型高效PET系统的需求不断增长,导致了新的命中位置估计方法的发展,其目的是提高检测器边缘附近的性能,在检测器边缘,大多数信息通常会丢失。在本文中,我们基于非线性最小二乘问题的正则化应用迭代优化方法来估计光子命中位置。数值结果表明,与经典的Anger算法相比,该方法可以在边缘附近恢复更多的信息。

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