Study of CT Images Processing with the Implementation of MLEM Algorithm using CUDA on NVIDIA’S GPU Framework

T. A. Valencia-Pérez, J. M. Hernández-López, E. Moreno-Barbosa, B. D. Celis-Alonso
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引用次数: 1

Abstract

In medicine, the acquisition process in Computed Tomography Images (CT) is obtained by a reconstruction algorithm. The classical method for image reconstruction is the Filtered Back Projection (FBP). This method is fast and simple but does not use any statistical information about the measurements. The appearance of artifacts and its low spatial resolution in reconstructed images must be considered. Furthermore, the FBP requires of optimal conditions of the projections and complete sets of data. In this paper a methodology to accelerate acquisition process for CT based on the Maximum Likelihood Estimation Method (MLEM) algorithm is presented. This statistical iterative reconstruction algorithm uses a GPU Programming Paradigms and was compared with sequential algorithms in which the reconstruction time was reduced by up to 3 orders of magnitude while preserving image quality. Furthermore, they showed a good performance when compared with reconstruction methods provided by commercial software. The system, which would consist exclusively of a commercial laptop and GPU could be used as a fast, portable, simple and cheap image reconstruction platform in the future.
基于NVIDIA GPU框架的CUDA实现MLEM算法在CT图像处理中的研究
在医学中,计算机断层扫描图像(CT)的采集过程是通过重构算法获得的。经典的图像重建方法是滤波后投影(FBP)。该方法快速简单,但不使用任何有关测量的统计信息。重建图像中伪影的出现及其低空间分辨率是必须考虑的问题。此外,FBP还要求预测的最优条件和完整的数据集。本文提出了一种基于极大似然估计(MLEM)算法加快CT采集过程的方法。该统计迭代重建算法使用GPU编程范式,并与序列算法进行了比较,在保持图像质量的同时,重建时间减少了3个数量级。此外,与商业软件提供的重建方法相比,它们表现出良好的性能。该系统仅由商用笔记本电脑和GPU组成,未来可作为快速、便携、简单、廉价的图像重建平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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