Reconstruction of PET Brain image using Conjugate Gradient algorithm

T. Arunprasath, M. Rajasekaran, S. Kannan, V. A. Kalasalingam
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引用次数: 5

Abstract

This paper addresses a nonlinear PET Brain image reconstruction based on a weighted least-square (WLS). In previous years, the analytical approach was used to reconstruct the Positron Emission Tomography (PET). This approach requires a minimization of a convex cost function and accompanied by many problems related to the computational complexity. The poles apart iteration methods are Conjugate Gradient (CG), Coordinate Descent (CD) and Image Space Reconstruction Algorithm (ISRA). It has many advantages compared to conventional approach. The functional protocol used here is CG iteration method. This statistical fashion can provide better and high PSNR along with lowest noise in the PET Brain image. An assortment of image quality parameters is considered to analyze the PET brain image in this algorithm. The PET brain image is constructed and simulated in MATLAB /Simulink package.
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用共轭梯度算法重建PET脑图像
研究了一种基于加权最小二乘的非线性PET脑图像重建方法。在过去的几年里,分析方法被用于重建正电子发射断层扫描(PET)。这种方法需要最小化凸代价函数,并伴随着许多与计算复杂性相关的问题。极点分离迭代方法有共轭梯度法(CG)、坐标下降法(CD)和图像空间重构法(ISRA)。与传统方法相比,它具有许多优点。这里使用的功能协议是CG迭代法。这种统计方式可以在PET脑图像中提供更好的高PSNR和最低的噪声。该算法考虑了多种图像质量参数对PET脑图像进行分析。在MATLAB /Simulink软件包中构建并仿真了PET脑图像。
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