Palit Robin, Kupinski Matthew A, Barrett Harrison H, Clarkson Eric W, Aarsvold John N, Volokh Lana, Grobshtein Yariv
College of Optical Sciences, The University of Arizona, Tucson, AZ.
Proc SPIE Int Soc Opt Eng. 2009 Mar 12;7263. doi: 10.1117/12.813799.
A single photon emission computed tomography (SPECT) imaging system can be modeled by a linear operator H that maps from object space to detector pixels in image space. The singular vectors and singular-value spectra of H provide useful tools for assessing system performance. The number of voxels used to discretize object space and the number of collection angles and pixels used to measure image space make the matrix dimensions H large. As a result, H must be stored sparsely which renders several conventional singular value decomposition (SVD) methods impractical. We used an iterative power methods SVD algorithm (Lanczos) designed to operate on very large sparsely stored matrices to calculate the singular vectors and singular-value spectra for two small animal pinhole SPECT imaging systems: FastSPECT II and M(3)R. The FastSPECT II system consisted of two rings of eight scintillation cameras each. The resulting dimensions of H were 68921 voxels by 97344 detector pixels. The M(3)R system is a four camera system that was reconfigured to measure image space using a single scintillation camera. The resulting dimensions of H were 50864 voxels by 6241 detector pixels. In this paper we present results of the SVD of each system and discuss calculation of the measurement and null space for each system.
单光子发射计算机断层扫描(SPECT)成像系统可以用一个线性算子H来建模,该算子从物体空间映射到图像空间中的探测器像素。H的奇异向量和奇异值谱为评估系统性能提供了有用的工具。用于离散物体空间的体素数量以及用于测量图像空间的采集角度和像素数量使得矩阵H的维度很大。因此,H必须以稀疏方式存储,这使得几种传统的奇异值分解(SVD)方法不实用。我们使用了一种迭代幂法SVD算法(兰乔斯算法),该算法设计用于对非常大的稀疏存储矩阵进行运算,以计算两个小动物针孔SPECT成像系统FastSPECT II和M(3)R的奇异向量和奇异值谱。FastSPECT II系统由两个各包含八个闪烁相机的环组成。H的最终维度为68921个体素乘以97344个探测器像素。M(3)R系统是一个四相机系统,经过重新配置后使用单个闪烁相机测量图像空间。H的最终维度为50864个体素乘以6241个探测器像素。在本文中,我们展示了每个系统的SVD结果,并讨论了每个系统的测量空间和零空间的计算。