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Open AccessJournal ArticleDOI

Conjugate-gradient preconditioning methods for shift-variant PET image reconstruction

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TLDR
New preconditioners that approximate more accurately the Hessian matrices of shift-variant imaging problems are described and lead to significantly faster convergence rates for the unconstrained conjugate-gradient (CG) iteration.
Abstract
Gradient-based iterative methods often converge slowly for tomographic image reconstruction and image restoration problems, but can be accelerated by suitable preconditioners. Diagonal preconditioners offer some improvement in convergence rate, but do not incorporate the structure of the Hessian matrices in imaging problems. Circulant preconditioners can provide remarkable acceleration for inverse problems that are approximately shift-invariant, i.e., for those with approximately block-Toeplitz or block-circulant Hessians. However, in applications with nonuniform noise variance, such as arises from Poisson statistics in emission tomography and in quantum-limited optical imaging, the Hessian of the weighted least-squares objective function is quite shift-variant, and circulant preconditioners perform poorly. Additional shift-variance is caused by edge-preserving regularization methods based on nonquadratic penalty functions. This paper describes new preconditioners that approximate more accurately the Hessian matrices of shift-variant imaging problems. Compared to diagonal or circulant preconditioning, the new preconditioners lead to significantly faster convergence rates for the unconstrained conjugate-gradient (CG) iteration. We also propose a new efficient method for the line-search step required by CG methods. Applications to positron emission tomography (PET) illustrate the method.

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Journal ArticleDOI

Fast, iterative image reconstruction for MRI in the presence of field inhomogeneities

TL;DR: A tool for accelerating iterative reconstruction of field-corrected MR images: a novel time-segmented approximation to the MR signal equation that uses a min-max formulation to derive the temporal interpolator.
Journal ArticleDOI

Iterative reconstruction techniques in emission computed tomography.

TL;DR: A review of recent progress in developing statistically based iterative techniques for emission computed tomography describes the different formulations of the emission image reconstruction problem and their properties and describes the numerical algorithms used for optimizing these functions.
Journal ArticleDOI

Resolution and noise properties of MAP reconstruction for fully 3-D PET

TL;DR: The authors show that the approximations provide reasonably accurate estimates of contrast recovery and covariance of MAP reconstruction for priors with quadratic energy functions, and describe how these analytical results can be used to achieve near-uniform contrast recovery throughout the reconstructed volume.
Journal ArticleDOI

A Splitting-Based Iterative Algorithm for Accelerated Statistical X-Ray CT Reconstruction

TL;DR: Numerical experiments with synthetic and real in vivo human data illustrate that cone-filter preconditioners accelerate the proposed ADMM resulting in fast convergence of ADMM compared to conventional and state-of-the-art algorithms that are applicable for CT.
Book ChapterDOI

Statistical Image Reconstruction Methods for Transmission Tomography

TL;DR: In this article, the authors discuss algorithms for reconstructing attenuation images from low-count transmission scans, defined as the mean number of photons per ray is small enough that traditional filtered-backproject on (FBP) images, or even methods based on the Gaussian approximation to the distribution of the Poisson measurements (or logarithm thereof), are inadequate.
References
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Numerical recipes in C

TL;DR: The Diskette v 2.06, 3.5''[1.44M] for IBM PC, PS/2 and compatibles [DOS] Reference Record created on 2004-09-07, modified on 2016-08-08.
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Fundamentals of digital image processing

TL;DR: This chapter discusses two Dimensional Systems and Mathematical Preliminaries and their applications in Image Analysis and Computer Vision, as well as image reconstruction from Projections and image enhancement.
Book

Iterative Solution Methods

TL;DR: This paper presents a meta-analyses of matrix eigenvalues and condition numbers for preconditional matrices using the framework of the Perron-Frobenius theory for nonnegative matrices and some simple iterative methods.
Journal ArticleDOI

Deterministic edge-preserving regularization in computed imaging

TL;DR: This paper proposes a deterministic strategy, based on alternate minimizations on the image and the auxiliary variable, which leads to the definition of an original reconstruction algorithm, called ARTUR, which can be applied in a large number of applications in image processing.
Journal ArticleDOI

Constrained restoration and the recovery of discontinuities

TL;DR: The authors examine prior smoothness constraints of a different form, which permit the recovery of discontinuities without introducing auxiliary variables for marking the location of jumps and suspending the constraints in their vicinity.
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