No convergent ordered subsets (OS) type image reconstruction algorithms for transmission tomography have been proposed to date. In contrast, in emission tomography, there are two known families of convergent OS algorithms: methods that use relaxation parameters , and methods based on the incremental expectation-maximization (EM) approach . This paper generalizes the incremental EM approach by introducing a general framework, "incremental optimization transfer". The proposed algorithms accelerate convergence speeds and ensure global convergence without requiring relaxation parameters. The general optimization transfer framework allows the use of a very broad family of surrogate functions, enabling the development of new algorithms . This pap...
We present a new algorithm for penalized-likelihood emission image reconstruction. The algorithm mon...
Relaxation is widely recognized as a useful tool for providing convergence in block-iterative algori...
Presents a new class of algorithms for penalized-likelihood reconstruction of attenuation maps from ...
No convergent ordered subsets (OS) type image reconstruction algorithms for transmission tomography ...
Abstract — No convergent ordered subsets (OS) type image reconstruction algorithms for transmission ...
Abstract — No convergent ordered subsets (OS) type image reconstruction algorithms for transmission ...
We present two types of globally convergent relaxed ordered subsets (OS) algorithms for penalized-li...
The ordered subsets EM (OSEM) algorithm has enjoyed considerable interest for emission image reconst...
We present new algorithms for penalized-likelihood image reconstruction: modified BSREM (block seque...
Abstract. The ordered subsets EM (OSEM) algorithm has enjoyed considerable interest for emission ima...
Abstract. We propose an algorithm, E-COSEM (Enhanced Complete-Data Ordered Subsets Expectation-Maxim...
The expectation-maximization (EM) algorithm for maximum-likelihood image recovery is guaranteed to c...
The expectation-maximization (EM) algorithm for maximum-likelihood image recovery converges very slo...
This paper reviews and compares three maximum likelihood algorithms for transmission tomography. One...
This paper compares four different minimization approaches for iterative reconstruction in CT:(1) it...
We present a new algorithm for penalized-likelihood emission image reconstruction. The algorithm mon...
Relaxation is widely recognized as a useful tool for providing convergence in block-iterative algori...
Presents a new class of algorithms for penalized-likelihood reconstruction of attenuation maps from ...
No convergent ordered subsets (OS) type image reconstruction algorithms for transmission tomography ...
Abstract — No convergent ordered subsets (OS) type image reconstruction algorithms for transmission ...
Abstract — No convergent ordered subsets (OS) type image reconstruction algorithms for transmission ...
We present two types of globally convergent relaxed ordered subsets (OS) algorithms for penalized-li...
The ordered subsets EM (OSEM) algorithm has enjoyed considerable interest for emission image reconst...
We present new algorithms for penalized-likelihood image reconstruction: modified BSREM (block seque...
Abstract. The ordered subsets EM (OSEM) algorithm has enjoyed considerable interest for emission ima...
Abstract. We propose an algorithm, E-COSEM (Enhanced Complete-Data Ordered Subsets Expectation-Maxim...
The expectation-maximization (EM) algorithm for maximum-likelihood image recovery is guaranteed to c...
The expectation-maximization (EM) algorithm for maximum-likelihood image recovery converges very slo...
This paper reviews and compares three maximum likelihood algorithms for transmission tomography. One...
This paper compares four different minimization approaches for iterative reconstruction in CT:(1) it...
We present a new algorithm for penalized-likelihood emission image reconstruction. The algorithm mon...
Relaxation is widely recognized as a useful tool for providing convergence in block-iterative algori...
Presents a new class of algorithms for penalized-likelihood reconstruction of attenuation maps from ...