A multi-scale adaptive thresholding scheme is presented in this study. It was evaluated as a regularization process to filtered back-projection (FBP) for reconstructing clinical PET brain data. Adaptive selection of thresholding operators for each multi-scale sub-band enabled a unified process for noise removal and feature enhancement. A cross-scale regularization process was utilized as an effective signal recovering operator. Together with non-linear thresholding and enhancement operators, they offered remarkable postprocessing to FBP reconstructed data. In addition, such effectiveness was formulated as a regularization process to optimize FBP reconstruction. A comparison study with multiscale regularized FBP (MFBP), standard FBP with cli...
Dynamic PET provides temporal information about the tracer uptake. However, each PET frame has usual...
[[abstract]]©2005 Elsevier - The maximum likelihood expectation maximization (MLEM) algorithm has se...
The purpose of this study is to introduce a novel em-pirical iterative algorithm for medical image r...
Abstract—A multi-scale adaptive thresholding scheme is presented in this study. It was evaluated as ...
A multi-scale adaptive thresholding scheme is presented in this study. It was evaluated as a regular...
Abstract—In tomographic medical devices such as single photon emission computed tomography or positr...
Abstract. De-noising of SPECT and PET images is a challenging task due to the inherent low signal-to...
In tomographic medical devices such as single photon emission computed tomography or positron emissi...
Abstract The purpose of this study was to analyze the behavior of a contouring algorithm for PET im...
Abstract The purpose of this study was to analyze the behavior of a contouring algorithm for PET ...
Abstract The purpose of this study was to analyze the behavior of a contouring algorithm for PET ...
[[abstract]]©2004 JMBE - The maximum likelihood expectation maximization (MLEM) algorithm has severa...
In tomographic medical devices such as SPECT or PET cameras, image reconstruction is an unstable inv...
The aim of this work was to assess robustness and reliability of an adaptive thresholding algorithm ...
De-noising of SPECT and PET images is a challenging task due to the inherent low signal-to-noise rat...
Dynamic PET provides temporal information about the tracer uptake. However, each PET frame has usual...
[[abstract]]©2005 Elsevier - The maximum likelihood expectation maximization (MLEM) algorithm has se...
The purpose of this study is to introduce a novel em-pirical iterative algorithm for medical image r...
Abstract—A multi-scale adaptive thresholding scheme is presented in this study. It was evaluated as ...
A multi-scale adaptive thresholding scheme is presented in this study. It was evaluated as a regular...
Abstract—In tomographic medical devices such as single photon emission computed tomography or positr...
Abstract. De-noising of SPECT and PET images is a challenging task due to the inherent low signal-to...
In tomographic medical devices such as single photon emission computed tomography or positron emissi...
Abstract The purpose of this study was to analyze the behavior of a contouring algorithm for PET im...
Abstract The purpose of this study was to analyze the behavior of a contouring algorithm for PET ...
Abstract The purpose of this study was to analyze the behavior of a contouring algorithm for PET ...
[[abstract]]©2004 JMBE - The maximum likelihood expectation maximization (MLEM) algorithm has severa...
In tomographic medical devices such as SPECT or PET cameras, image reconstruction is an unstable inv...
The aim of this work was to assess robustness and reliability of an adaptive thresholding algorithm ...
De-noising of SPECT and PET images is a challenging task due to the inherent low signal-to-noise rat...
Dynamic PET provides temporal information about the tracer uptake. However, each PET frame has usual...
[[abstract]]©2005 Elsevier - The maximum likelihood expectation maximization (MLEM) algorithm has se...
The purpose of this study is to introduce a novel em-pirical iterative algorithm for medical image r...