[[abstract]]©1999 IEEE - Describes a novel image prior model with mixed continuity constraints for Bayesian PET image reconstruction. If an image can be partitioned into partial-volume and various pure regions, the author models the image as a piece-wise smooth function through a Gibbs prior. Within each pure or partial-volume region, the image intensity is governed by a thin-plate energy function. Both first- and second-order edge detection techniques are applied to estimate region boundaries. Instead of using the binary processes representing region boundaries, a controlled-continuity approach is adopted to influence boundary formation. The rationale is that while the first-order edge detection captures the jumps between two pure regions,...
Abstract—Image priors based on products have been recognized to offer many advantages because they a...
Abstract. The data in PET emission and transmission tomography and in low dose X-ray tomography, con...
This paper summarizes a new Bayesian method for edge-preserving image restoration from noisy measure...
[[abstract]]©2000 SPIE - A novel image prior with mixed continuity constraints is proposed for the B...
While the ML-EM algorithm for reconstruction for emission tomography is unstable due to the ill-pose...
ABSTRACT. A new class of prior models is proposed for Bayesian image analysis. This class of priors ...
In this paper a new combination of image priors is introduced and applied to Bayesian image restorat...
Abstract—In this paper, we propose a class of image restoration algorithms based on the Bayesian app...
The paper summarizes a new Bayesian method for edge-preserving image restoration from noisy measurem...
Maximum a-posteriori (MAP) estimation has the advantage of incorporating prior knowledge in the imag...
International audienceIn PET image reconstruction, it would be useful to obtain the entire posterior...
The use of anatomical information to improve the quality of reconstructed images in Positron Emissio...
We describe conjugate gradient algorithms for reconstruction of transmission and emission PET images...
International audienceThe present work describes a Bayesian maximum a posteriori (MAP) method using ...
Image restoration is a dynamic field of research. The need for efficient image restoration methods h...
Abstract—Image priors based on products have been recognized to offer many advantages because they a...
Abstract. The data in PET emission and transmission tomography and in low dose X-ray tomography, con...
This paper summarizes a new Bayesian method for edge-preserving image restoration from noisy measure...
[[abstract]]©2000 SPIE - A novel image prior with mixed continuity constraints is proposed for the B...
While the ML-EM algorithm for reconstruction for emission tomography is unstable due to the ill-pose...
ABSTRACT. A new class of prior models is proposed for Bayesian image analysis. This class of priors ...
In this paper a new combination of image priors is introduced and applied to Bayesian image restorat...
Abstract—In this paper, we propose a class of image restoration algorithms based on the Bayesian app...
The paper summarizes a new Bayesian method for edge-preserving image restoration from noisy measurem...
Maximum a-posteriori (MAP) estimation has the advantage of incorporating prior knowledge in the imag...
International audienceIn PET image reconstruction, it would be useful to obtain the entire posterior...
The use of anatomical information to improve the quality of reconstructed images in Positron Emissio...
We describe conjugate gradient algorithms for reconstruction of transmission and emission PET images...
International audienceThe present work describes a Bayesian maximum a posteriori (MAP) method using ...
Image restoration is a dynamic field of research. The need for efficient image restoration methods h...
Abstract—Image priors based on products have been recognized to offer many advantages because they a...
Abstract. The data in PET emission and transmission tomography and in low dose X-ray tomography, con...
This paper summarizes a new Bayesian method for edge-preserving image restoration from noisy measure...