Accepted for publication to the journal Elsevier Medical Image AnalysisInternational audienceIn this paper, we introduce a method to automatically produce plausible image segmentation samples from a single expert segmentation. A probability distribution of image segmentation boundaries is defined as a Gaussian process, which leads to segmentations which are spatially coherent and consistent with the presence of salient borders in the image. The proposed approach is computationally efficient, and generates visually plausible samples. The variability between the samples is mainly governed by a parameter which may be correlated with a simple Dice's coefficient, or easily set by the user from the definition of probable regions of interest. The ...
1 The segmentation of deformable objects from three-dimensional images is an important and challengi...
A preliminary study on inter-observer variability of manual contour delineation of structures was ca...
Typical methods for image segmentation, or labeling, formulate and solve an optimization problem to ...
Accepted for publication to the journal Elsevier Medical Image AnalysisInternational audienceIn this...
International audienceMedical image segmentation is often a prerequisite for clinical applications. ...
This paper presents a method for estimating uncertainty in MRI-based brain region delineations provi...
This paper presents a method for estimating uncertainty in MRI-based brain region delineations provi...
Abstract. This paper presents a method for estimating uncertainty in MRI-based brain region delineat...
Uncertainty estimates of modern neuronal networks provide additional information next to the compute...
Abstract. Given models for healthy brains, tumor segmentation can be seen as a process of detecting ...
Probabilistic segmentation is concerned with handling imperfections of image segmentation algorithms...
This paper presents an approach for segmentation of digital medical images using a multi-phase proba...
PET has been widely accepted as an effective imaging modality for lung tumor diagnosis and treatment...
Quantifying uncertainty in medical image segmentation applications is essential, as it is often conn...
This is the challenge design document for the "Quantification of Uncertainties in Biomedical Image Q...
1 The segmentation of deformable objects from three-dimensional images is an important and challengi...
A preliminary study on inter-observer variability of manual contour delineation of structures was ca...
Typical methods for image segmentation, or labeling, formulate and solve an optimization problem to ...
Accepted for publication to the journal Elsevier Medical Image AnalysisInternational audienceIn this...
International audienceMedical image segmentation is often a prerequisite for clinical applications. ...
This paper presents a method for estimating uncertainty in MRI-based brain region delineations provi...
This paper presents a method for estimating uncertainty in MRI-based brain region delineations provi...
Abstract. This paper presents a method for estimating uncertainty in MRI-based brain region delineat...
Uncertainty estimates of modern neuronal networks provide additional information next to the compute...
Abstract. Given models for healthy brains, tumor segmentation can be seen as a process of detecting ...
Probabilistic segmentation is concerned with handling imperfections of image segmentation algorithms...
This paper presents an approach for segmentation of digital medical images using a multi-phase proba...
PET has been widely accepted as an effective imaging modality for lung tumor diagnosis and treatment...
Quantifying uncertainty in medical image segmentation applications is essential, as it is often conn...
This is the challenge design document for the "Quantification of Uncertainties in Biomedical Image Q...
1 The segmentation of deformable objects from three-dimensional images is an important and challengi...
A preliminary study on inter-observer variability of manual contour delineation of structures was ca...
Typical methods for image segmentation, or labeling, formulate and solve an optimization problem to ...