This paper presents a method for detecting and measuring the vascular structures of retinal images. Features are modelled as a superposition of Gaussian functions in a local region. The parameters i.e. centroid, orientation, width of the feature are derived by a minimum mean square error (MMSE) type of spatial regression. We employ a penalised likelihood test, the Akakie Information Criteria (AIC), to select the best model and scale for vessel segments. A maximum-cost spanning tree (MST) algorithm is then used to perform the neighbourhood linking and infer the global vascular structure.. We present results of evaluations on a set of twenty digital fundus retinal images
This paper considers the problem of vessel segmentation in optical fundus images of the retina. We a...
This paper considers the problem of vessel segmentation in optical fundus images of the retina. We a...
A supervised method is proposed for automated segmentation of vessels in fundus images of retina. Th...
This paper presents a method for detecting and measuring the vascular structures of retinal images....
This paper presents a vascular representation and segmentation algorithm based on a multiresolution ...
Studies of the vascular tree in the retina have applications not only in the medical field but also ...
International audienceThe automatic analysis of retinal blood vessels plays an important role in the...
One of the most common modalities to examine the human eye is the eye-fundus photograph. The evaluat...
A Bayesian method with spatial constraint is proposed for vessel segmentation in retinal images. The...
From a clinical perspective retinal vascular segmentation and analysis are important tasks in aiding...
This diploma thesis deals with segmentation of blood vessel from images acquired by fundus camera. T...
Retinal vessels identification and localization aim to separate the different retinal vasculature st...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
International audienceVessel structures such as retinal vasculature are important features for compu...
The human retina has the potential to reveal important information about retinal, ophthalmic, and ev...
This paper considers the problem of vessel segmentation in optical fundus images of the retina. We a...
This paper considers the problem of vessel segmentation in optical fundus images of the retina. We a...
A supervised method is proposed for automated segmentation of vessels in fundus images of retina. Th...
This paper presents a method for detecting and measuring the vascular structures of retinal images....
This paper presents a vascular representation and segmentation algorithm based on a multiresolution ...
Studies of the vascular tree in the retina have applications not only in the medical field but also ...
International audienceThe automatic analysis of retinal blood vessels plays an important role in the...
One of the most common modalities to examine the human eye is the eye-fundus photograph. The evaluat...
A Bayesian method with spatial constraint is proposed for vessel segmentation in retinal images. The...
From a clinical perspective retinal vascular segmentation and analysis are important tasks in aiding...
This diploma thesis deals with segmentation of blood vessel from images acquired by fundus camera. T...
Retinal vessels identification and localization aim to separate the different retinal vasculature st...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
International audienceVessel structures such as retinal vasculature are important features for compu...
The human retina has the potential to reveal important information about retinal, ophthalmic, and ev...
This paper considers the problem of vessel segmentation in optical fundus images of the retina. We a...
This paper considers the problem of vessel segmentation in optical fundus images of the retina. We a...
A supervised method is proposed for automated segmentation of vessels in fundus images of retina. Th...