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Article Dans Une Revue Computational and Mathematical Methods in Medicine Année : 2013

Bayesian Method with Spatial Constraint for Retinal Vessel Segmentation

Zhiyong Xiao
  • Fonction : Auteur
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Mouloud Adel
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Salah Bourennane
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GSM

Résumé

A Bayesian method with spatial constraint is proposed for vessel segmentation in retinal images. The proposed model makes the assumption that the posterior probability of each pixel is dependent on posterior probabilities of their neighboring pixels. An energy function is defined for the proposed model. By applying the modified level set approach to minimize the proposed energy function, we can identify blood vessels in the retinal image. Evaluation of the developed method is done on real retinal images which are from the DRIVE database and the STARE database. The performance is analyzed and compared to other published methods using a number of measures which include accuracy, sensitivity, and specificity. The proposed approach is proved to be effective on these two databases. The average accuracy, sensitivity, and specificity on the DRIVE database are 0.9529, 0.7513, and 0.9792, respectively, and for the STARE database 0.9476, 0.7147, and 0.9735, respectively. Theperformance is better than that of other vessel segmentation methods.

Dates et versions

hal-01280573 , version 1 (29-02-2016)

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Zhiyong Xiao, Mouloud Adel, Salah Bourennane. Bayesian Method with Spatial Constraint for Retinal Vessel Segmentation. Computational and Mathematical Methods in Medicine, 2013, pp.401413. ⟨10.1155/2013/401413⟩. ⟨hal-01280573⟩
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