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Retrieving challenging vessel connections in retinal images by line co-occurrence statistics.

Samaneh Abbasi-SureshjaniJiong ZhangRemco DuitsBart M Ter Haar Romeny
Published in: Biological cybernetics (2017)
Natural images contain often curvilinear structures, which might be disconnected, or partly occluded. Recovering the missing connection of disconnected structures is an open issue and needs appropriate geometric reasoning. We propose to find line co-occurrence statistics from the centerlines of blood vessels in retinal images and show its remarkable similarity to a well-known probabilistic model for the connectivity pattern in the primary visual cortex. Furthermore, the probabilistic model is trained from the data via statistics and used for automated grouping of interrupted vessels in a spectral clustering based approach. Several challenging image patches are investigated around junction points, where successful results indicate the perfect match of the trained model to the profiles of blood vessels in retinal images. Also, comparisons among several statistical models obtained from different datasets reveal their high similarity, i.e., they are independent of the dataset. On top of that the best approximation of the statistical model with the symmetrized extension of the probabilistic model on the projective line bundle is found with a least square error smaller than [Formula: see text]. Apparently, the direction process on the projective line bundle is a good continuation model for vessels in retinal images.
Keyphrases
  • optical coherence tomography
  • deep learning
  • convolutional neural network
  • diabetic retinopathy
  • machine learning
  • gene expression
  • multiple sclerosis
  • genome wide
  • high throughput
  • high intensity