dc.description.abstract |
Retinal blood vessel segmentation is signi cant in proper detection of vascular
anomalies manifested in di erent retinal pathologies. Perfect knowledge on blood
vessel location is necessary for automated detection of retinal diseases. However, ac-
curate identi cation of blood vessel locations by eye inspection is extremely di cult
especially in faded regions or very thin vessel regions. In this thesis, a two-stage au-
tomatic vessel detection algorithm is proposed which involves rule based candidate
vessel selection algorithm at the rst stage followed by a post-processing scheme and
a supervised classi cation algorithm in the second stage. In order to obtain enhanced
vessel region, in the preprocessing scheme, rst, spatial adaptive median ltering is
introduced which can reduce noise generated by nonhomogeneous background and
then the morphological Top-Hat transform is used for further background homog-
enization for vessel enhancement. A gradient based k-neighborhood (for k=1, 2,
3)) bidirectional spatial search method is proposed to select vessel candidates from
preprocessed green plane of retinal image. A post-processing scheme based on spa-
tial similarity and connectivity is employed to nalize the vessel candidate selection.
Instead of pixel by pixel classi cation of the whole retinal image, a supervised clas-
si cation scheme is developed where only some critical candidate pixels are tested
using linear discriminant based classi er. The idea of such a selective classi cation
o ers huge computational savings. For feature extraction, both spatial and spectral
features of the subregion centered on test pixel and 8-connected spatially shifted
subregions with respect to the center pixel are considered. Since feature extraction
is carried out on a larger block in comparison to the gradient search operation, in the
preprocessing scheme, sequential morphological opening ( ltering) operation in Top-
Hat transform and background homogenization via shade correction are included.
In supervised classi cation, instead of selecting training pixels by eye inspection,
universal trainer selection algorithm is proposed based on principle of connectivity
which is veri ed by discriminating feature characteristics obtained by selected pix-
els. Extensive simulation is carried out on some retinal image databases and it is
found that a satisfactory performance is obtained by using the algorithm. |
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