Title of article :
Blood Vessel Segmentation of Fundus Retinal Images Based on Improved Frangi and Mathematical Morphology
Author/Authors :
Tian, Feng Xi’an University of Science and Technology - Xi’an, China , Li, Ying Xi’an University of Science and Technology - Xi’an, China , Wang, Jing Xi’an University of Science and Technology - Xi’an, China , Chen, Wei Xi’an University of Science and Technology - Xi’an, China
Abstract :
An improved blood vessel segmentation algorithm on the basis of traditional Frangi filtering and the mathematical morphological
method was proposed to solve the low accuracy of automatic blood vessel segmentation of fundus retinal images and high
complexity of algorithms. First, a global enhanced image was generated by using the contrast-limited adaptive histogram
equalization algorithm of the retinal image. An improved Frangi Hessian model was constructed by introducing the scale
equivalence factor and eigenvector direction angle of the Hessian matrix into the traditional Frangi filtering algorithm to
enhance blood vessels of the global enhanced image. Next, noise interferences surrounding small blood vessels were eliminated
through the improved mathematical morphological method. Then, blood vessels were segmented using the Otsu threshold
method. The improved algorithm was tested by the public DRIVE and STARE data sets. According to the test results, the
average segmentation accuracy, sensitivity, and specificity of retinal images in DRIVE and STARE are 95.54%, 69.42%, and
98.02% and 94.92%, 70.19%, and 97.71%, respectively. The improved algorithm achieved high average segmentation accuracy
and low complexity while promising segmentation sensitivity. This improved algorithm can segment retinal vessels more
accurately than other algorithms.
Keywords :
Blood , Morphology , CLAHE
Journal title :
Computational and Mathematical Methods in Medicine