ICASSP 2006 - May 15-19, 2006 - Toulouse, France

Technical Program

Paper Detail

Paper:BIO-L1.3
Session:Medical Imaging
Time:Tuesday, May 16, 17:10 - 17:30
Presentation: Lecture
Topic: Bio Imaging and Signal Processing: Segmentation and analysis
Title: Segmentation of Retinal Blood Vessels using Scale-Space Features and K-Nearest Neighbour Classifier
Authors: Nancy Salem, Asoke Nandi, University of Liverpool, United Kingdom
Abstract: In this paper, a new feature vector for each pixel, in conjunction with the K-nearest neighbour classifier, is proposed for the segmentation of retinal blood vessels in digital colour fundus images. The proposed feature vector consists of two scale-space features - the largest eigenvalue and the gradient magnitude of the intensity image, representing the two attributes of any vessel, i.e. the piecewise linearity and parallel edges, as well as the green channel image intensity. In terms of sensitivity and specificity, our results are comparable with other supervised method which uses a set of 31 features, yet in terms of processing time, our method uses a smaller number of features and results in a significant reduction in the processing time.



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