作者
George Azzopardi, Nicolai Petkov
发表日期
2011/8/29
图书
International Conference on Computer Analysis of Images and Patterns
页码范围
451-459
出版商
Springer Berlin Heidelberg
简介
The detection of vascular bifurcations in retinal fundus images is important for finding signs of various cardiovascular diseases. We propose a novel method to detect such bifurcations. Our method is implemented in trainable filters that mimic the properties of shape-selective neurons in area V4 of visual cortex. Such a filter is configured by combining given channels of a bank of Gabor filters in an AND-gate-like operation. Their selection is determined by the automatic analysis of a bifurcation feature that is specified by the user from a training image. Consequently, the filter responds to the same and similar bifurcations. With only 25 filters we achieved a correct detection rate of 98.52% at a precision rate of 95.19% on a set of 40 binary fundus images, containing more than 5000 bifurcations. In principle, all vascular bifurcations can be detected if a sufficient number of filters are configured and used.
引用总数
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G Azzopardi, N Petkov - International Conference on Computer Analysis of …, 2011