Author:
Kuang Xihe,Xu Xiayu,Fang Leyuan,Kozegar Ehsan,Chen Huachao,Sun Yue,Huang Fan,Tan Tao
Abstract
Retinal images have been proven significant in diagnosing multiple diseases such as diabetes, glaucoma, and hypertension. Retinal vessel segmentation is crucial for the quantitative analysis of retinal images. However, current methods mainly concentrate on the segmentation performance of overall retinal vessel structures. The small vessels do not receive enough attention due to their small percentage in the full retinal images. Small retinal vessels are much more sensitive to the blood circulation system and have great significance in the early diagnosis and warning of various diseases. This paper combined two unsupervised methods, local phase congruency (LPC) and orientation scores (OS), with a deep learning network based on the U-Net as attention. And we proposed the U-Net using local phase congruency and orientation scores (UN-LPCOS), which showed a remarkable ability to identify and segment small retinal vessels. A new metric called sensitivity on a small ship (Sesv) was also proposed to evaluate the methods’ performance on the small vessel segmentation. Our strategy was validated on both the DRIVE dataset and the data from Maastricht Study and achieved outstanding segmentation performance on both the overall vessel structure and small vessels.
Reference26 articles.
1. Retinal vessels segmentation techniques and algorithms: a survey;Almotiri;Appl Sci Basel,2018
2. A fully automated pipeline of extracting biomarkers to quantify vascular changes in retina-related diseases;Zhang,2018
3. Trainable COSFIRE filters for vessel delineation with application to retinal images;Azzopardi;Med Image Anal,2015
4. Robust and fast vessel segmentation via Gaussian derivatives in orientation scores;Zhang;Image Anal Proc,2015
5. Robust retinal vessel segmentation via locally adaptive derivative frames in orientation scores;Zhang;IEEE Trans Med Imaging,2016
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