Loading...
Please wait, while we are loading the content...
Similar Documents
Semi-Supervised Learning Method of U-Net Deep Learning Network for Blood Vessel Segmentation in Retinal Images
Content Provider | MDPI |
---|---|
Author | Chen, Dali Ao, Yingying Liu, Shixin |
Copyright Year | 2020 |
Description | Blood vessel segmentation methods based on deep neural networks have achieved satisfactory results. However, these methods are usually supervised learning methods, which require large numbers of retinal images with high quality pixel-level ground-truth labels. In practice, the task of labeling these retinal images is very costly, financially and in human effort. To deal with these problems, we propose a semi-supervised learning method which can be used in blood vessel segmentation with limited labeled data. In this method, we use the improved U-Net deep learning network to segment the blood vessel tree. On this basis, we implement the U-Net network-based training dataset updating strategy. A large number of experiments are presented to analyze the segmentation performance of the proposed semi-supervised learning method. The experiment results demonstrate that the proposed methodology is able to avoid the problems of insufficient hand-labels, and achieve satisfactory performance. |
Starting Page | 1067 |
e-ISSN | 20738994 |
DOI | 10.3390/sym12071067 |
Journal | Symmetry |
Issue Number | 7 |
Volume Number | 12 |
Language | English |
Publisher | MDPI |
Publisher Date | 2020-06-29 |
Access Restriction | Open |
Subject Keyword | Symmetry Remote Sensing Retinal Image Blood Vessel Segmentation Semi-supervised Learning U-net |
Content Type | Text |
Resource Type | Article |