Abstract
Segmentation of retinal vessels is important for doctors to diagnose some diseases. The segmentation accuracy of retinal vessels can be effectively improved by using deep learning methods. However, most of the existing methods are incomplete for shallow feature extraction, and some superficial features are lost, resulting in blurred vessel boundaries and inaccurate segmentation of capillaries in the segmentation results. At the same time, the “layer-by-layer” information fusion between encoder and decoder makes the feature information extracted from the shallow layer of the network cannot be smoothly transferred to the deep layer of the network, resulting in noise in the segmentation features. In this paper, we propose the MFI-Net (Multi-resolution fusion input network) network model to alleviate the above problem to a certain extent. The multi-resolution input module in MFI-Net avoids the loss of coarse-grained feature information in the shallow layer by extracting local and global feature information in different resolutions. We have reconsidered the information fusion method between the encoder and the decoder, and used the information aggregation method to alleviate the information isolation between the shallow and deep layers of the network. MFI-Net is verified on three datasets, DRIVE, CHASE_DB1 and STARE. The experimental results show that our network is at a high level in several metrics, with F1 higher than U-Net by 2.42%, 2.46% and 1.61%, higher than R2U-Net by 1.47%, 2.22% and 0.08%, respectively. Finally, this paper proves the robustness of MFI-Net through experiments and discussions on the stability and generalization ability of MFI-Net.
Highlights
The retina contains a large number of blood vessels and is the only vascular system in the body that can be viewed in depth using non-invasive means
Analysis of the experimental results on the DRIVE, CHASE_DB1 and STARE datasets showed that the FAS module had a huge improvement on the U-Net network, with F1 increasing by 1.60%, 2.42% and 1.54% on the three datasets, respectively
The MFI-Net retinal vessel segmentation network model proposed in this paper enhances the performance of the network model by enhancing the fusion of semantic information
Summary
The retina contains a large number of blood vessels and is the only vascular system in the body that can be viewed in depth using non-invasive means. Common diseases such as retinal arterial and venous occlusion, high blood pressure and diabetes will have symptoms on the retinal blood vessels, so that timely detection of changes in the length, width, curvature, branching pattern, and transparency of retinal vessels [1] would have a high chance of avoiding blindness due to these diseases [2]. Segmentation of retinal vessel images has become an important task in modern medically assisted treatment and diagnosis, and traditional segmentation means.
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