4.6 Article

Retinal Vessels Segmentation Based on Dilated Multi-Scale Convolutional Neural Network

Journal

IEEE ACCESS
Volume 7, Issue -, Pages 76342-76352

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2019.2922365

Keywords

Multi-scale; retinal vessel segmentation; deep convolutional neural network; dilation convolutions; residual module

Funding

  1. National Natural Science Foundation of China [61163036]
  2. NSFC Financing for Natural Science Fund in 2016 [1606RJZA047]
  3. Special Fund Project of Basic Scientific Research Operating Expenses of Institutes and Universities in Gansu in 2012
  4. Institutes and Universities Graduate Tutor Project in Gansu [1201-16]
  5. Third Period of the Key Scientific Research Project of Knowledge and Innovation Engineering of the Northwest Normal University [nwnu-kjcxgc-03-67]

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Accurate segmentation of retinal vessels is a basic step in diabetic retinopathy (DR) detection. Most methods based on deep convolutional neural network (DCNN) have small receptive fields, and hence they are unable to capture global context information of larger regions, with difficult to identify pathological. The final segmented retina vessels contain more noise with low classification accuracy. Therefore, in this paper, we propose a DCNN structure named as D-Net. In the encoding phase, we reduced the loss of feature information by reducing the downsampling factor, which reduced the difficulty of tiny thin vessels segmentation. We use the combined dilated convolution to effectively enlarge the receptive field of the network and alleviate the grid problem that exists in the standard dilated convolution. In the proposed multi-scale information fusion module (MSIF), parallel convolution layers with different dilation rates are used, so that the model can obtain more dense feature information and better capture retinal vessel information of different sizes. In the decoding module, the skip layer connection is used to propagate context information to higher resolution layers, so as to prevent low-level information from passing the entire network structure. Finally, our method was verified on DRIVE, STARE, and CHASE dataset. The experimental results show that our network structure outperforms some state-of-art method, such as N-4-fields, U-Net, and DRIU in terms of accuracy, sensitivity, specificity, and AUC(ROC). Particularly, D-Net outperforms U-Net by 1.04 %, 1.23 %, and 2.79 % in DRIVE, STARE, and CHASE dataset, respectively.

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