Fast and efficient retinal blood vessel segmentation method based on deep learning network.

Journal: Computerized medical imaging and graphics : the official journal of the Computerized Medical Imaging Society
Published Date:

Abstract

The segmentation of the retinal vascular tree presents a major step for detecting ocular pathologies. The clinical context expects higher segmentation performance with a reduced processing time. For higher accurate segmentation, several automated methods have been based on Deep Learning (DL) networks. However, the used convolutional layers bring to a higher computational complexity and so for execution times. For such need, this work presents a new DL based method for retinal vessel tree segmentation. Our main contribution consists in suggesting a new U-form DL architecture using lightweight convolution blocks in order to preserve a higher segmentation performance while reducing the computational complexity. As a second main contribution, preprocessing and data augmentation steps are proposed with respect to the retinal image and blood vessel characteristics. The proposed method is tested on DRIVE and STARE databases, which can achieve a better trade-off between the retinal blood vessel detection rate and the detection time with average accuracy of 0.978 and 0.98 in 0.59 s and 0.48 s per fundus image on GPU NVIDIA GTX 980 platforms, respectively for DRIVE and STARE database fundus images.

Authors

  • Henda Boudegga
    Medical Technology and Image Processing Laboratory, Faculty of Medicine, University of Monastir, Tunisia; ISITCom Hammam-Sousse, University of Sousse, Tunisia. Electronic address: hendaboudegga@gmail.com.
  • Yaroub Elloumi
    Medical Technology and Image Processing Laboratory, Faculty of Medicine, University of Monastir, Tunisia; LIGM, Univ Gustave Eiffel, CNRS, ESIEE Paris, F-77454 Marne-la-Vallée, France; ISITCom Hammam-Sousse, University of Sousse, Tunisia.
  • Mohamed Akil
    Gaspard Monge Computer Science Laboratory, Univ Gustave Eiffel, CNRS, ESIEE Paris, F-77454 Marne-la-Vallée, France. Electronic address: mohamed.akil@esiee.fr.
  • Mohamed Hedi Bedoui
    Medical Technology and Image Processing Laboratory, Faculty of Medicine, University of Monastir, Tunisia.
  • Rostom Kachouri
    Gaspard Monge Computer Science Laboratory, Univ Gustave Eiffel, CNRS, ESIEE Paris, F-77454 Marne-la-Vallée, France. Electronic address: rostom.kachouri@esiee.fr.
  • Asma Ben Abdallah
    Medical Technology and Image Processing Laboratory, Faculty of Medicine, University of Monastir, Tunisia.