Mathematics (Jul 2025)

Retinal Vessel Segmentation Based on a Lightweight U-Net and Reverse Attention

  • Fernando Daniel Hernandez-Gutierrez,
  • Eli Gabriel Avina-Bravo,
  • Mario Alberto Ibarra-Manzano,
  • Jose Ruiz-Pinales,
  • Emmanuel Ovalle-Magallanes,
  • Juan Gabriel Avina-Cervantes

DOI
https://doi.org/10.3390/math13132203
Journal volume & issue
Vol. 13, no. 13
p. 2203

Abstract

Read online

U-shaped architectures have achieved exceptional performance in medical image segmentation. Their aim is to extract features by two symmetrical paths: an encoder and a decoder. We propose a lightweight U-Net incorporating reverse attention and a preprocessing framework for accurate retinal vessel segmentation. This concept could be of benefit to portable or embedded recognition systems with limited resources for real-time operation. Compared to the baseline model (7.7 M parameters), the proposed U-Net model has only 1.9 M parameters and was tested on the DRIVE (Digital Retinal Images for Vesselness Extraction), CHASE (Child Heart and Health Study in England), and HRF (High-Resolution Fundus) datasets for vesselness analysis. The proposed model achieved Dice coefficients and IoU scores of 0.7871 and 0.6318 on the DRIVE dataset, 0.8036 and 0.6910 on the CHASE-DB1 Retinal Vessel Reference dataset, as well as 0.6902 and 0.5270 on the HRF dataset, respectively. Notably, the integration of the reverse attention mechanism contributed to a more accurate delineation of thin and peripheral vessels, which are often undetected by conventional models. The model comprised 1.94 million parameters and 12.21 GFLOPs. Furthermore, during inference, the model achieved a frame rate average of 208 FPS and a latency of 4.81 ms. These findings support the applicability of the proposed model in real-world clinical and mobile healthcare environments where efficiency and Accuracy are essential.

Keywords