A MULTI-STAGE APPROACH FOR RETINAL LAYER SEGMENTATION IN OCT B-SCAN IMAGES

Received: 2026-07-15 15:37:26

Published: 2026-04-18

Abstract

This study introduces an interpretable, training-free, and computationally efficient multi-stage framework for the segmentation of retinal layers in OCT B-scan images. The proposed approach is robust to common challenges such as speckle noise, depth-related illumination inconsistencies, and variations across imaging devices and acquisition protocols, while maintaining fast execution on standard CPU systems. Evaluation is carried out using clinically relevant metrics, including Dice coefficient, IoU, Boundary F1-score, and layer thickness error, along with practical recommendations for parameter tuning. The method demonstrates consistent and reliable performance, achieving an effective balance between quality, computational complexity, and resource consumption, making it suitable for environments with limited computational capacity.

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How to Cite

[1]
Shamsiyeva X.G. tran. 2026. A MULTI-STAGE APPROACH FOR RETINAL LAYER SEGMENTATION IN OCT B-SCAN IMAGES. Uzbekistan Open Conference. 1 (Apr. 2026), 288–295. DOI:https://doi.org/10.57033/.

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