FRunetm: Enhancing Biomedical Nucleus Segmentation with CBAM-SE Attention
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Springer International Publishing AG
Series Info
Lecture Notes on Data Engineering and Communications Technologies ; Volume 292 , Pages 206 - 215
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Abstract
Nucleus segmentation is fundamental for interpreting biomedical images, which further enables the analysis of cell structures and disease recognition. In this research, we pro pose Fourier Residual UNet m (FRunetm), an enhanced version of the Fourier Residual UNet (FRunet) architecture enhanced with the Convolutional Block Attention Module Squeeze and excitation attention (CBAM-SE) attention mechanism, for improving segmentation precision on complex biomedical images. The FRunetm model was compared with three other deep learning models, which are Classic U-Net, SE U-Net, FRunet with a classic attention mechanism. All models were evaluated based on a spectrum of performance metrics, including accuracy, Dice coefficient, F1 score, loss, mean intersect over union (IoU), precision, and recall. Results show a marked segmentation performance improvement with the U-Net based architecture that employs the sophisticated attention mechanism (CBAM-SE). The current work outlines the performance of several models and the potential impact on the segmentation of medical images.
Description
SJR 2025
0.119
Q4
H-Index
40
Subject Area and Category:
Computer Science
Computer Networks and Communications
Computer Science Applications
Information Systems
Engineering
Electrical and Electronic Engineering
Media Technology
Citation
Elgabry, M., Hamdi, A., & Saiedur, M. (2026). FRunetm: Enhancing Biomedical Nucleus Segmentation with CBAM-SE Attention. Lecture Notes on Data Engineering and Communications Technologies, 206–215. https://doi.org/10.1007/978-3-032-23021-8_19
