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Optimizing Cardiac MRI Segmentation: An Ensemble Approach with U-Net Variants

Bárdos-Deák, Botond
Bodai, Adrián Tibor
Al-Radhi, Mohammed Salah
2025-02-20T13:52:00Z
2025-02-20T13:52:00Z
2025

Abstract

Segmentation of cardiac magnetic resonance images is a critical task in medical imaging, particularly to delineate the left and right ventricles and the myocardium. This study aims to improve segmentation performance using an ensemble approach with variants of the U-Net architecture, a widely adopted deep learning model for image segmentation. Multiple segmentation models were trained and optimized, and their outputs were combined using threshold-based binary conversion. Two ensemble strategies were evaluated: (1) Averaging, where the mean value of the binary masks at each pixel location was calculated to smooth discrepancies among model predictions, and (2) Voting, where majority voting determined the final pixel classification. The proposed ensemble approach demonstrates robustness to individual model errors and improves segmentation consistency.

http://hdl.handle.net/10890/58918
en
Optimizing Cardiac MRI Segmentation: An Ensemble Approach with U-Net Variants
Könyvfejezet
Open access
Szerző
2025-02-03
Budapest
3rd Workshop on Intelligent Infocommunication Networks, Systems and Services
2025-02-20
978-963-421-982-8
Budapest University of Technology and Economics
Budapest
3rd Workshop on Intelligent Infocommunication Networks, Systems and Services
Post print
Faculty of Electrical Engineering and Informatics
69
10.3311/WINS2025-012
73
Segmentation
Machine-learning
U-net
Emsemble
Konferenciacikk
Budapest University of Technology and Economics

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