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Mixed-Sized Biomedical Image Segmentation Based on U-Net Architectures
by
Benedetti, Priscilla
, Femminella, Mauro
, Reali, Gianluca
in
Algorithms
/ biomedical image analysis
/ convolutional neural networks
/ Deep learning
/ Image Segmentation
/ Neural networks
/ Semantics
/ Tumors
2023
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Mixed-Sized Biomedical Image Segmentation Based on U-Net Architectures
by
Benedetti, Priscilla
, Femminella, Mauro
, Reali, Gianluca
in
Algorithms
/ biomedical image analysis
/ convolutional neural networks
/ Deep learning
/ Image Segmentation
/ Neural networks
/ Semantics
/ Tumors
2023
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Mixed-Sized Biomedical Image Segmentation Based on U-Net Architectures
Journal Article
Mixed-Sized Biomedical Image Segmentation Based on U-Net Architectures
2023
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Overview
Convolutional neural networks (CNNs) are becoming increasingly popular in medical Image Segmentation. Among them, U-Net is a widely used model that can lead to cutting-edge results for 2D biomedical Image Segmentation. However, U-Net performance can be influenced by many factors, such as the size of the training dataset, the performance metrics used, the quality of the images and, in particular, the shape and size of the organ to be segmented. This could entail a loss of robustness of the U-Net-based models. In this paper, the performance of the considered networks is determined by using the publicly available images from the 3D-IRCADb-01 dataset. Different organs with different features are considered. Experimental results show that the U-Net-based segmentation performance decreases when organs with sparse binary masks are considered. The solution proposed in this paper, based on automated zooming of the parts of interest, allows improving the performance of the segmentation model by up to 20% in terms of Dice coefficient metric, when very sparse segmentation images are used, without affecting the cost of the learning process.
Publisher
MDPI AG
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