A COMPARATIVE STUDY OF DEEP ARCHITECTURES FOR VOXEL SEGMENTATION IN VOLUME IMAGES

Research output: Contribution to book/Conference proceedings/Anthology/ReportConference contributionContributed

Contributors

Abstract

This study investigates the performance of eight different deep learning architectures for voxel segmentation in volume images. The motivation is to segment carbon in carbon reinforced concrete (CRC) in micro-tomography (μ-CT) data. Although there are many 3D convolutional neural networks (CNNs) available, it is not yet clear which one works best for these specific tasks. In this study, the authors compare the following networks: DenseVoxNet, HighResNet, Med3D, Residual 3D U-Net, 3D SkipDenseSeg, 3D U-Net, V-Net, and LV-Net. To provide a more general recommendation for selecting a neural network, three medical datasets were added in addition to the three CRC datasets to facilitate the selection of an appropriate network based on the dataset characteristics. The experiments emphasize the importance of the initial random state, used for example to initialize the network weights. On average, the 3D U-Net is the best generalizing CNN, followed by the Residual 3D U-Net and the 3D SkipDenseSeg. While the 3D U-Net is a good architecture to start with, the experiments show that it does not perform best on all domains. To achieve optimal results, the authors propose recommendations for selecting a 3D neural network based on the dataset attributes.

Details

Original languageEnglish
Title of host publicationISPRS Geospatial Week 2023
EditorsN. El-Sheimy, A. A. Abdelbary, N. El-Bendary, Y. Mohasseb
Pages1667-1676
Number of pages10
VolumeXLVIII-1/W2-2023
EditionXLVIII-1/W2-2023
Publication statusPublished - 14 Dec 2023
Peer-reviewedNo

Publication series

Series The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
ISSN1682-1750

Workshop

TitleISPRS Geospatial Week 2023
Abbreviated titleGSW’2023
Duration2 - 7 September 2023
Website
Degree of recognitionInternational event
LocationSemiramis Cairo Hotel
CityCairo
CountryEgypt

External IDs

Mendeley 33f5e4b2-d65b-3537-b441-28beba1796ab
Scopus 85175057151

Keywords

Keywords

  • 3D CNN, 3D segmentation, CNN, Comparison, Deep Learning, Tomography, magnetic resonance imaging (MRI)