Přístupnostní navigace
E-přihláška
Vyhledávání Vyhledat Zavřít
Detail publikace
SLUNSKÝ, T.
Originální název
MULTICLASS SEGMENTATION OF 3D MEDICAL DATA WITH DEEP LEARNING
Typ
konferenční sborník (ne článek)
Jazyk
angličtina
Originální abstrakt
This paper deals with multiclass image segmentation using convolutional neural networks. The theoretical part of paper focuses on image segmentation. There are basics principles of neural networks and image segmentation with more types of approaches. In practical part the Unet architecture is chosen and is described for image segmentation more. U-net was applied for medicine dataset which consist from 3D MRI of human brain. There is processing procedure which is more described for image processing of three-dimensional data. There are also methods for data preprocessing which were applied for image multiclass segmentation. Final part of paper evaluates results which were achieved with chosen method.
Klíčová slova
deep learning, convolutional neural network, multi-class image segmentation
Autoři
Vydáno
23. 4. 2020
ISBN
978-80-214-5942-7
Číslo edice
1
Strany počet
5
URL
https://www.fekt.vut.cz/conf/EEICT/archiv/sborniky/EEICT_2020_sbornik_1.pdf
BibTex
@proceedings{BUT164328, editor="Tomáš {Slunský}", title="MULTICLASS SEGMENTATION OF 3D MEDICAL DATA WITH DEEP LEARNING", year="2020", number="1", pages="5", isbn="978-80-214-5942-7", url="https://www.fekt.vut.cz/conf/EEICT/archiv/sborniky/EEICT_2020_sbornik_1.pdf" }