Details

Title

Segmentation of bone structures with the use of deep learning techniques

Journal title

Bulletin of the Polish Academy of Sciences Technical Sciences

Yearbook

2021

Volume

69

Issue

3

Affiliation

Krawczyk, Zuzanna : Warsaw University of Technology, ul. Koszykowa 75, 00-662 Warsaw, Poland ; Starzyński, Jacek : Warsaw University of Technology, ul. Koszykowa 75, 00-662 Warsaw, Poland

Authors

Keywords

deep learning ; semantic segmentation ; U-net ; FCN ; ResNet ; computed tomography

Divisions of PAS

Nauki Techniczne

Coverage

e136751

Bibliography

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Date

10.03.2021

Type

Article

Identifier

DOI: 10.24425/bpasts.2021.136751

Source

Bulletin of the Polish Academy of Sciences: Technical Sciences; Early Access; e136751
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