Szczegóły publikacji

Opis bibliograficzny

Benchmarking of deep architectures for segmentation of medical images / Daniel GUT, Zbisław TABOR, Mateusz Szymkowski, Miłosz Rozynek, Iwona Kucybała, Wadim Wojciechowski // IEEE Transactions on Medical Imaging ; ISSN 0278-0062. — 2022 — vol. 41 iss. 11, s. 3231-3241. — Bibliogr. s. 3241, Abstr. — Publikacja dostępna online od: 2022-06-06

Autorzy (6)

Słowa kluczowe

medical image analysisdeep learningsegmentationbenchmark

Dane bibliometryczne

ID BaDAP142101
Data dodania do BaDAP2022-09-13
Tekst źródłowyURL
DOI10.1109/TMI.2022.3180435
Rok publikacji2022
Typ publikacjiartykuł w czasopiśmie
Otwarty dostęptak
Creative Commons
Czasopismo/seriaIEEE Transactions on Medical Imaging

Abstract

In recent years, there were many suggestions regarding modifications of the well-known U-Net architecture in order to improve its performance. The central motivation of this work is to provide a fair comparison of U-Net and its five extensions using identical conditions to disentangle the influence of model architecture, model training, and parameter settings on the performance of a trained model. For this purpose each of these six segmentation architectures is trained on the same nine data sets. The data sets are selected to cover various imaging modalities (X-rays, computed tomography, magnetic resonance imaging), single- and multi-class segmentation problems, and single- and multi-modal inputs. During the training, it is ensured that the data preprocessing, data set split into training, validation, and testing subsets, optimizer, learning rate change strategy, architecture depth, loss function, supervision and inference are exactly the same for all the architectures compared. Performance is evaluated in terms of Dice coefficient, surface Dice coefficient, average surface distance, Hausdorff distance, training, and prediction time. The main contribution of this experimental study is demonstrating that the architecture variants do not improve the quality of inference related to the basic U-Net architecture while resource demand rises.

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