-
Notifications
You must be signed in to change notification settings - Fork 0
/
CITATION
14 lines (14 loc) · 1.56 KB
/
CITATION
1
2
3
4
5
6
7
8
9
10
11
12
13
14
@article{fcn_microct-2022,
title = {A reusable neural network pipeline for unidirectional fiber segmentation},
volume = {9},
ISSN = {2052-4463},
DOI = {10.1038/s41597-022-01119-6},
abstractNote = {Fiber-reinforced ceramic-matrix composites are advanced, temperature resistant materials with applications in aerospace engineering. Their analysis involves the detection and separation of fibers, embedded in a fiber bed, from an imaged sample. Currently, this is mostly done using semi-supervised techniques. Here, we present an open, automated computational pipeline to detect fibers from a tomographically reconstructed X-ray volume. We apply our pipeline to a non-trivial dataset by Larson et al. To separate the fibers in these samples, we tested four different architectures of convolutional neural networks. When comparing our neural network approach to a semi-supervised one, we obtained Dice and Matthews coefficients reaching up to 98%, showing that these automated approaches can match human-supervised methods, in some cases separating fibers that human-curated algorithms could not find. The software written for this project is open source, released under a permissive license, and can be freely adapted and re-used in other domains.},
number = {11},
journal = {Scientific Data},
publisher = {Nature Publishing Group},
author = {Fioravante de Siqueira, Alexandre and Ushizima, Daniela M. and van der Walt, Stéfan J.},
year = {2022},
month = {Feb},
pages = {32}
}