SEGMENTATION OF PORES IN CARBON FIBER REINFORCED POLYMERS USING THE U-NET CONVOLUTIONAL NEURAL NETWORK

被引:0
作者
Yosifov, Miroslav [1 ,2 ]
Weinberger, Patrick [2 ]
Plank, Bernhard [2 ]
Froehler, Bernhard [2 ]
Hoeglinger, Markus [2 ]
Kastner, Johann [2 ]
Heinzl, Christoph [3 ]
机构
[1] Univ Antwerp, imec Visionlab, Dept Phys, Univ Splein 1, B-2610 Antwerp, Belgium
[2] Univ Appl Sci Upper Austria, Res Grp Xray Comp Tomog, Stelzhamerstr 23, A-4600 Wels, Austria
[3] Univ Passau, Fac Comp Sci & Math, Innstr 43, D-94032 Passau, Germany
来源
18TH YOUTH SYMPOSIUM ON EXPERIMENTAL SOLID MECHANICS, YSESM 2023 | 2023年 / 42卷
基金
欧盟地平线“2020”;
关键词
Deep learning; segmentation; U-Net; computed tomography; pores; carbon fiber reinforced polymers;
D O I
10.14311/APP.2023.42.0087
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
This study demonstrates the utilization of deep learning techniques for binary semantic segmentation of pores in carbon fiber reinforced polymers (CFRP) using X-ray computed tomography (XCT) datasets. The proposed workflow is designed to generate efficient segmentation models with reasonable execution time, applicable even for users using consumer-grade GPU systems. First, U-Net, a convolutional neural network, is modified to handle the segmentation of XCT datasets. In the second step, suitable hyperparameters are determined through a parameter analysis (hyperparameter tuning), and the parameter set with the best result was used for the final training. In the final step, we report on our efforts of implementing the testing stage in open_iA, which allows users to segment datasets with the fully trained model within reasonable time. The model performs well on datasets with both high and low resolution, and even works reasonably for barely visible pores with different shapes and size. In our experiments, we could show that U-Net is suitable for pore segmentation. Despite being trained on a limited number of datasets, it exhibits a satisfactory level of prediction accuracy.
引用
收藏
页码:87 / 93
页数:7
相关论文
共 26 条
[1]  
Abadi M., 2015, TENSORFLOW LARGE SCA, V1
[2]  
Ba JMY, 2015, Arxiv, DOI arXiv:1412.7755
[3]  
Belaid Lamia Jaafar, 2009, Image Analysis & Stereology, V28, P93, DOI 10.5566/ias.v28.p93-102
[4]  
Chollet F, 2015, Keras: Deep Learning Library for Theano and Tensorflow
[5]  
Cicek Ozgun, 2016, Medical Image Computing and Computer-Assisted Intervention - MICCAI 2016. 19th International Conference. Proceedings: LNCS 9901, P424, DOI 10.1007/978-3-319-46723-8_49
[6]  
Ciresan D, 2012, PROC CVPR IEEE, P3642, DOI 10.1109/CVPR.2012.6248110
[7]  
Frhler B., 2019, Journal of Open Source Software, V4, DOI [10.21105/joss.01185, DOI 10.21105/JOSS.01185]
[8]  
github, 2020, Autonomio Talos Computer software
[9]  
Hartigan J. A., 1979, Applied Statistics, V28, P100, DOI 10.2307/2346830
[10]   STAR: Visual Computing in Materials Science [J].
Heinzl, C. ;
Stappen, S. .
COMPUTER GRAPHICS FORUM, 2017, 36 (03) :647-666