基于U-Net卷积神经网络的碳纤维增强聚合物孔隙分割

Miroslav Yosifov, Patrick Weinberger, Bernhard Plank, Bernhard Fröhler, Markus Hoeglinger, Johann Kastner, Christoph Heinzl
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引用次数: 0

摘要

本研究展示了利用x射线计算机断层扫描(XCT)数据集对碳纤维增强聚合物(CFRP)孔隙进行二元语义分割的深度学习技术。所提出的工作流旨在以合理的执行时间生成高效的分割模型,甚至适用于使用消费级GPU系统的用户。首先,改进卷积神经网络U-Net来处理XCT数据集的分割。第二步,通过参数分析(超参数调优)确定合适的超参数,并将结果最佳的参数集用于最后的训练。在最后一步,我们报告了我们在open_iA中实现测试阶段的努力,它允许用户在合理的时间内使用完全训练的模型分割数据集。该模型在高分辨率和低分辨率的数据集上都表现良好,甚至对于不同形状和大小的几乎不可见的孔隙也能合理地工作。在我们的实验中,我们可以证明U-Net适用于孔隙分割。尽管在有限数量的数据集上进行训练,但它显示出令人满意的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of pores in carbon fiber reinforced polymers using the U-Net convolutional neural network
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.
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