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Geometrical and deep learning approaches for instance segmentation of CFRP fiber bundles in textile composites

机译:纺织复合材料中CFRP光纤束的实例分割的几何和深度学习方法

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摘要

Segmenting micro-Computed Tomography (mu CT) images of textile composites is a necessary step before modeling the material at the mesoscale. However, the accurate segmentation of fiber bundles (or tows) remains a challenge in carbon fiber reinforced textile composites. Segmentation approaches based on local fiber orientation perform well in recognizing individual tows only under ideal conditions, namely when the local fiber orientation bordering two tows' interface is different, or when the touching area is small relative to the thickness of a tow. Unfortunately, in many textile composite laminates used in the industry, these ideal conditions are not found. Such materials often consist of multiple plies, where each fiber is aligned in one of the two orthogonal directions, and where the touching area between similar-orientation tows is often much larger than the tow thickness. Therefore, we propose two new methodologies for splitting tow instances. One is based on the geometrical analysis of the material structure using conventional image analysis; the other is based on the deep learning prediction of ideal inputs for segmentation based on the watershed transform. The deep learning-based method is trained using randomly generated synthetic images of a woven composite material, which avoids an expensive human annotation step.
机译:纺织复合材料的分割微计算断层扫描(MU CT)图像是在MESSCLE在MESSCLE的材料建模之前的必要步骤。然而,纤维束(或丝束)的精确分割仍然是碳纤维增强纺织材料复合材料的挑战。基于局部纤维取向的分割方法在识别仅在理想条件下识别单个次数,即当局部纤维取向接近两个次次涉及的界面时不同,或者当触摸区域相对于牵引的厚度时。不幸的是,在业界使用的许多纺织复合层压板中,找不到这些理想的条件。这种材料通常由多个层组成,其中每个纤维在两个正交方向之一中对齐,并且在相似取向丝束之间的触摸区域通常大于牵引厚度。因此,我们提出了两种用于分裂牵引实例的新方法。一种基于使用常规图像分析的材料结构的几何分析;另一个基于基于流域变换的分割的理想输入的深度学习预测。基于深度学习的方法使用编织复合材料的随机产生的合成图像训练,这避免了昂贵的人类注释步骤。

著录项

  • 来源
    《Composite Structures》 |2021年第12期|114626.1-114626.11|共11页
  • 作者单位

    Univ Ghent Fac Engn & Architecture Dept Mat Text & Chem Engn Technol Pk Zwijnaarde 46 B-9052 Zwijnaarde Belgium;

    Univ Ghent Fac Biosci Engn Dept Environm Coupure Links 653 B-9000 Ghent Belgium|Univ Ghent Ctr Xray Tomog UGCT Proeftuinstr 86 B-9000 Ghent Belgium;

    Ghent Univ Imec Fac Engn & Architecture Dept Telecommun & Informat Proc Image Proc & Interpretat Grp Sint Pietersnieuwstr 41 B-9000 Ghent Belgium|Univ Ghent Fac Sci Dept Phys & Astron Proeftuinstr 86 B-9000 Ghent Belgium|Univ Ghent Ctr Xray Tomog UGCT Proeftuinstr 86 B-9000 Ghent Belgium;

    Univ Ghent Fac Sci Dept Phys & Astron Proeftuinstr 86 B-9000 Ghent Belgium|Univ Ghent Ctr Xray Tomog UGCT Proeftuinstr 86 B-9000 Ghent Belgium;

    Univ Ghent Fac Engn & Architecture Dept Mat Text & Chem Engn Technol Pk Zwijnaarde 46 B-9052 Zwijnaarde Belgium;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Fabrics; textiles; Carbon-fiber reinforced polymer; Microstructure modeling; Micro-CT based modeling; Instance segmentation; Deep learning;

    机译:织物;纺织品;碳纤维增强聚合物;微观结构建模;基于微型CT的建模;实例分割;深入学习;

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