Article, 2024

Deep-learning versus greyscale segmentation of voids in X-ray computed tomography images of filament-wound composites

Composites Part A Applied Science and Manufacturing, ISSN 1359-835X, Volume 177, 10.1016/j.compositesa.2023.107937

Contributors

Upadhyay S. 0000-0002-0635-5297 (Corresponding author) [1] George Smith A. [2] Vandepitte D. [1] Lomov S.V. 0000-0002-8194-4913 [1] Swolfs Y. 0000-0001-7278-3022 [1] Mehdikhani M. [1]

Affiliations

  1. [1] KU Leuven
  2. [NORA names: Belgium; Europe, EU; OECD];
  3. [2] University of Copenhagen
  4. [NORA names: KU University of Copenhagen; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

Filament-wound composites (FWC) are prone to high void contents, with large and complex-shape voids. It is critical to characterise these voids accurately to understand their effect on part strength. The characterization depends on the accuracy of the analysis technique, for example X-ray computed tomography and the subsequent void segmentation. This paper compares conventional greyscale thresholding to deep-learning (DL) based segmentation. The processing steps for both techniques are discussed. The greyscale thresholding contains segmentation errors due to the simple one-parameter algorithm and the pre-processing operations required for segmentation. This reduces the accuracy of void characterisation. The DL-based segmentation is found to be more accurate for characterisation of void size, shape, and location. The processing-time and system requirements are discussed, helping to determine the suitable segmentation technique based on desired results.

Keywords

A. Carbon fibre, B. Porosity, D. CT analysis, E. Filament winding

Funders

  • KU Leuven
  • Agentschap Innoveren en Ondernemen
  • Novo Nordisk Fonden
  • Flanders Agency for Innovation & Entrepreneurship
  • Fonds Wetenschappelijk Onderzoek

Data Provider: Elsevier