Composites Science and Technology | 2021

Segmentation of computed tomography images and high-precision reconstruction of rubber composite structure based on deep learning

 
 
 
 
 
 
 

Abstract


Abstract The internal fiber structure of composites determined via X-ray micro-computed tomography (μ-CT) is a key factor affecting their properties. However, the low resolution and blurred fiber-matrix interfaces of the μ-CT images obtained for large composite structures as well as the different grayscale distributions caused by the uneven thicknesses of their complex shapes considerably reduce the accuracy of the reconstructed model. Meanwhile, the relatively long scanning time of μ-CT limits the usability of this technique for in-situ loading tests. Therefore, in this study, an image segmentation method based on U-net convolution neural network is applied to the segmentation of μ-CT image of fabric rubber composite to realize the high-precision reconstruction of its internal fabric structure. This approach effectively minimizes the image noise caused by fast scanning and reduces the scanning time by 80%. The accuracy of the reconstructed model and the high efficiency of the developed method are verified through finite element analysis. Hence, the described μ-CT image processing method enables high-precision reconstruction of fiber-reinforced composites and provides a significant reduction in the μ-CT scanning time.

Volume 213
Pages 108875
DOI 10.1016/J.COMPSCITECH.2021.108875
Language English
Journal Composites Science and Technology

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