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Automated segmentation of computed tomography images of fiber-reinforced composites by deep learning

机译:深度学习的纤维增强复合材料计算断层扫描图像的自动分割

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摘要

A deep learning procedure has been examined for automatic segmentation of 3D tomography images from fiber-reinforced ceramic composites consisting of fibers and matrix of the same material (SiC), and thus identical image intensities. The analysis uses a neural network to distinguish phases from shape and edge information rather than intensity differences. It was used successfully to segment phases in a unidirectional composite that also had a coating with similar image intensity. It was also used to segment matrix cracks generated during in situ tensile loading of the composite and thereby demonstrate the influence of nonuniform fiber distribution on the nature of matrix cracking. By avoiding the need for manual segmentation of thousands of image slices, the procedure overcomes a major impediment to the extraction of quantitative information from such images. The analysis was performed using recently developed software that provides a general framework for executing both training and inference. Graphic abstract
机译:已经检查了深度学习程序,用于从由纤维和相同材料(SiC)的纤维和基质组成的纤维增强陶瓷复合材料的3D层析成像图像的自动分割,从而进行相同的图像强度。分析使用神经网络区分从形状和边缘信息而不是强度差的阶段。它成功地用于单向复合材料中的分段相,该阶段也具有具有相似图像强度的涂层。它还用于在原位拉伸载荷期间产生的基质裂缝,从而证明非均匀纤维分布对基质裂化性质的影响。通过避免对数千种图像切片进行手动分割的需求,该过程克服了从这些图像中提取定量信息的主要障碍。使用最近开发的软件进行了分析,该软件为执行培训和推断提供一般框架。图形摘要

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