Investigation on the elimination of striations in NDE of glass fiber composites

Jie Wang, Teng Zheng, Dongxue Han, Liang Peng, Tianying Chang, Honghai Cui, Jin Zhang
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Abstract

Glass fiber composites are widely used due to their unique performance advantages. However, defects in glass fiber composites can significantly affect their performance, making nondestructive evaluation necessary. During the X-ray spectral imaging of glass fiber composites, the 0/90° cross-stacking mode of glass fiber cloth results in irregular horizontal and vertical stripe noise, which seriously reduces the clarity of defect detection. Therefore, an appropriate algorithm is required to remove the noise. In this study, by analyzing the Fourier spectrum of X-ray spectral images of glass fiber composites, it was found that the stripe information is concealed in the vertical and horizontal bright lines in the middle of the Fourier spectrum image. A novel cross-sector filter was designed, and a stripe noise removal algorithm based on the cross-sector filter was proposed. The degree of the filter’s central angle can be adjusted according to the distribution of the stripe noise in the frequency domain, which removes the noise without losing much useful image information.
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关于在玻璃纤维复合材料无损检测中消除条纹的研究
玻璃纤维复合材料因其独特的性能优势而被广泛使用。然而,玻璃纤维复合材料中的缺陷会严重影响其性能,因此有必要对其进行无损评估。在对玻璃纤维复合材料进行 X 射线光谱成像时,玻璃纤维布的 0/90° 交叉堆叠模式会产生不规则的水平和垂直条纹噪声,严重降低缺陷检测的清晰度。因此,需要一种合适的算法来去除噪声。本研究通过分析玻璃纤维复合材料 X 射线光谱图像的傅立叶光谱,发现条纹信息隐藏在傅立叶光谱图像中间的垂直和水平亮线中。研究人员设计了一种新型交叉扇形滤波器,并提出了一种基于交叉扇形滤波器的条纹噪声去除算法。滤波器中心角的度数可根据条纹噪声在频域中的分布进行调整,从而在去除噪声的同时不会丢失太多有用的图像信息。
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