首页> 外文期刊>Research in nondestructive evaluation: a journal of the American Society for Nondestructive Testing >Defects Detection of Digital Radiographic Images of Aircraft Structure Materials via Geometric Locally Adaptive Sharpening
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Defects Detection of Digital Radiographic Images of Aircraft Structure Materials via Geometric Locally Adaptive Sharpening

机译:通过几何局部自适应锐化缺损飞机结构材料数字放射线图像的检测

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摘要

The life of an aircraft depends on the early detection and removal of corrosion in its structure. The importance of detecting corrosion cannot be understated, because corrosion can cause other kinds of damage, such as cracks. Radiography is an important method for the detection of hidden defects in aircraft structure. To maximize information extraction from the radiographic images, the noise of the system should be minimized, or the contrast of the defective region should be maximized by different methods. The development of effective image processing methods, within both the spatial and frequency domains, is important to the research of industrial radiographic testing. In this study, the geometric locally adaptive sharpening method was used to improve hidden structure visualization of details and defects from aircraft part radiographs. The method relies on sharpening by using the steering kernel regression method. Here, the enhancing contrast and sharpening algorithm are effectively mixed together. The proposed algorithm was successfully applied to radiographic images of aircraft parts. An improvement of the structure detail visualization and defect region detection was achieved by sharpening the edges and preserving fine detail imaging information. Experts' reviews showed that defect regions from the geometric locally adaptive sharpening reconstructed images were better visualized than the original images. Also, the resulting evaluation of the output images shows that the edges are sharpened by the proposed method and that the background of the image decreases to zero.
机译:飞机的寿命取决于其结构的早期检测和去除腐蚀。检测腐蚀的重要性不能低估,因为腐蚀可能导致其他类型的损坏,例如裂缝。造影是检测飞机结构隐藏缺陷的重要方法。为了最大化来自放射线图像的信息提取,应最小化系统的噪声,或者缺陷区域的对比应通过不同的方法最大化。在空间和频率域中的有效图像处理方法的开发对于工业放射线测试的研究非常重要。在本研究中,使用几何局部自适应锐化方法来改善飞机部射线照片的细节和缺陷的隐藏结构可视化。该方法依赖于使用转向内核回归方法锐化。这里,增强的对比度和锐化算法有效地混合在一起。该算法成功应用于飞机零件的放射线图像。通过锐化边缘和保留细节成像信息,实现了结构细节可视化和缺陷区域检测的改进。专家评论表明,来自几何本地自适应锐化重建图像的缺陷区域比原始图像更好地可视化。此外,输出图像的结果评估表明边缘通过所提出的方法锐化,并且图像的背景减小到零。

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