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Defect Detection Improvement of Digitised Radiographs by Principal Component Analysis with Local Pixel Grouping

机译:基于局部像素分组的主成分分析对数字化射线照相缺陷检测的改进

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摘要

Radiographic inspection is one of the most important techniques among non-destructive testing methods. Radiographic images are often very noisy and the image quality and the interpreter's experience can affect the inspection of radiographs and their evaluation. In this research, principal component analysis (PCA) with local pixel grouping (LPG) algorithms was used for image enhancement for radiograph image interpretation. In this method, a pixel and its neighbors are considered as a vector variable for preservation of radiography image local structure. This method is a statistical method that uses an orthogonal property to transform and convert a set of observations of possibly correlated variables into a set of values of uncorrelated variables. Here, the PCA-LPG denoising algorithm has been applied to radiographic images with different defects to obtain denoised images. The results show that the contrast of denoised radiography images is better than the original image and the defects are much clearer. Also, the evaluation of the image quality enhancement show the contrast to noise level increases almost two times by the proposed PCA-LPG method.
机译:射线照相检查是无损检测方法中最重要的技术之一。射线照相图像通常非常嘈杂,图像质量和口译人员的经验会影响射线照相的检查及其评估。在这项研究中,主成分分析(PCA)与局部像素分组(LPG)算法被用于图像增强,以进行射线照片图像解释。在这种方法中,像素及其相邻像素被视为用于保存放射线图像局部结构的矢量变量。此方法是一种统计方法,该方法使用正交属性将一组可能相关的变量的观测值转换并转换为一组不相关的变量值。在这里,PCA-LPG去噪算法已经应用于具有不同缺陷的放射线图像,以获得去噪图像。结果表明,去噪后的射线照相图像的对比度优于原始图像,缺陷明显得多。此外,对图像质量增强的评估表明,通过提出的PCA-LPG方法,与噪声水平的对比度几乎提高了两倍。

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