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Directional textures auto-inspection using principal component analysis

机译:使用主成分分析的方向纹理自动检查

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This paper describes a global image restoration scheme using a principal component analysis that can be used to inspect defects in directional textured surfaces automatically. Decomposing the gray level of image pixels into an ensemble of row vectors, the input spatial domain image is transformed into principal component space so that the directional textures are well approximated by first k major components and their corresponding weight vectors, named truncated component solution (TCS). Then the local defects will be revealed by applying image subtraction between the original image and the TCS. This procedure blurs all directional textures and preserves only the local defects that were initially embedded in the input image. These defects, if any, are finally extracted by thresholding. Experiments on a variety of product surfaces with directional textures such as straight, slanted, orthogonal, slanted orthogonal, and oblique linear primitives were conducted to demonstrate the effectiveness and robustness of the proposed method. Furthermore, some preliminary experiments were also conducted to demonstrate the proposed scheme was insensitive to horizontal and vertical shifting, changes in illumination, and image rotation.
机译:本文介绍了一种使用主成分分析的全局图像恢复方案,该方案可用于自动检查定向纹理表面中的缺陷。将图像像素的灰度分解为行向量的集合,将输入的空间域图像转换为主成分空间,以使方向纹理可以被前k个主要成分及其对应的权重向量很好地近似,称为截短成分解(TCS) )。然后,通过在原始图像和TCS之间进行图像减法来揭示局部缺陷。此过程会模糊所有方向纹理,并仅保留最初嵌入在输入图像中的局部缺陷。这些缺陷(如果有)最终通过阈值提取。在具有定向纹理的各种产品表面上进行了实验,例如笔直,倾斜,正交,倾斜正交和倾斜线性图元,以证明该方法的有效性和鲁棒性。此外,还进行了一些初步实验以证明所提出的方案对水平和垂直移位,照明变化和图像旋转不敏感。

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