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Independent component analysis based filter design for defect detection in low-contrast textured images

机译:基于独立成分分析的滤波器设计用于低对比度纹理图像中的缺陷检测

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In this paper, we propose a convolution filtering scheme for detecting defects in low-contrast textured surface images and, especially, focus on the application for glass substrates in liquid crystal display (LCD) manufacturing. A defect embedded in a low-contrast surface image shows no distinct intensity from its surrounding region, and even worse, the sensed image may present uneven brightness on the surface. All these make the defect detection in low-contrast surface images extremely difficult. In this study, a constrained ICA (independent component analysis) model is proposed to design an optimal filter with the objective that the convolution filter will generate the most representative source intensity of the background surface without noise. The prior constraint incorporated in the ICA model confines the source values of all training image patches of a defect-free image within a small interval of control limits. In the inspection process, the same control parameter used in the constraint is also applied to set up the thresholds that make impulse responses of all pixels in faultless regions within the control limits, and those in defective regions outside the control limits. A stochastic evolutionary computation algorithm, particle swarm optimization (PSO), is applied to solve for the constrained ICA model. Experimental results have shown that the proposed method can effectively detect defects in textured LCD glass substrate images
机译:在本文中,我们提出了一种用于检测低对比度纹理表面图像中的缺陷的卷积滤波方案,尤其是针对液晶显示器(LCD)制造中玻璃基板的应用。嵌入在低对比度表面图像中的缺陷与其周围区域没有显示出明显的强度,甚至更糟的是,感测到的图像可能在表面上呈现不均匀的亮度。所有这些使得在低对比度表面图像中的缺陷检测极其困难。在这项研究中,提出了一种受约束的ICA(独立分量分析)模型来设计最佳滤波器,其目的是卷积滤波器将生成背景表面最有代表性的光源强度,而不会产生噪声。包含在ICA模型中的先验约束将无缺陷图像的所有训练图像块的源值限制在较小的控制限制间隔内。在检查过程中,还将约束中使用的相同控制参数应用于设置阈值,以使在控制范围内的无缺陷区域中的所有像素以及在控制范围之外的缺陷区域中的所有像素产生脉冲响应。应用随机进化算法粒子群优化算法(PSO)求解约束ICA模型。实验结果表明,该方法可以有效地检测出带纹理的LCD玻璃基板图像中的缺陷。

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