Defect detection in low-contrast glass substrates using anisotropic diffusion

Pattern Recognition, 2006. ICPR 2006. 18th International Conference(2006)

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Abstract
In this research, we propose an anisotropic diffusion scheme to detect defects in low-contrast surface images and, especially, aim at glass substrates used in TFT-LCDs (Thin Film Transistor-Liquid Crystal Displays). In a sensed glass substrate, the gray levels of defects and background are hardly distinguishable and result in a low-contrast image. Therefore, thresholding and edge detection techniques cannot be applied to detect subtle defects in the glass substrates surface. The proposed diffusion method in this paper can simultaneously carry out the smoothing and sharpening operations. It adaptively triggers the smoothing process in faultless areas to make the background uniform, and performs the sharpening process in defective areas to enhance anomalies. Experimental results from a number of glass substrate samples including backlight panels and LCD glass substrates have shown the efficacy of the proposed diffusion scheme in low-contrast surface inspection.
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Key words
defect detection,low-contrast surface image,proposed diffusion scheme,proposed diffusion method,low-contrast image,glass substrate sample,glass substrate,glass substrates surface,anisotropic diffusion scheme,lcd glass substrate,low-contrast glass,low-contrast surface inspection,computer vision,image recognition,machine vision,anisotropic diffusion,thin film transistors,thin film transistor,edge detection,glass,liquid crystal displays,liquid crystal display,diffusion
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