利用线扫描相机的特性对黑树脂涂层钢进行基于视觉的村纹检测

N. Kwon, Chang Hyeon Park, SungWok Yun, P. Park
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引用次数: 0

摘要

本文利用线扫描相机的特性,提出了一种基于视觉的黑树脂涂层钢纹理检测算法。该算法由预处理、阈值选择、二值化和后处理三个部分组成。预处理包括移动平均滤波、图像分割和黑色缺陷附加权值。其次,为了区分缺陷和背景,必须选择合适的阈值。最后利用阈值对原始图像进行二值化,并利用图像的开闭来消除小噪声。仿真结果表明了该算法的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision based mura detection by using property of line scan camera for black resin-coated steel - Line scan algorithm
This paper proposes vision based mura detection algorithm for the black resin-coated steel by using property of line scan camera. The proposed algorithm consists of three parts: preprocessing, selection of threshold value, and finally binarization and post processing. Preprocessing consists of moving average filtering, image partitioning and additional weight for black defects. Second, to distinguish between defect and background we must choose proper threshold value. Finally, we binarize original image by using threshold value and use the image opening and closing to eliminate small noise. The simulation results show detection accuracy of the proposed algorithm.
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