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Key Technologies of Steel Plate Surface Defect Detection System Based on Artificial Intelligence Machine Vision

机译:基于人工智能机视觉的钢板表面缺陷检测系统关键技术

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With the rapid development of visual inspection technology, computer technology, and image processing technology, machine vision technology has become more and more mature, and the role of quality inspection and control in the steel industry is becoming more and more obvious and important. Defects on the surface of the strip are a key factor affecting the quality inspection process. Its inspection plays an extremely important role in improving the final quality. For a long time, traditional manual inspection methods cannot meet actual production needs, so in-depth research on steel surface defect inspection systems has become the consensus of today’s steel companies. The accuracy and low performance of traditional detection methods can no longer meet the needs of people and society. The surface defect detection method based on machine vision has the characteristics of high accuracy, fast processing speed, and intelligent processing, which is the main trend of surface defect detection. We select a steel plate; take the invariant moment features of the cracks, holes, scratches, oil stains, and other images on it; extract the data results; and analyze them. Then, we read the texture features of these defect images again, extract the data results, and analyze them. The experimental results prove that after the mean value filter and Gaussian filter process the image, the mean variance value MSE is relatively large ( ), and as the concentration of salt and pepper noise increases, the rate of increase of MSE increases obviously, and as the peak signal-to-noise ratio and the mean variance value MSE increase continuously ( ), the image distortion is more serious. The method designed in this paper is extremely effective. Improving the surface quality of steel is of great significance to improving market competitiveness.
机译:随着目视检测技术,计算机技术和图像加工技术的快速发展,机器视觉技术已经越来越成熟,而质量检验和控制在钢铁行业的作用变得越来越明显,又重要。条带表面上的缺陷是影响质量检测过程的关键因素。它的检查在提高最终质量方面发挥着极大的作用。长期以来,传统的手动检测方法无法满足实际生产需求,因此深入研究钢结构缺陷检测系统已成为当今钢铁公司的共识。传统检测方法的准确性和低性能不再能满足人们和社会的需求。基于机器视觉的表面缺陷检测方法具有高精度,快速加工速度和智能加工的特点,是表面缺陷检测的主要趋势。我们选择钢板;占据裂缝,孔,划痕,油污渍和其它图像的不变时刻特征;提取数据结果;并分析它们。然后,我们再次读取这些缺陷图像的纹理特征,提取数据结果,并分析它们。实验结果证明,在平均值滤波器和高斯滤波器处理图像之后,平均方差值MSE相对较大(),随着盐和辣椒噪声的浓度增加,MSE的增加率显然增加,并且如峰值信噪比和平均方差值MSE持续增加(),图像失真更严重。本文设计的方法非常有效。提高钢材的表面质量对提高市场竞争力具有重要意义。

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