Residual oxides detection and measurement in stainless steel production lines

C. Spínola, J. M. Bonelo, J. Canero, S. Espejo, S. Morilla, R.M. Luque, M. Martín-Vázquez, F. Garcia-Vacas, C. Gálvez-Fernández, J. Vizoso, J. Muñoz-Pérez
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引用次数: 1

Abstract

In this paper, we present a system to detect and measure the amount of residual oxide stains remaining in the surface of stainless steel coils after the pickling process in a production line. The system is able to acquire clear images of the stainless steel surface with the appropriate illumination and magnification, while it is being produced. These images are processed and analyzed in real time in order to detect and measure the oxide stains which typically are between 50 and 200 microns in size. We present here an outline of the acquisition system and the image processing algorithm which has been designed to detect this sort of defect.
不锈钢生产线中残余氧化物的检测与测量
在本文中,我们提出了一种检测和测量生产线上不锈钢卷板在酸洗后表面残留氧化污渍数量的系统。该系统能够在生产过程中通过适当的照明和放大倍率获得不锈钢表面的清晰图像。这些图像被实时处理和分析,以检测和测量通常在50到200微米之间的氧化斑。在此,我们简要介绍了用于检测这类缺陷的采集系统和图像处理算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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