基于钢管圆柱图像复原的预处理方法研究

Cai Xiang, Kang Yihua, Ma Hongbao, Hong Ning, Qiu Gongzhe
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引用次数: 0

摘要

机器视觉在工业检测中的应用越来越广泛。为了提高钢管的工业化生产,采用机器视觉代替人工对钢管表面缺陷进行检测。由于钢管表面为圆柱形,在采集钢管表面图像时,图像两侧边缘部分存在不同程度的变形和信息损失。针对钢管图像边缘的变形和畸变问题,建立了数学模型并进行了计算。根据圆柱投影的原理,推导出圆柱正投影的表达式,并提出了圆柱背投影的恢复算法,实现了钢管图像的圆柱扩展,解决了由于图像两侧边缘变形造成的缺陷形状畸变和缺陷检测困难的问题。结果表明,该方法是有效的,为钢管检测奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on preprocessing method based on cylindrical image restoration of steel pipe
Machine vision is more and more widely used in industrial inspection. In order to improve the industrial production of steel pipes, machine vision is used to replace manual inspection of steel pipe surface defects. Because the surface of the steel pipe is cylindrical, there are different degrees of deformation and information loss in the edge parts on both sides of the image when capturing the steel pipe surface image. Aiming at the deformation and distortion problems of the edge of the steel pipe image, a mathematical model is established and calculated. According to the principle of cylindrical projection, this paper deduces the expression of cylindrical orthographic projection, and puts forward a restoration algorithm of cylindrical back projection, which realizes the cylindrical expansion of steel pipe image, and solves the problems of defect shape distortion caused by the deformation of the edges on both sides of the image and the difficulty of defect detection. The results show that this method is effective and lays a foundation for steel pipe detection.
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