利用计算机视觉系统识别缺陷中的周期性模式

F. Bulnes, R. Usamentiaga, D. García, J. Molleda
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引用次数: 6

摘要

周期性缺陷的检测在许多长平板产品的制造中是至关重要的。例如,将厚钢块轧制(通过几对轧辊)以获得长钢带。当轧辊有缺陷时,它会在带材上引起周期性缺陷。如果不及时发现缺陷,大量生产的带材将被标记为周期性缺陷。如果轧辊缺陷没有被检测出来,所造成的经济损失是非常大的,因为带钢不能卖给客户,浪费了生产过程中消耗的所有资源。本文通过对基于计算机视觉的检测系统检测到的单个缺陷进行分析,提出了一种周期性缺陷的检测算法。由于这些缺陷形成一个周期性的模式,模式匹配技术可以用来检测它们。本文还包含用于表征算法性能的指标的分析和用于寻找其配置参数的最佳值的实验方法。最优配置必须最大化真检测,同时最小化假检测。错误的检测可以关闭生产线不必要地寻找不存在的轧辊缺陷。最后,将所得结果与该领域中应用最广泛的系统所提供的结果进行了比较。在大多数情况下,所提出的算法提供的结果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of periodical patterns in the defects identified by computer vision systems
The detection of periodical defects is of primary importance in the manufacturing of many long flat products. As an example, a thick steel block is rolled (passed through several pairs of rolls) to obtain a long steel strip. When a roll has a flaw, it provokes a periodical defect on the strip. If the defect is not detected promptly, a large number of manufactured strips will be marked with the periodical defect. The economic losses incurred when roll flaws are not detected are very high, because the strips can not be sold to the customers and all the resources consumed in their manufacturing are wasted. This paper presents an algorithm for detecting periodical defects by analyzing the single defects detected by an inspection system based on computer vision. Because these defects form a periodical pattern, pattern matching techniques can be used for their detection. The paper also contains an analysis of the metrics used to characterize the performance of the algorithm and the experimental methodology used to find the optimal values for its configuration parameters. The optimal configuration must maximize true detections, and also minimize false detections. False detections can shut the manufacturing line down unnecessarily to search for non-existent roll flaws. Finally, the results obtained are compared with those provided by the most widely used system in this field. In most cases, the results provided by the algorithm proposed were better.
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