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首页> 外文期刊>Journal of Nondestructive Evaluation >A Non-Invasive Technique for Online Defect Detection on Steel Strip Surfaces
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A Non-Invasive Technique for Online Defect Detection on Steel Strip Surfaces

机译:钢带表面在线缺陷检测的非侵入性技术

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摘要

During the production of steel strips, a large amount of surface defects can be generated, due to harsh environmental conditions. A high number of surface defects can lead to rejection by the customer, which represents sig-nificant economic losses to the production plant. Thus, it is very important to detect the presence and type of the defects generated during the production of each steel strip. Using this information, it is possible to determine whether a strip is suit-able for sale, and it may also be useful to determine the origin of defects and, if possible, prevent them from being generated in subsequent strips. To perform these tasks, non-invasive inspection techniques are usually used, carried out automat-ically by artificial vision systems. Although the inspection conducted by humans is more accurate, they become fatigued quickly, or may even be unable to carry out the inspection correctly when the forward speed of the strip is high. In this paper, a new detection technique is proposed, based on the division of an image into a set of overlapping areas. The opti-mum values for the configuration parameters of the detection technique are automatically determined using a genetic algo-rithm. After the detection phase, all the defects are classified using a neural network. A very satisfactory success rate has been achieved in both detection and classification phases.
机译:在生产钢带期间,由于苛刻的环境条件,可以产生大量的表面缺陷。大量的表面缺陷可能导致客户的拒绝,这代表了生产厂的SIG-GOIFANT经济损失。因此,检测在每个钢带生产过程中产生的缺陷的存在和类型非常重要。使用这些信息,可以确定条带是否适合销售,并且可以有用的是确定缺陷的起源,如果可能,则可以防止它们在后续条带中产生。为了执行这些任务,通常使用非侵入性检查技术,通过人工视觉系统进行自动执行。虽然人类进行的检查更准确,但它们变得迅速疲劳,或者当条带的前进速度高时,甚至可能无法正确执行检查。本文基于图像的分割成一组重叠区域,提出了一种新的检测技术。使用遗传算法自动确定检测技术的配置参数的Opti-Mum值。在检测阶段之后,所有缺陷都使用神经网络进行分类。在检测和分类阶段,已经实现了非常令人满意的成功率。

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