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Bearing defect inspection based on machine vision

机译:基于机器视觉的轴承缺陷检查

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摘要

Appearance defects inspection plays a vital role in bearing quality control. Human inspection is a traditional way to remove defective bearings, which is instable and time consuming. In this paper, we develop a machine vision system for bearing defect inspection, which can inspect various types of defects on bearing covers, such as deformations, rusts, scratches and so on. The proposed system designs a novel image acquisition system to enhance the defects appearances and get controlled image acquisition environment. A series of image processing methods are proposed or utilized to inspect the defects. Especially, for the deformation defects on seal, we find a common rule on the distribution of projection, and design a simple but effective inspection algorithm based on the rule. The proposed system is evaluated and compared with skilled human by the recall, precision and F-measure. Experimental results show that the proposed vision system has high accuracy and efficiency.
机译:外观缺陷检查在轴承质量控制中起着至关重要的作用。人工检查是去除缺陷轴承的传统方法,这种方法不稳定且耗时。在本文中,我们开发了一种用于轴承缺陷检查的机器视觉系统,该系统可以检查轴承盖上的各种类型的缺陷,例如变形,生锈,划痕等。提出的系统设计了一种新颖的图像采集系统,以增强缺陷的外观并获得可控的图像采集环境。提出或利用一系列图像处理方法来检查缺陷。特别是对于密封件的变形缺陷,我们找到了一个关于凸出分布的通用规则,并基于该规则设计了一种简单而有效的检查算法。对所提出的系统进行评估,并通过召回率,精度和F度量与熟练人员进行比较。实验结果表明,所提出的视觉系统具有较高的准确性和效率。

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