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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Automatic detection of defective crankshafts by image analysis and supervised classification
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Automatic detection of defective crankshafts by image analysis and supervised classification

机译:通过图像分析和监督分类自动检测缺陷曲轴

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摘要

A crankshaft is a mechanical component of an engine that performs a conversion of an alternative movement of a piston in a rotational motion of a shaft. It is a critical part and one of the most expensive of an engine. Defects in crankshafts may imply serious failures and, consequently, possible injuries and high costs. Therefore, the manufacture quality is of primordial importance for security and economic reasons. Nowadays, the quality control of crankshafts manufactured by forging in the automotive industry consists, among others, in inspecting them at the final process, using a magnetic particle procedure. This slow and highly stressful technique depends on operators and consumes many human resources, time, and space. This paper presents a methodology to automatically detect defective crankshafts. The proposed procedure is based on digital image analysis techniques, to extract a set of representative features from crankshaft images. Statistical techniques for supervised classification are used to classify the images into defective or not. The experimental results demonstrated the good performance of the proposed method with a classification accuracy over 99%, a 10% higher than the one obtained by manual inspection. Therefore, working time and personnel required for this task can be reduced when using this automated procedure.
机译:曲轴是发动机的机械部件,其在轴的旋转运动中执行活塞的替代运动的转换。这是一个关键的部分和最昂贵的发动机之一。曲轴中的缺陷可能意味着严重的失败,因此可能的伤害和高成本。因此,制造质量对安全性和经济原因具有原始重要性。如今,通过磁性颗粒程序在最终过程中,通过锻造在汽车工业中制造的曲轴的质量控制包括在最终过程中检查它们。这种缓慢而高度紧张的技术取决于运营商,消耗许多人力资源,时间和空间。本文提出了一种自动检测有缺陷的曲轴的方法。所提出的程序基于数字图像分析技术,以从曲轴图像中提取一组代表特征。用于监督分类的统计技术用于将图像分类为缺陷或不缺陷。实验结果表明了该方法的良好性能,分类精度超过99%,比手动检查所获得的10%高。因此,在使用此自动化过程时,可以减少此任务所需的工作时间和人员。

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