产品表面缺陷的AVI

G. Fornarelli, A. Giaquinto
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引用次数: 2

摘要

对制造商的缺陷检测在工业过程的优化中是至关重要的(Garcia 2005)。事实上,工程材料和产品的工业检验趋向于尽可能快速、准确地发现、定位和分类缺陷,以提高生产质量。在这个领域中,一个相关的领域是由目视检查构成的。如今,这项任务通常由人类专家来完成。然而,这种检查费时且重复性低,因为每个操作人员的判断标准不同。此外,视觉疲劳或注意力不集中是不可避免的。为了减轻人类测试人员的负担,提高对缺陷产品的检测,最近许多研究人员一直致力于开发制造商的自动视觉检测(AVI)系统,这些系统从技术角度显示容易可靠,并适当地模仿专家在缺陷评估过程中(Bahlmann, Heidemann & Ritter 1999)。即使缺陷检测在目视检查中也会成为一项艰巨的任务。事实上,在工业过程中,由于缺陷在不同的类别之间和不同的类别间具有相似的特征(R.视觉检测系统能够适应动态运行条件),因此需要处理大量的数据,并且缺陷属于具有动态缺陷种群的大量类别。为此目的,基于人工神经网络(ANNs)的软计算技术已经在工业生产的几个不同领域提出。事实上,神经网络经常被用来识别各种各样的缺陷(2006)。虽然在许多情况下是足够的,但在其他情况下,神经网络不能代表最合适的解决方案。事实上,人工神经网络的设计通常需要在预处理阶段从合适的数据集中提取参数和特征,从而识别出最可能存在的缺陷(Bahlmann, Heidemann & Ritter 1999, Karras 2003, Rimac-Drlje, Keller & Hocenski 2005)。因此,基于神经网络的方法对于在线应用来说可能是时间昂贵的,因为这些初步步骤和原因,当在工业过程中时间约束发挥重要作用时,可以提出上述方法的硬件解决方案(解决方案的R.意味着可以通过考虑细胞神经网络(cnn)来避免进一步的设计工作(Chua & Roska 2002)。细胞神经网络具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AVI of Surface Flaws on Manufactures I
INTRODUCTION The defect detection on manufactures is of utmost importance in the optimization of industrial processes (Garcia 2005). In fact, the industrial inspection of engineering materials and products tends to the detection , localization and classification of flaws as quickly and as accurately as possible in order to improve the production quality. In this field a relevant area is constituted by visual inspection. Nowadays, this task is often carried out by a human expert. Nevertheless, such kind of inspection could reveal time-consuming and suffer of low repeatability because the judgment criteria can differ from operator to operator. Furthermore , visual fatigue or loss of concentration inevitably In order to reduce the burden of human testers and improve the detection of faulty products, recently many researchers have been engaged in developing systems in Automated Visual Inspection (AVI) of manufactures These systems reveal easily reliable from technical point of view and mimic the experts in the evaluation process of defects appropriately (Bahlmann, Heidemann & Ritter 1999), even if defect detection in visual inspection can become a hard task. In fact, in industrial processes a large amount of data has to be handled and flaws belong to a great number of classes with dynamic defect populations, because defects could present similar characteristics among different classes and different interclass features (R. visual inspection systems are able to adapt to dynamic operating conditions. To this purpose soft computing techniques based on the use of Artificial Neural Networks (ANNs) have already been proposed in several different areas of industrial production. In fact, neural networks are often exploited for their ability to recognize a wide spread of different defects 2006). Although adequate in many instances, in other cases Neural Networks cannot represent the most suitable solution. In fact, the design of ANNs often requires the extraction of parameters and features, during a preprocessing stage, from a suitable data set, in which the most possible defects are recognized (Bahlmann, Heidemann & Ritter 1999, Karras 2003, Rimac-Drlje, Keller & Hocenski 2005). Therefore, methods based on neural networks could be time expensive for in-line applications because such preliminary steps and reason, when in an industrial process time constraints play an important role, a hardware solution of the abovementioned methods can be proposed (R. of solution implies a further design effort which can be avoided by considering Cellular Neural Networks (CNNs) (Chua & Roska 2002). Cellular Neural Networks have good potentiality …
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