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Application of neural networks in optical inspection and classification of solder joints in surface mount technology

机译:神经网络在表面贴装技术中光学检查和焊点分类中的应用

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The defect detection on manufactures is extremely important in the optimization of industrial processes; particularly, the visual inspection plays a fundamental role. The visual inspection is often carried out by a human expert. However, new technology features have made this inspection unreliable. For this reason, many researchers have been engaged to develop automatic analysis processes of manufactures and automatic optical inspections in the industrial production of printed circuit boards. Among the defects that could arise in this industrial process, those of the solder joints are very important, because they can lead to an incorrect functioning of the board; moreover, the amount of the solder paste can give some information on the quality of the industrial process. In this paper, a neural network-based automatic optical inspection system for the diagnosis of solder joint defects on printed circuit boards assembled in surface mounting technology is presented. The diagnosis is handled as a pattern recognition problem with a neural network approach. Five types of solder joints have been classified in respect to the amount of solder paste in order to perform the diagnosis with a high recognition rate and a detailed classification able to give information on the quality of the manufacturing process. The images of the boards under test are acquired and then preprocessed to extract the region of interest for the diagnosis. Three types of feature vectors are evaluated from each region of interest, which are the images of the solder joints under test, by exploiting the properties of the wavelet transform and the geometrical characteristics of the preprocessed images. The performances of three different classifiers which are a multilayer perceptron, a linear vector quantization, and a K-nearest neighbor classifier are compared. The n-fold cross-validation has been exploited to select the best architecture for the neural classifiers, while a number of experiments have been devoted to estimating the best value of K in the K-NN. The results have proved that the MLP network fed with the GW-features has the best recognition rate. This approach allows to carry out the diagnosis burden on image processing, feature extraction, and classification algorithms-, reducing the cost and the complexity of the acquisition system. In fact, the experimental results suggest that the reason for the high recognition rate in the solder joint classification is due to the proper preprocessing steps followed as well as to the information contents of the features.
机译:制造商的缺陷检测对于优化工业流程至关重要。特别地,视觉检查起着基本作用。目视检查通常由人类专家进行。但是,新技术功能使这种检查不可靠。因此,在印刷电路板的工业生产中,许多研究人员已经从事开发产品的自动分析过程和自动光学检查的工作。在这种工业过程中可能产生的缺陷中,焊点的缺陷非常重要,因为它们会导致电路板的功能不正确;此外,焊膏的量可以提供一些有关工业过程质量的信息。本文提出了一种基于神经网络的自动光学检测系统,用于诊断以表面安装技术组装的印刷电路板上的焊点缺陷。使用神经网络方法将诊断作为模式识别问题进行处理。为了实现高识别率的诊断和能够给出制造工艺质量信息的详细分类,已经针对焊膏的数量对五种类型的焊点进行了分类。采集被测板的图像,然后进行预处理,以提取感兴趣的区域以进​​行诊断。通过利用小波变换的属性和预处理图像的几何特征,从每个感兴趣的区域评估了三种类型的特征向量,它们是被测焊点的图像。比较了三种不同的分类器(多层感知器,线性向量量化和K近邻分类器)的性能。已利用n折交叉验证为神经分类器选择最佳架构,同时进行了许多实验来估计K-NN中K的最佳值。结果证明,具有GW功能的MLP网络具有最佳的识别率。这种方法可以对图像处理,特征提取和分类算法执行诊断负担,从而降低了成本和采集系统的复杂性。实际上,实验结果表明,在焊点分类中识别率高的原因是由于遵循了适当的预处理步骤以及特征的信息内容。

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