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Inspecting surface mounted devices using k nearest neighbor and Multilayer Perceptron

机译:使用k个最近邻居和多层感知器检查表面安装的设备

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Automatic inspection of electronic components during the production of printed circuit boards is a way to ensure the quality of this production, reducing the cost of re-work. An automatic optical inspection system based on AI techniques for surface mounted devices is proposed in this work. The method relies on extracting the contour and histogram related features of component images, using Watershed segmentation, Canny edge detection, border following algorithm and histogram analysis. Histogram related features are applied in the k nearest neighbor technique with the goal of identifying the existence of a component. Contour related features are used to identify changes in angle and position by a comparison method and also to classify the component using a Multilayer Perceptron (MLP) neural network. Both techniques were used in the inspection system with the chosen features, and are validated through the 10-fold cross validation data method.
机译:在印刷电路板生产过程中自动检查电子组件是确保生产质量,减少返工成本的一种方式。在这项工作中,提出了一种基于AI技术的表面安装设备自动光学检查系统。该方法依靠使用分水岭分割,Canny边缘检测,边界跟踪算法和直方图分析来提取组成图像的轮廓和直方图相关特征。与直方图相关的特征应用于k最近邻技术中,目的是识别组件的存在。轮廓相关的特征用于通过比较方法识别角度和位置的变化,并使用多层感知器(MLP)神经网络对组件进行分类。两种技术都在具有所选功能的检查系统中使用,并通过10倍交叉验证数据方法进行了验证。

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