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Apply Computer Vision and Neural Network to Glue Dispenser Route Inspection

机译:将计算机视觉和神经网络应用于点胶机路线检查

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Inspection system design based upon the dispenser route is the focus in this article. The defects of the dispenser route such as deformation, offset, gap, and broken glue may affect the quality of production and efficiency. An automatic dispenser route inspection system in combination the techniques of back-propagation neural (BPN) network with computer vision is developed. The inspection system includes computer vision (image acquisition, binarization, dilation, erosion, Sobel operator, thinning and extraction features), positioning, and inspection. The images are acquired and then preprocessed to extract the features (coordinates of edge) of interest for inspections. Before dispensing, positioning process of the dispenser system is significant. A simple method of positioning can achieve the positioning accuracy in an allowable range is introduced. Thus, the cause-and-effect failure problem due to inaccurate positioning of the dispenser system needs not considered so that it will not influence the investigation of other factors, in particular the needle''s condition. Extracting features of the captured image through a series of image processing procedures are evaluated. By checking the number of the searched pixels of the boundary of the dispenser route compared to the edge number of a uniform route, failure can be determined. For further diagnosis, six sets of parameters including the average width and its standard deviation(SD) of the dispenser route, average offset and its SD, and the average of deviation between the neighboring points on the left and right sides are designed as the input units in the input layer of a three-layer neural network.
机译:本文的重点是基于分配器路线的检查系统设计。分配器路径的缺陷,例如变形,偏移,间隙和胶粘剂破损,可能会影响生产质量和效率。开发了一种结合了反向传播神经(BPN)网络技术和计算机视觉技术的自动分配器路线检查系统。该检查系统包括计算机视觉(图像采集,二值化,膨胀,腐蚀,Sobel操作员,稀疏和提取功能),定位和检查。采集图像,然后对其进行预处理,以提取感兴趣的特征(边缘坐标)以进行检查。在分配之前,分配器系统的定位过程很重要。介绍了一种可以在允许范围内实现定位精度的简单定位方法。因此,不需要考虑由于分配器系统的不正确定位而导致的因果故障问题,从而不会影响其他因素(尤其是针头状况)的调查。评估通过一系列图像处理程序提取的捕获图像的特征。通过检查分配器路径边界的搜索像素数与统一路径的边缘数相比,可以确定故障。为了进一步诊断,将包括分配器路径的平均宽度和其标准偏差(SD),平均偏移量和其SD以及左侧和右侧相邻点之间的偏差的平均值在内的六组参数设计为输入。三层神经网络的输入层中的单位。

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