使用2D和3D特征对焊点进行自动视觉检查

Tae-Hyeon Kim, Tai-Hoon Cho, Y. Moon, Sung-Han Park
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引用次数: 8

摘要

本文介绍了有效的焊点检测技术。利用三层不同照射角度的环形LED,依次得到三帧图像。从这些图像中对感兴趣的区域(焊接区域)进行分割,并提取其特征特征,包括平均灰度和高光百分比-称为二维特征。基于神经网络的反向传播算法,将每个焊点划分为预先定义的类型之一。如果输出值不在置信区间内,则计算倾斜角度的分布(称为3D特征),并根据贝叶斯分类器对焊点进行分类。第二种分类器需要更多的计算,同时提供更多的信息和更好的性能。所提出的检测系统已在smd中各种类型的焊点上实施和测试。实验结果验证了该方案在速度和识别率方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automated visual inspection of solder joints using 2D and 3D features
In this paper, efficient techniques for solder joint inspection have been described. Using three layers of ring shaped LED's with different illumination angles, three frames of images are sequentially obtained. From these images the regions of interest (soldered regions) are segmented, and their characteristic features including the average gray level and the percentage of highlights-referred to as 2D features-are extracted. Based on the backpropagation algorithm of neural networks, each solder joint is classified into one of the pre-defined types. If the output value is not in the confidence interval, the distribution of tilt angles-referred to as 3D features-is calculated, and the solder joint is classified based on the Bayes classifier. The second classifier requires more computation while providing more information and better performance. The proposed inspection system has been implemented and tested with various types of solder joints in SMDs. The experimental results have verified the validity of this scheme in terms of speed and recognition rate.
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