Visual inspection of soldered joints by using neural networks

S. Jagannathan, S. Balakrishnan, N. Popplewell
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引用次数: 6

Abstract

The problem of solder joint inspection is viewed as a two-step process of pattern recognition and classification. A modified intelligent histogram regrading technique is used which divides the histogram of the captured image into different modes. Each distinct mode is identified, and the corresponding range of grey levels is separated and regraded by using neural networks. The output pattern of the networks is presented to a second stage of neural networks in order to select and interpret a histogram's features. A learning mechanism is also used which uses a backpropagation algorithm to successfully identify and classify the defective solder joints. The proposed technique has the high speed and low computational complexity typical of nonspatial techniques.<>
基于神经网络的焊接点视觉检测
焊点检测问题被看作是一个模式识别和分类的两步过程。采用改进的智能直方图分级技术,将捕获图像的直方图划分为不同的模式。识别出每个不同的模式,并利用神经网络对相应的灰度范围进行分离和还原。网络的输出模式被呈现给神经网络的第二阶段,以便选择和解释直方图的特征。采用了一种学习机制,利用反向传播算法成功地对缺陷焊点进行识别和分类。该技术具有非空间技术的高速度和低计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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