基于卷积神经网络的多背景电子元器件分类

Longfei Zhou, Lin Zhang
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引用次数: 3

摘要

计算机视觉技术的快速发展为制造业带来了新的机遇,加速了制造系统在产品质量保证、自动装配、工业机器人控制等方面的智能化。在电子制造业中,元件形状和颜色、背景亮度以及元件与背景之间的视觉对比度的剧烈变化导致了印刷电路板图像分类的困难。在本文中,我们应用计算机视觉技术从背景图像中检测不同的电子元件,这在电子制造业中是一个具有挑战性的问题,因为在同一块印刷电路板上安装了多种类型的元件。具体而言,提出了一种13层卷积神经网络(ECON)来检测单一类别或多种类别的电子元件。该网络由五个卷积- maxpooling块组成,然后是一个扁平层和两个完全连接的层。利用实际制造企业的电子元件图像数据集,比较了ECON、Xception、VGG16和VGG19的性能。在这个数据集中,有11个类别的组件及其背景图像。结果表明,ECON在单类别和多成分分类上都比其他网络具有更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel convolutional neural network for electronic component classification with diverse backgrounds
The rapid development of computer vision techniques has brought new opportunities for manufacturing industries, accelerating the intelligence of manufacturing systems in terms of product quality assurance, automatic assembly, and industrial robot control. In the electronics manufacturing industry, intensive variability in component shapes and colors, background brightness, and visual contrast between components and background results in difficulties in printed circuit board image classification. In this paper, we apply computer vision techniques to detect diverse electronic components from their background images, which is a challenging problem in electronics manufacturing industries because there are multiple types of components mounted on the same printed circuit board. Specifically, a 13-layer convolutional neural network (ECON) is proposed to detect electronic components either of a single category or of diverse categories. The proposed network consists of five Convolution-MaxPooling blocks, followed by a flattened layer and two fully connected layers. An electronic component image dataset from a real manufacturing company is applied to compare the performance between ECON, Xception, VGG16, and VGG19. In this dataset, there are 11 categories of components as well as their background images. Results show that ECON has higher accuracy in both single-category and diverse component classification than the other networks.
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