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Defect Sample Generation System Based on DCGAN for Glass Package Electrical Connectors

机译:基于DCAN玻璃包装电连接器的缺陷样品生成系统

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Precision glass packaged electrical connectors are widely used to connect precision modular electrical appliances. Manual detection is currently used due to its small size. In order to improve the detection efficiency and accuracy, deep learning is applied to the automatic detection of the defect. In this paper, in order to solve the problem of lack of defect samples, a defect sample generation system for micro-precision glass package electrical connectors based on deep convolutional generation confrontation network (DCGAN) is constructed. A network model of defect samples based on DCGAN is constructed, and algorithm design, parameter settings, network training and experiments are performed. More than 1,500 samples were generated. Finally, the generated samples were tested for defects (including missing blocks and bubbles). The results show that the samples generated by this method can be used as real samples in defect detection training.
机译:精密玻璃包装电连接器广泛用于连接精密模块化电器。目前由于其体积小而使用手动检测。为了提高检测效率和准确性,深度学习应用于自动检测缺陷。在本文中,为了解决缺乏缺陷样本的问题,构建了基于深卷积生成对抗网络(DCGAN)的微精密玻璃包装电连接器的缺陷样品生成系统。构建基于DCGAN的缺陷样本的网络模型,并进行算法设计,参数设置,网络训练和实验。产生了超过1,500个样品。最后,测试产生的样品用于缺陷(包括丢失块和气泡)。结果表明,该方法产生的样品可用作缺陷检测训练中的真实样本。

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