基于去噪卷积自编码器的PCB缺陷检测

Saeed Khalilian, Yeganeh Hallaj, Arian Balouchestani, Hossein Karshenas, A. Mohammadi
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引用次数: 21

摘要

印制电路板(pcb)是制造电子产品最重要的阶段之一。pcb中的一个小缺陷可能会导致最终产品的重大缺陷。因此,检测pcb中的所有缺陷并定位它们是必不可少的。本文提出一种基于去噪卷积自编码器的pcb缺陷检测与定位方法。去噪自动编码器取损坏的图像并尝试恢复完整的图像。我们用有缺陷的多氯联苯训练我们的模型,并强迫它修复有缺陷的部分。我们的模型不仅可以检测和定位各种缺陷,而且还可以进行修复。通过从输入中减去修复后的输出,定位出有缺陷的部件。实验结果表明,与现有的检测方法相比,该模型的检测精度高达97.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PCB Defect Detection Using Denoising Convolutional Autoencoders
Printed Circuit boards (PCBs) are one of the most important stages in making electronic products. A small defect in PCBs can cause significant flaws in the final product. Hence, detecting all defects in PCBs and locating them is essential. In this paper, we propose an approach based on denoising convolutional autoencoders for detecting defective PCBs and to locate the defects. Denoising autoencoders take a corrupted image and try to recover the intact image. We trained our model with defective PCBs and forced it to repair the defective parts. Our model not only detects all kinds of defects and locates them, but it can also repair them as well. By subtracting the repaired output from the input, the defective parts are located. The experimental results indicate that our model detects the defective PCBs with high accuracy (97.5%) compare to state of the art works.
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