Faster R-CNN assessment for air bubbles detection in the conformal coating application

Nizar Zouhri, A. E. Mourabit, Alaoui Ismaili Zine El Abidine
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Abstract

The detection of defects in Printed Circuit Boards (PCB) during the assembly process is an important quality requirement for the electronic manufacturing.The present paper emphasizes the assessment of computer vision implying Faster-RCNN object detection architecture, with the aim of air bubbles defects detection in PCB following the conformal coating process.Several image configurations have been used to increase artificially the training model’s performance, such as air bubbles size, location (on a flat PCB’s surface, between components leads) and illumination, etc.Toward reaching this cap, we used a random pattern of choice regarding the images with different configurations to properly evaluate its performance, especially the accuracy, precision and sensitivity.Our results showed that Faster-RCNN delivers the lowest detection performance for the air bubbles located between components leads compared to the ones located on flat PCB surfaces.This paper shows the accuracy, precision and sensitivity performance results by applying the Faster-RCNN object detection architecture for air bubbles defect detection in the conformal coating application, with aim of providing reference for future research in the field of air bubbles detection.
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更快的R-CNN评估用于保形涂层应用中的气泡检测
印刷电路板在装配过程中的缺陷检测是电子制造的一项重要质量要求。本文重点研究了基于快速rcnn目标检测体系结构的计算机视觉评估,旨在检测PCB保形涂层后的气泡缺陷。已经使用了几种图像配置来人为地提高训练模型的性能,例如气泡大小,位置(在平面PCB表面上,元件引线之间)和照明等。为了达到这一上限,我们使用了针对不同配置的图像的随机选择模式来适当评估其性能,特别是准确性,精度和灵敏度。我们的研究结果表明,与位于平面PCB表面上的气泡相比,Faster-RCNN对位于组件引线之间的气泡提供了最低的检测性能。本文展示了fast - rcnn目标检测架构在保形涂层应用中气泡缺陷检测的准确性、精密度和灵敏度性能结果,旨在为未来气泡检测领域的研究提供参考。
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