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Automatic Industry PCB Board DIP Process Defect Detection System Based on Deep Ensemble Self-Adaption Method

机译:自动工业PCB板DIP工艺缺陷检测系统基于深层整体自适应方法

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摘要

A deep ensemble convolutional neural network (CNN) model to inspect printed circuit board (PCB) board dual in-line package (DIP) soldering defects with Hybrid-YOLOv2 (YOLOv2 as a foreground detector and ResNet-101 as a classifier) and Faster RCNN with ResNet-101 and Feature Pyramid Network (FPN) (FRRF) achieved a detection rate of 97.45% and a false alarm rate (FAR) of 20%-30% in the previous study [34]. However, applying the method to other production lines, environmental variations, such as lighting, orientations of the sample feeds, and mechanical deviations, led to the degradation in detection performance. This article proposes an effective self-adaption method that collects "exception data" like the samples with which the Artificial Intelligent (AI) model made mistakes from the automated optical inspection inference edge to the training server, retraining with exceptions on the server and deploying back to the edge. The proposed defect detection system has been verified with real tests that achieved a detection rate of 99.99% with an FAR 20%-30% and less than 15 s of inspection time on a resolution 7296x6000 PCB image. The proposed system has proven capable of shortening inspection and repair time for online operators, where a 33% efficiency boost from the three production lines of the collaborated factory has been reported [6]. The contribution of the proposed retraining mechanism is threefold: 1) because the retraining process directly learns from the exceptions, the model can quickly adapt to the characteristic of each production line, leading to a fast and reliable mass deployment; 2) the proposed retraining mechanism is a necessary self-service for conventional users as it incrementally improves the detection performance without professional guidance or fine-tuning; and 3) the semiautomatic exception data collection method helps to reduce the time-consuming manual labeling during the retraining process.
机译:一种深度集合卷积神经网络(CNN)模型,用于检查印刷电路板(PCB)板双线封装(DIP)焊接缺陷用Hybrid-Yolov2(作为前景探测器和resnet-101作为分类器)和速度rcnn使用Reset-101和特征金字塔网络(FPN)(FPN)(FPN)(FPN)在前一项研究中达到97.45%的检出率为97.45%,错误的报警率(远)为20%-30%[34]。然而,将该方法应用于其他生产线,环境变化,例如照明,样品馈送的方向,以及机械偏差,导致检测性能的降解。本文提出了一种有效的自适应方法,可以收集“异常数据”,如人工智能(AI)模型从自动化光学检查推理边缘到训练服务器的错误,以服务器上的例外重新调试并部署回到了边缘。所提出的缺陷检测系统已经通过实际测试进行了验证,该实际测试可实现99.99%的检出率,而在分辨率7296x6000 PCB图像上的检验时间的距离为20%-30%和少于15秒。拟议的系统已经证明能够缩短在线运营商的检查和修复时间,其中报告了合作工厂的三条生产线的33%效率提升[6]。提出的再培训机制的贡献是三倍:1)由于雷丁过程从例外直接学习,模型可以快速适应每个生产线的特征,导致快速可靠的群心部署; 2)建议的再培训机制是常规用户的必要自助服务,因为它逐步提高了没有专业指导或微调的检测性能; 3)半自动异常数据收集方法有助于减少渗透过程中的耗时的手动标记。

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