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Research on PCB Defect Detection Using Deep Convolutional Nerual Network

机译:深卷积神经网络研究PCB缺陷检测

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In view of the low robustness of the existing traditional PCB defect detection algorithms, this paper applies a PCB defect detection and recognition algorithm based on deep convolutional nerual network framework SSD(Single Shot Detector). This algorithm structure utilizes multi-scale feature maps to customise boundary boxes with different scales, and applies small convolution kernel (3*3)to predict the classification results and boundary box information. Then the detection results gracefully optimize by non-maximum suppression (NMS). Finally, in order to prove the superiority of this algorithm, this paper conducts comparative experiments. The experimental results show that the algorithm has a significant improvement in the accuracy of PCB defect detection, and the identification accuracy of PCB nodules can be as high as 94.69%. It has good applicability in the application of PCB defect detection.
机译:鉴于现有传统PCB缺陷检测算法的低稳健性,本文应用了基于深度卷积的Nerual网络框架SSD(单拍摄检测器)的PCB缺陷检测和识别算法。 该算法结构利用多尺度特征映射来自定义具有不同尺度的边界框,并应用小卷积内核(3 * 3)来预测分类结果和边界框信息。 然后通过非最大抑制(NMS)优雅地优化检测结果。 最后,为了证明这种算法的优越性,本文进行了比较实验。 实验结果表明,该算法对PCB缺陷检测的准确性具有显着提高,PCB结节的识别精度可以高达94.69%。 它在PCB缺陷检测中具有良好的适用性。

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