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HRIPCB: a challenging dataset for PCB defects detection and classification

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To cope with the difficulties in inspection and classification of defects in printed circuit board (PCB), many methods have been proposed in previous work. However, few of them publish their datasets before, which hinders the introduction and comparison of new methods. In this study, HRIPCB, a synthesised PCB dataset that contains 1386 images with 6 kinds of defects is proposed for the use of detection, classification and registration tasks. Besides, a reference-based method is adopted to inspect and an end-to-end convolutional neural network is trained to classify the defects, which are collectively referred to as the RBCNN approach. Unlike conventional approaches that require pixel-by-pixel processing, the RBCNN method proposed in this study firstly locates the defects and then classifies them by deep neural networks, which shows superior performance on the dataset.

image registrationcomputer visionimage recognitioninspectionobject detectionneural netsprinted circuitsRBCNN methoddeep neural networksHRIPCBchallenging datasetPCB defects detectioninspectionprinted circuit boardsynthesised PCB dataset6 kindsclassificationregistration tasksreference-based methodend-to-end convolutional neural networkRBCNN approachpixel-by-pixel processing

Huang, Weibo、Wei, Peng、Zhang, Manhua、Liu, Hong

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Peking Univ, Shenzhen Grad Sch, Key Lab Machine Percept, Shenzhen, Peoples R China

Shenzhen Skyworth RGB Elect Co Ltd, Shenzhen, Peoples R China

2020

The Journal of Engineering

The Journal of Engineering

ISSN:
年,卷(期):2020.2020(13)
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