A novel PCB fault diagnosis method based on tiny object detection

Chengwei Kang, Peicheng Cong, Yongbo Sun, Shengqi Wang, Xi Liu, Longjie Duan, Kuan Wu, Peng Cao, Dong Qin, Changxiang Li, Xudong Song
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Abstract

With the rapid development of science and technology and the advent of the information age, the number of components used in electronic devices has increased sharply, making its internal circuit structure increasingly complex. Printed Circuit Boards (PCBs), as part of electronic devices, are becoming smaller and more integrated, resulting in a much greater increase in the probability of failure and the difficulty of detection. Therefore, to reduce the difficulty and cost of PCB fault diagnosis, it is very necessary to explore and study new PCB diagnosis methods. This paper first reconstructs the PCB dataset by ESRGAN, and then the CenterNet based on the center point is introduced and improved. The ResNeSt based on the segmentation attention mechanism is integrated with CenterNet to realize the PCBs fault diagnosis method based on the tiny object detection method. Experiments have proved that the method can achieve 99.42% mAP.
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基于微小目标检测的PCB故障诊断新方法
随着科学技术的飞速发展和信息时代的到来,电子器件中使用的元器件数量急剧增加,使得其内部电路结构日益复杂。印刷电路板(pcb)作为电子器件的一部分,正变得越来越小,越来越集成化,导致故障的概率和检测的难度大大增加。因此,为了降低PCB故障诊断的难度和成本,探索和研究新的PCB诊断方法是非常必要的。本文首先利用ESRGAN对PCB数据集进行重构,然后引入并改进了基于中心点的CenterNet。将基于分割注意机制的ResNeSt与CenterNet相结合,实现了基于微小目标检测法的pcb故障诊断方法。实验证明,该方法可以达到99.42%的mAP。
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