锂电池焊料缺陷检测的改进YOLOv7算法

Yatao Yang, Junqing Li, Yunhao Zhou, Li Zhang
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引用次数: 0

摘要

动力锂电池焊接杆的结构完整性关系到电动汽车的行驶安全性。针对锂电池传统极杆激光焊接过程中由于覆盖面积小、像素低等微小缺陷而漏检的问题,本文提出了一种改进的YOLOv7焊接缺陷检测算法。首先,引入有效的通道注意机制C3SE模块,提高模型提取深层重要特征的能力;然后,改进的BiFPN结构取代PANet,提高了模型的特征利用效率和表达多尺度目标的能力。最后,MP结构使用分离合并操作,并在后续的卷积层中级联SE模块,以避免丢失特征的细粒度。实验结果表明,改进算法的缺陷检测mAP达到96.4%,比原算法提高了1.2个百分点。本文的工作可以为类似的焊接缺陷检测任务提供重要的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved YOLOv7 Algorithm for Solder Defect Detection of Lithium Battery
The structural integrity of welded poles in power lithium batteries is closely related to the driving safety of the electric vehicles. Aiming at the problem of missed detection resulted from minor defects such as small coverage area and low pixel during the process of laser welding of traditional-pole for lithium battery, an improved YOLOv7 welding defect detection algorithm is proposed in this paper. First, an efficient channel attention mechanism C3SE module is introduced to improve the model's ability of extracting deep important features. Then, the improved BiFPN structure replaces PANet to improve the model's efficiency of feature utilization and the ability to express multi-scale targets. Finally, the MP structure uses the separate-merge operation and cascades the SE module in the subsequent convolutional layers to avoid losing the fine granularity of features. The experimental results show that the mAP of the improved algorithm for detecting defects reaches 96.4%, which is 1.2% higher than the original algorithm. Our work can provide important reference for similar tasks of welding defects detection using target detection scheme.
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