基于改进YOLO的铝型材表面缺陷检测

Di Wu, Xizhong Shen, Ling Chen
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引用次数: 3

摘要

铝材料广泛应用于生产和生活中,是一种对表面处理要求较高的材料。检测其表面缺陷是提高其利用效率的关键。为了提高铝材表面缺陷检测的准确性和可靠性,本文利用具有灵活性、轻量级和准确性的YOLO X构建训练网络,提出了一种基于YOLO X的缺陷检测模型,用CSP-ResNeXt取代原有的CSP-DarkNet,并集成了注意机制。增强了网络对缺陷的分类能力,提高了对多缺陷的检测精度。在训练中采用迁移学习方法,缩短了训练周期,提高了短期训练网络的检测性能。实验结果表明,该模型的平均精度(AP)和平均精度(mAP)得到了显著提高,检测速度帧/秒(FPS)没有明显下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Defects on Aluminum Profile Surface Based on Improved YOLO
Aluminum material is widely used in production and life, and it is a material with high requirements on surface treatment. Detecting its surface defects is the key to improving its utilization efficiency. To improve the accuracy and reliability of surface defect detection of aluminum material, this paper uses YOLO X with flexibility, lightness, and accuracy to build a training network, and proposes a defect detection model based on YOLO X, which replaces the original CSP-DarkNet with CSP-ResNeXt and integrates the Attention Mechanism. The network's ability to classify defects is strengthened, so the detection accuracy of multiple defects is improved. The Transfer Learning method is used in training, which shortens the training cycle and improves the detection performance of the short-term training network. The experimental results show that the Average Precision (AP) and mean Average Precision (mAP) of the model have been significantly improved, and the detection speed Frame Per Second (FPS) has not decreased significantly.
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