基于改进型 YOLOv7-Tiny 深度学习模型的注射器缺陷强化检测技术

Wenxuan Zhao, Ling Wang, Chentao Mao, Xiai Chen, Yanfeng Gao, Binrui Wang
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摘要

及时准确地识别注射器缺陷对有效提高注射器生产线的产品质量起着关键作用。在本文中,我们收集了代表生产线上常见的五种注射器缺陷的图像样本数据集。该数据集包含 5000 多张图像,平均每张图像包含 3 种不同的注射器缺陷。基于该数据集,我们设计了一个基于本文提出的改进型 YOLOv7-Tiny 的注射器缺陷检测模型。该模型结合了 Res-PAN 结构、ACmix 混合注意力机制、FReLU 激活函数和 SIoU 损失函数。在自建数据集 SYR-Dat 上进行了对比实验,以评估所提出的注射器缺陷检测模型的性能。模型的平均精度达到 94.1%。为了确保该模型的有效性,将其与其他模型进行了比较,包括 SSD300、Faster R-CNN、EfficientDet、RetinaNet、YOLOv5s、YOLOv6 和 YOLOv7。结果表明,所提出的改进型 YOLOv7-Tiny 模型能更好地捕捉注射器缺陷的特征。此外,改进后的 YOLOv7-Tiny 模型的通用性在 VOC2012 数据集上得到了验证。结果表明,改进后的模型继续优于基线模型。所提出的注射器缺陷检测模型具有广阔的应用前景,因为它可以降低次品率,提高产品质量。
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Enhanced Detection of Syringe Defects Based on an Improved YOLOv7-Tiny Deep-Learning Model
The timely and accurate identification of syringe defects plays a key role in effectively improving product quality in production lines of syringes. In this article, we collected a dataset of image samples representing five common types of syringe defects found on the production line. The dataset comprises over 5000 images, with an average of 3 different syringe defects per image. Based on this dataset, we designed a syringe defect detection model based on an improved YOLOv7-Tiny proposed in this paper. The model combines the Res-PAN structure, the ACmix mixed attention mechanism, the FReLU activation function, and the SIoU loss function. The comparative experiments are conducted on the self-built dataset SYR-Dat to evaluate the performance of the proposed syringe defect detection model. The average precision of the model reaches 94.1%. To ensure the effectiveness of the model, it is compared with other models, including SSD300, Faster R-CNN, EfficientDet, RetinaNet, YOLOv5s, YOLOv6, and YOLOv7. The results demonstrate that the proposed improved YOLOv7-Tiny model can better capture the features of syringe defects. Furthermore, the generalization of the improved YOLOv7-Tiny model is validated on the VOC2012 dataset. The results indicate that the improved model continues to outperform the baseline models. The proposed syringe defect detection model shows promising application prospects, as it can ?weduce the rate of defective products and improve product quality.
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