4.6 Article

Research on a Product Quality Monitoring Method Based on Multi Scale PP-YOLO

期刊

IEEE ACCESS
卷 9, 期 -, 页码 80373-80387

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3085338

关键词

Monitoring; Production; Feature extraction; Object detection; Kernel; Convolution; Quality assessment; Quality monitoring; PP-YOLO; pruning; deep learning

资金

  1. major project of Talent Introduction Project through the Guizhou University of Finance and Economics [2020YJ030]
  2. Talent Project in Guizhou Province [KY[2018]037]

向作者/读者索取更多资源

This thesis proposes a quality monitoring model based on PP-YOLO to monitor product quality in real time during production. By enhancing the algorithm and improving the model structure, the proposed model meets the requirements for detection speed and accuracy in actual production, while reducing the number of model parameters to adapt to hardware limitations.
To monitor product quality in the production process in real time, this thesis proposes a quality monitoring model based on PaddlePaddle You Only Look Once (PP-YOLO). First, in the preprocessing stage, the data enhancement method and the K-means++ method are used to improve the robustness of the algorithm, and the generated anchor box can screen more refined features earlier. Second, ResNet50-vd with the deformable convolution idea is selected as the backbone of the detection model, the feature pyramid network structure and the composition of the loss function are improved, and the feature learning ability of the model is enhanced to enable it to detect multiple scales of defects. Finally, pruning is performed on the basis of the trained model to reduce the number of model parameters so that it can be deployed in industrial scenarios with limited hardware conditions. Experimental results show that the proposed quality monitoring model can meet the requirements for detection speed and accuracy in actual production, providing a new concept for the deployment of deep learning models in the industrial field.

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