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Research on Lightweight Model-Based Leather Defect Edge Inference Mechanism

2023 8th International Conference on Intelligent Computing and Signal Processing (ICSP)(2023)

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摘要
Real-time and accurate detection of production defects is one of the most critical aspects of the production process. This paper proposes a model lightweight-based edge inference mechanism for leather defect detection. By collecting thousands of samples of leather defects and creating a self-made dataset. Then train the model through the YOLO algorithm. Constraining the size of the channel factor γ and adding an L1 regular term about the γ to the target equation, so that it can be thinned and automatically pruned during training process. The pruning model is retrained on the self-made dataset by the weight of the pruning model, and the gradient descent algorithm is used to fine-tune the model to restore the accuracy, and then deployed on the edge device to perform inference detection on the real-time production picture of leather. The detection results are transmitted to the industrial control host computer for storage and screening, achieving real-time detection, classification, and display of defects in leather production. Compared with traditional defect detection systems, this paper achieves faster and more effective leather defect detection in the production process.
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关键词
component,model lightweight,edge inference,YOLO,defect detection
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