Research on Image Recognition Model of Tobacco Spare Parts Based on Multi-Feature Fusion

In order to realise the rapid query of tobacco spare parts, the tobacco spare parts recognition model of subject detection-feature extraction-feature retrieval was developed; the construction of multi-feature fusion of tobacco spare parts image recognition model (RMMF) realizes multi-feature fusion,...

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Published in2025 10th International Conference on Intelligent Computing and Signal Processing (ICSP) pp. 550 - 556
Main Authors Zhang, Jing, Jin, Dongdong, Bian, Changzhi, Hu, Wei, Li, Zhongyin, Wang, Lichun, Fan, Jun, He, Linyang, Zhang, Bao
Format Conference Proceeding
LanguageEnglish
Published IEEE 16.05.2025
Subjects
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DOI10.1109/ICSP65755.2025.11087113

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Abstract In order to realise the rapid query of tobacco spare parts, the tobacco spare parts recognition model of subject detection-feature extraction-feature retrieval was developed; the construction of multi-feature fusion of tobacco spare parts image recognition model (RMMF) realizes multi-feature fusion, extracts the image features through the spare parts image recognition model, distinguishes feature fusion, extracts the image features through the spare parts image recognition model, distinguishes different types of spare parts, and extracts the area features through the spare parts area retrieval model, and distinguishes different types of spare parts among the same type of spare parts. The RMMF was compared with three common image classification models, and the Top1 accuracy was 87.75% in the five-fold cross validation. compared with three common image classification models, and the Top1 accuracy of RMMF is 87.75%, the Top5 accuracy is 94.78%, and the Top10 accuracy is 96.74% in the five-fold cross-validation, which are better than the other models. RMMF also conducts two different types of case practice, for the 138 spare parts in the training set. RMMF's Top1 accuracy is 90.58%, Top5 accuracy is 97.10%, and Top10 accuracy is 97.83%; for the 5 spares that are not in the training set, RMMF does not misidentify them as spares in the training set, and the experimental results show that RMMF can achieve good results in real production.
AbstractList In order to realise the rapid query of tobacco spare parts, the tobacco spare parts recognition model of subject detection-feature extraction-feature retrieval was developed; the construction of multi-feature fusion of tobacco spare parts image recognition model (RMMF) realizes multi-feature fusion, extracts the image features through the spare parts image recognition model, distinguishes feature fusion, extracts the image features through the spare parts image recognition model, distinguishes different types of spare parts, and extracts the area features through the spare parts area retrieval model, and distinguishes different types of spare parts among the same type of spare parts. The RMMF was compared with three common image classification models, and the Top1 accuracy was 87.75% in the five-fold cross validation. compared with three common image classification models, and the Top1 accuracy of RMMF is 87.75%, the Top5 accuracy is 94.78%, and the Top10 accuracy is 96.74% in the five-fold cross-validation, which are better than the other models. RMMF also conducts two different types of case practice, for the 138 spare parts in the training set. RMMF's Top1 accuracy is 90.58%, Top5 accuracy is 97.10%, and Top10 accuracy is 97.83%; for the 5 spares that are not in the training set, RMMF does not misidentify them as spares in the training set, and the experimental results show that RMMF can achieve good results in real production.
Author He, Linyang
Zhang, Jing
Fan, Jun
Bian, Changzhi
Li, Zhongyin
Jin, Dongdong
Hu, Wei
Wang, Lichun
Zhang, Bao
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Snippet In order to realise the rapid query of tobacco spare parts, the tobacco spare parts recognition model of subject detection-feature extraction-feature retrieval...
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SubjectTerms Accuracy
Feature extraction
Feature fusion
Image classification
Image recognition
Printing
Production facilities
Signal processing
Text recognition
Tobacco spare parts
Training
Title Research on Image Recognition Model of Tobacco Spare Parts Based on Multi-Feature Fusion
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