JOURNAL OF LIGHT INDUSTRY

CN 41-1437/TS  ISSN 2096-1553

Volume 39 Issue 5
October 2024
Article Contents
FEI Zhigen, LU Hao, SONG Xiaoxiao, et al. Cleanliness classification model for tobacco conveyor belt based on an improved residual network[J]. Journal of Light Industry, 2024, 39(5): 71-77. doi: 10.12187/2024.05.008
Citation: FEI Zhigen, LU Hao, SONG Xiaoxiao, et al. Cleanliness classification model for tobacco conveyor belt based on an improved residual network[J]. Journal of Light Industry, 2024, 39(5): 71-77. doi: 10.12187/2024.05.008 shu

Cleanliness classification model for tobacco conveyor belt based on an improved residual network

  • Received Date: 2024-03-10
    Accepted Date: 2024-04-11
    Available Online: 2024-10-15
  • Addressing the current reliance on manual subjective judgment and strong subjectivity for assessing the cleanliness of tobacco conveyor belts, a cleanliness classification model (ResNet24_SC_Block) for tobacco conveyor belt using an improved ResNet was proposed. This model uses ResNet for classification with a network depth of 24 layers. SE and CBAM attention mechanisms were introduced into the residual module to improve the model's ability to capture features such as conveyor belt color and adhesion smoke scale. Using the tobacco leaf conveyor belt dataset to experiment with this model, the experimental results showed that the average values of Accuracy, Precision, Recall and F1 of the improved ResNet24_SC_Block model were 98.8%, 98.8% and 98.4%, respectively, which were 3.3%~3.8% higher than those of ResNet18 model and ResNet34 model. Compared with classic and newer networks such as GoogLeNet model and RegNet model, it improves by 2.1% to 17.9%. And the number of model parameters was reduced by 31.6% compared with ResNet34 model. This approach offered notable advantages in accurately and efficiently assessing the cleanliness level of tobacco conveyor belts, making it highly consequential and practically valuable for intelligent upgrades in cigarette manufacturing plants.
  • 加载中
    1. [1]

      吕飞,马帅旭,杨剑锋.烟草行业制造过程质量风险来源探析[J].现代企业文化,2011(3):112-113.

    2. [2]

      田芳,赵光辉.中国智能制造实证研究:以烟草产业为例[J].中国市场,2018(19):7-11.

    3. [3]

      郑贞珍.提升烟草行业智慧治理效能推进行业高质量发展的策略分析[J].经济管理,2023(7):51-54.

    4. [4]

      郭庆梅,于恒力,王中训,等.基于卷积神经网络的图像分类模型综述[J].电子技术应用,2023,49(9):31-38.

    5. [5]

      付永民,范磊,李长进,等.基于计算机视觉与机器学习的烟丝杂质图像级联检测方法[J].轻工学报,2023,38(4):113-121.

    6. [6]

      LU M Y,JIANG S W,WANG C,et al.Tobacco leaf grading based on deep convolutional neural networks and machine vision[J].Journal of the ASABE,2022,65(1):11-22.

    7. [7]

      谢裕睿,苗晟,张铄,等.基于残差神经网络的烟草病害识别研究[J].现代计算机,2020(30):27-31.

    8. [8]

      NIU Q F,LIU J P,JIN Y,et al.Tobacco shred varieties classification using Multi-Scale-X-ResNet network and machine vision[J].Frontiers in Plant Science,2022,13:962664.

    9. [9]

      李海燕,李郸,马慧宇,等.基于改进深度学习模型IRCNN的卷烟真伪鉴别[J].计算技术与自动化,2023,42(1):188-192.

    10. [10]

      WANG C Y,ZHAO J L,YU Z C,et al.Real-time foreign object and production status detection of tobacco cabinets based on deep learning[J].Applied Sciences,2022,12(20):10347.

    11. [11]

      HE K M,ZHANG X Y,REN S Q,et al.Deep residual learning for image recognition[C]//2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).Las Vegas:IEEE,2016:770-778.

    12. [12]

      IOFFE S,SZEGEDY C.Batch normalization:Accelerating deep network training by reducing internal covariate shift[J].JMLR,2015,37:448-456.

    13. [13]

      HU J,SHEN L,SUN G.Squeeze-and-excitation networks[C]//2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition.Salt Lake City:IEEE,2018:7132-7141.

    14. [14]

      WOO S,PARK J,LEE J Y,et al.CBAM:Convolutional block attention module[M].Berlin:Springer International Publishing,2018:3-19.

    15. [15]

      于营,杨婷婷,杨博雄.混淆矩阵分类性能评价及Python实现[J].现代计算机,2021(20):70-73,79.

Article Metrics

Article views(610) PDF downloads(14) Cited by()

Ralated
    通讯作者: 陈斌, bchen63@163.com
    • 1. 

      沈阳化工大学材料科学与工程学院 沈阳 110142

    1. 本站搜索
    2. 百度学术搜索
    3. 万方数据库搜索
    4. CNKI搜索

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return