About | Contact Us | Register | Login
ProceedingsSeriesJournalsSearchEAI
Mobile Networks and Management. 13th EAI International Conference, MONAMI 2023, Yingtan, China, October 27-29, 2023, Proceedings

Research Article

Image Classification Algorithm for Graphite Ore Carbon Grade Based on Multi-scale Feature Fusion

Cite
BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-55471-1_13,
        author={Xueyu Huang and Haoyu Shi and Yaokun Liu and Haoran Lu},
        title={Image Classification Algorithm for Graphite Ore Carbon Grade Based on Multi-scale Feature Fusion},
        proceedings={Mobile Networks and Management. 13th EAI International Conference, MONAMI 2023, Yingtan, China, October 27-29, 2023, Proceedings},
        proceedings_a={MONAMI},
        year={2024},
        month={3},
        keywords={Pyramid Convolution Residual Network Graphite Ore Carbon Grade Image Classification Attention Mechanism},
        doi={10.1007/978-3-031-55471-1_13}
    }
    
  • Xueyu Huang
    Haoyu Shi
    Yaokun Liu
    Haoran Lu
    Year: 2024
    Image Classification Algorithm for Graphite Ore Carbon Grade Based on Multi-scale Feature Fusion
    MONAMI
    Springer
    DOI: 10.1007/978-3-031-55471-1_13
Xueyu Huang1, Haoyu Shi1,*, Yaokun Liu1, Haoran Lu1
  • 1: School of Software Engineering, Jiangxi University of Science and Technology
*Contact email: qq437211826@163.com

Abstract

Based on the tedious process of using a carbon-sulfur analyzer to detect the carbon grade of graphite in graphite mining production, this paper proposes a graphite carbon grade image recognition and classification method based on multi-scale feature fusion. The experiment preprocesses the images and constructs a residual network model that combines pyramid convolution (PyConv) and spatial attention mechanism (SAM). This model enhances the extraction of both global and local feature information from graphite images. Transfer learning is introduced by using pre-trained weights to accelerate the convergence of the model, achieving efficient and accurate recognition and classification of graphite carbon grade with an accuracy of 92.5%, surpassing traditional machine learning methods using single features. The experimental results demonstrate that the neural network model constructed in this paper effectively extracts texture and color features from graphite images, improving the accuracy of graphite image classification and recognition. The model exhibits good robustness and provides valuable insights for practical graphite mining production.

Keywords
Pyramid Convolution Residual Network Graphite Ore Carbon Grade Image Classification Attention Mechanism
Published
2024-03-17
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-55471-1_13
Copyright © 2023–2025 ICST
EBSCOProQuestDBLPDOAJPortico
EAI Logo

About EAI

  • Who We Are
  • Leadership
  • Research Areas
  • Partners
  • Media Center

Community

  • Membership
  • Conference
  • Recognition
  • Sponsor Us

Publish with EAI

  • Publishing
  • Journals
  • Proceedings
  • Books
  • EUDL