Heat Treatment of Metals ›› 2025, Vol. 50 ›› Issue (5): 284-292.DOI: 10.13251/j.issn.0254-6051.2025.05.045

• COMPUTER APPLICATION • Previous Articles     Next Articles

Microstructure classification method based on multi-scale feature fusion

Huang Xiaohong1,2, Zhang Luyue1,2, Song Yue3, Zhang Qingjun4   

  1. 1. College of Artificial Intelligence, North China University of Science and Technology, Tangshan Hebei 063210, China;
    2. Hebei Provincial Key Laboratory of Industrial Intelligent Sensing, Tangshan Hebei 063210, China;
    3. Hebei HBIS Material Technology Research Institute Co., Ltd., Shijiazhuang Hebei 050023, China;
    4. Comprehensive Testing and Analyzing Center, North China University of Science and Technology, Tangshan Hebei 063210, China
  • Received:2024-12-03 Revised:2025-02-28 Published:2025-06-25

Abstract: To address the problems of low manual efficiency, susceptibility to subjective factors, and limited automatic classification and recognition categories in traditional microstructure quantitative analysis, a microstructure classification method based on Res2net50 multi-scale feature fusion was proposed. Firstly, an adaptive multi-scale attention enhancement module was introduced to strengthen the correlation between microstructure images at different magnifications, ensuring that the network effectively captures relevant information across scales. Secondly, to strengthen the extraction of texture features, a TripletAttention module was introduced in the residual structure of the last layer of the network, thus enhancing the attention to details. Finally, the multi-scale feature fusion module was used to dynamically adjust the multi-scale feature fusion, so that the network captures more effective features. The experimental results show that the method proposed in the study is able to accurately classify the metallurgical structure of single-phase, two-phase, three-phase, and four-phase in a total of 20 categories, with an accuracy rate of 95.53%. Compared with the original Res2net50 model, the accuracy is improved by 5.28%, the F1-Score is improved by 6.86%, and the recall rate of three-phase and four-phase structure are significantly improved. These results validate the strong discriminative power of the method for complex multi-phase structures.

Key words: microstructure, multi-scale feature fusion, intelligent recognition, multi-scale attention

CLC Number: