Welcome to Acta Armamentarii ! Today is

Acta Armamentarii ›› 2024, Vol. 45 ›› Issue (12): 4259-4271.doi: 10.12382/bgxb.2023.1215

Previous Articles     Next Articles

Research on the Identification of Spherical Explosive Fragmentation Damage Effect Based on Siamese Networks and Regional Attention Mechanisms

LI Haotian1,2, CUI Xinyu1,2, LIU Mengzhen1,2, HUANG Guangyan1,2,3, LÜ Zhongjie1, ZHANG hong1,2,3,*()   

  1. 1 State Key Laboratory of Explosion Science and Safety Protection, Beijing Institute of Technology, Beijing 100081, China
    2 Modern Weapon Technology Laboratory, Chongqing Innovation Center of Beijing Institute of Technology, Chongqing 401120, China
    3 Explosion Protection and Emergency Disposal Technology Engineering Research Center of the Ministry of Education, Beijing Institute of Technology, Beijing 100081, China
  • Received:2023-12-27 Online:2024-12-30
  • Contact: ZHANG hong

Abstract:

In the information warfare, the damage assessment of explosive fragments is of great significance to achieve accurate strike. However, the manual acquisition of distribution and geometric information of damage areas are inefficient in the damage experiment. To this end, a lightweight image segmentation model based on siamese networks and regional attention mechanisms is proposed, which achieves the efficient and accurate recognition of small-targeted spherical explosive fragmentation damage area under small samples. The model’s ability to perceive the explosion holes is improved by introducing the siamese structure, regional attention module and multi-scale convolution module. A loss function with multiple constraints is added and the best optimizer is screened so that the model optimization is more focused on the effective information for accelerating the model convergence. A quantitative detection method for the damaged area based on the connected-domain fusion watershed algorithm is proposed to achieve the accurate identification of the overlapping case of explosion broken holes. Experimental results show that the proposed method achieves higher efficiency and accuracy compared with the current mainstream models, and the average errors in predicting the area and diameter of damage region are 4.78% and 3.79%, respectively. The research work provides a reference for realizing the intelligent damage assessment of explosives containing fragments.

Key words: siamese network, damage effect assessment, damage recognition, regional attention mechanism, multi-scale convolution

CLC Number: