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Acta Armamentarii ›› 2023, Vol. 44 ›› Issue (8): 2319-2328.doi: 10.12382/bgxb.2022.0412

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Newly Equipped Armored Vehicle Classification Based on Integrated Transfer Learning

LIU Yi, REN Jihuan, WU Xiang*(), BO Yuming   

  1. School of Automation, Nanjing University of Science and Technology, Nanjing 210094, Jiangsu, China
  • Received:2022-05-19 Online:2023-08-30
  • Contact: WU Xiang

Abstract:

In complicated land warfare environments, image classification techniques is an important tool to quickly distinguish armored vehicle targets. To address the problem that the existing mainstream classification algorithms based on Convolutional Neural Network (CNN) have high requirements for the number and quality of training samples and perform with insufficient accuracy in the image classification task of newly equipped armored vehicles, a transfer learning method that integrates two CNNs based on different learning strategies is proposed. Specifically, one CNN is pre-trained on an old-fashioned armored vehicle image dataset whose samples can be easily obtained and have sufficient quantity to learn local detail features. The other CNN is pre-trained on the dataset of virtual images of the newly equipped armored vehicles with a low image quality to learn the global features. The pre-trained CNNs are all fine-tuned according to different strategies using a limited number of real samples of newly equipped armored vehicles to improve the characterization capability. A self-learning model integration mechanism based on the Optuna hyperparametric optimization framework is designed, which can autonomously weight the outputs of the two CNNs for optimization and further improve the classification accuracy of the algorithm. The experimental results show that the accuracy of the proposed algorithm is improved by 7% in the image classification task of newly equipped armored vehicles compared with the same model trained from scratch, which effectively alleviates the problem of insufficient training samples.

Key words: transfer learning, convolutional neural network, armored vehicles, feature extraction, model integration mechanism

CLC Number: