A small sample data-driven radar compound jamming lightweight perception network

被引:0
|
作者
Lang B. [1 ]
Wang H. [2 ]
Gong J. [1 ]
机构
[1] School of Air Defense and Antimissile, Air Force Engineering University, Xi'an
[2] Xi'an Huanghe Electromechanical Co.,Ltd, Xi'an
关键词
compound jamming; deep learning; lightweight network; radar jamming perception; small sample data drive;
D O I
10.13700/j.bh.1001-5965.2022.0343
中图分类号
学科分类号
摘要
Radar jamming perception technology based on deep learning can accurately perceive all kinds of radar jamming types, but large-scale and complete training samples need to be constructed in advance. The workload and difficulty of data set construction are large. At the same time, there are some problems such as a large amount of network model parameters and high computational complexity, which make it difficult to apply in the actual platform. This research proposes a lightweight perception network powered by tiny sample data for radar compound jamming in order to overcome this challenge. For the first time, the jamming perception network is established combined with the idea of "target detection" in the field of computer vision. The multi-scale feature map is extracted by using the radar jamming time-frequency distribution data, and the anchor is preset for regression and classification. Secondly, the network structure with large parameters and high computational load is lightweight and improved by using group convolution and ghost convolution. The experimental results show that only a small-scale single jamming mode sample training can realize the flexible perception of single jamming mode, pairwise compound mode and three types of compound mode. The model has a considerably compressed number of parameters and processes while maintaining strong perception performance in the case of a low jamming noise ratio. © 2024 Beijing University of Aeronautics and Astronautics (BUAA). All rights reserved.
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页码:1005 / 1014
页数:9
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