Time-frequency Analysis and Convolutional Neural Network Based Fuze Jamming Signal Recognition

  • Yang, Jikai
  • Bai, Zhiquan
  • Hu, Jiacheng
  • Yang, Yingchao
  • Xian, Zhaoxia
  • 외 2명
Citations

WEB OF SCIENCE

6
Citations

SCOPUS

8

초록

Fuze jamming signal recognition plays a critical role in the battlefield environment. To improve the performance of fuze jamming signals detection, we propose a fuze jamming signal detector based on time-frequency analysis (TFA) and convolutional neural network (CNN), called TFA-CNN, in this paper. The detailed recognition process of the proposed TFACNN detector is provided, where the short-time Fourier transform (STFT) is first employed to convert the original jammed fuze signals into the time-frequency images and then the TFACNN detector is built to train the recognition model. Simulation results verify that the TFA-CNN detector outperforms the typical existing recognition detectors, such as LeNet, time-frequency images and convolutional neural network (TFI-CNN) and deep neural network (DNN), in the detection performance with a slightly higher time complexity. Specially, the average recognition accuracy of the proposed detector achieves 99.8% even at a low signal-to-interference-plus-noise ratio (SINR).

키워드

fuzeCNNSTFTimageaccuracy
제목
Time-frequency Analysis and Convolutional Neural Network Based Fuze Jamming Signal Recognition
저자
Yang, JikaiBai, ZhiquanHu, JiachengYang, YingchaoXian, ZhaoxiaHao, XinhongKwak, KyungSup
DOI
10.23919/ICACT56868.2023.10079346
발행일
2023
유형
Proceedings Paper
저널명
International Conference on Advanced Communication Technology, ICACT
페이지
277 ~ 282