Journal of Systems Engineering and Electronics ›› 2023, Vol. 34 ›› Issue (5): 1182-1190.doi: 10.23919/JSEE.2023.000126
• Defence Electronics Technology • Previous Articles Next Articles
Received:
2021-11-16
Online:
2023-10-18
Published:
2023-10-30
Contact:
Xindong ZHANG
E-mail:jintao019@163.com;xindong@jlu.edu.cn
About author:
Tao JIN, Xindong ZHANG. Radar emitter signal recognition method based on improved collaborative semi-supervised learning[J]. Journal of Systems Engineering and Electronics, 2023, 34(5): 1182-1190.
Table 1
Main contents of the algorithm"
Attribute | Content |
Algorithm name | Improved cooperative semi-supervised learning classification algorithm |
Classification object | Eight kinds of radar radiation source sequence data |
Algorithm objectives | Use a small amount of labeled data and a large amount of unlabeled data to achieve the effect of supervised recognition |
Major innovations | Improving the activation function to improve the recognition accuracy, while reducing the network time consumption without reducing the classification accuracy by DTW technique |
Classification networks | CNN, TCN, CTA networks |
Algorithm flow | The similarity between labeled and unlabeled data is calculated in groups for filtering, and then the initially trained classification network model is used to judge each unlabeled data |
Table 2
Main parameters of signal"
Signal | Main parameter | Value |
BPSK | Barker code digits | {7,11,13} |
Multi-phase code | Number of code bits | {36,64} |
FMCW | Sampling frequency/kHz | {15,17} |
Modulation period/ms | {50,25,35} | |
Modulation bandwidth/kHz | {0.25,0.35,0.5} | |
Costas | Frequency sequences/kHz | {[4 7 1 6 5 2 3], [2 6 3 8 7 5 1]} |
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