Systems Engineering and Electronics ›› 2022, Vol. 44 ›› Issue (7): 2319-2328.doi: 10.12305/j.issn.1001-506X.2022.07.29
• Communications and Networks • Previous Articles Next Articles
Ying KANG1,2, Zhihua ZHAO1,2, Hao WU1,2,*, Yaxing LI1,2, Jin MENG1,2
Received:
2021-05-21
Online:
2022-06-22
Published:
2022-06-28
Contact:
Hao WU
CLC Number:
Ying KANG, Zhihua ZHAO, Hao WU, Yaxing LI, Jin MENG. Deep SVDD-based anomaly detection method for communication signals[J]. Systems Engineering and Electronics, 2022, 44(7): 2319-2328.
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[1] | WU Hao, ZHOU Liang, LI Yaxing, GUO Yu, MENG Jin. Modulation classification based on convolutional neural network and sparse filtering [J]. Systems Engineering and Electronics, 2019, 41(9): 2114-2121. |
[2] | YUAN Lifen, NING Shuguang, HE Yigang, LYU Mi, LU Jian. Modulation recognition method based on high-order cumulant feature learning [J]. Systems Engineering and Electronics, 2019, 41(9): 2122-2131. |
[3] | JIN Xiao-yan, ZHOU Xi-yuan. Fast algorithm for maximum likelihood modulation classification [J]. Journal of Systems Engineering and Electronics, 2013, 35(3): 615-618. |
[4] | ZHOU Xin, WU Ying. Signal modulation recognition based on KPCA and LDA [J]. Journal of Systems Engineering and Electronics, 2011, 33(7): 1611-1616. |
[5] |
CHENG Han-wen1, CHEN Liang2, WU Le-nan3.
Weighted voting based on decision fusion for modulation classification of multisystems [J]. Journal of Systems Engineering and Electronics, 2010, 32(2): 342-345. |
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