Journal of Terahertz Science and Electronic Information Technology , Volume. 20, Issue 12, 1285(2022)
Open set recognition of specific emitter identification based on deep auto-encoder
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LIN Ziyu, WANG Xiang, SUN Liting, KE Da, LIU Zheng. Open set recognition of specific emitter identification based on deep auto-encoder[J]. Journal of Terahertz Science and Electronic Information Technology , 2022, 20(12): 1285
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Received: Mar. 4, 2020
Accepted: --
Published Online: Feb. 17, 2023
The Author Email: Ziyu LIN (linziyumail@foxmail.com)