AEROSPACE SHANGHAI, Volume. 41, Issue 3, 121(2024)

A Multi-domain Feature-guided Method for Unsupervised Ship Detection in SAR Images

Liang CHEN*, Jianhao LI, Cheng HE, and Hao SHI
Author Affiliations
  • School of Information and Electronics,Beijing Institute of Technology,Beijing100081,China
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    Liang CHEN, Jianhao LI, Cheng HE, Hao SHI. A Multi-domain Feature-guided Method for Unsupervised Ship Detection in SAR Images[J]. AEROSPACE SHANGHAI, 2024, 41(3): 121

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    Paper Information

    Category: Innovation and Exploration

    Received: May. 6, 2024

    Accepted: --

    Published Online: Sep. 3, 2024

    The Author Email:

    DOI:10.19328/j.cnki.2096-8655.2024.03.013

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