电光与控制, 2019, 26 (9): 90, 网络出版: 2021-01-31   

基于CNN的不平衡SAR图像舰船目标识别

CNN Based Ship Target Recognition of Imbalanced SAR Image
作者单位
海军航空大学, 山东 烟台 264001
引用该论文

邵嘉琪, 曲长文, 李健伟, 彭书娟. 基于CNN的不平衡SAR图像舰船目标识别[J]. 电光与控制, 2019, 26(9): 90.

SHAO Jiaqi, QU Changwen, LIJianwei, PENG Shujuan. CNN Based Ship Target Recognition of Imbalanced SAR Image[J]. Electronics Optics & Control, 2019, 26(9): 90.

参考文献

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邵嘉琪, 曲长文, 李健伟, 彭书娟. 基于CNN的不平衡SAR图像舰船目标识别[J]. 电光与控制, 2019, 26(9): 90. SHAO Jiaqi, QU Changwen, LIJianwei, PENG Shujuan. CNN Based Ship Target Recognition of Imbalanced SAR Image[J]. Electronics Optics & Control, 2019, 26(9): 90.

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