光学 精密工程, 2017, 25 (11): 2939, 网络出版: 2018-01-17   

基于多波段深度神经网络的舰船目标识别

Ship recognition based on multi-band deep neural network
作者单位
1 海军航空工程学院 控制工程系,山东 烟台 264001
2 中国国防科技信息中心,北京 100142
3 91206部队,山东 青岛 266108
引用该论文

刘峰, 沈同圣, 马新星, 张健. 基于多波段深度神经网络的舰船目标识别[J]. 光学 精密工程, 2017, 25(11): 2939.

LIU Feng, SHEN Tong-sheng, MA Xin-xing, ZHANG Jian. Ship recognition based on multi-band deep neural network[J]. Optics and Precision Engineering, 2017, 25(11): 2939.

参考文献

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刘峰, 沈同圣, 马新星, 张健. 基于多波段深度神经网络的舰船目标识别[J]. 光学 精密工程, 2017, 25(11): 2939. LIU Feng, SHEN Tong-sheng, MA Xin-xing, ZHANG Jian. Ship recognition based on multi-band deep neural network[J]. Optics and Precision Engineering, 2017, 25(11): 2939.

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