激光与光电子学进展, 2019, 56 (13): 131009, 网络出版: 2019-07-11   

基于改进Faster RCNN的毫米波图像实时目标检测 下载: 992次

Real-Time Object Detection for Millimeter-Wave Images Based on Improved Faster Regions with Convolutional Neural Networks
作者单位
1 中国科学院上海微系统与信息技术研究所太赫兹固态技术重点实验室, 上海 200050
2 中国科学院大学, 北京 100049
3 上海科技大学信息科学与技术学院, 上海 201210
引用该论文

侯冰基, 杨明辉, 孙晓玮. 基于改进Faster RCNN的毫米波图像实时目标检测[J]. 激光与光电子学进展, 2019, 56(13): 131009.

Bingji Hou, Minghui Yang, Xiaowei Sun. Real-Time Object Detection for Millimeter-Wave Images Based on Improved Faster Regions with Convolutional Neural Networks[J]. Laser & Optoelectronics Progress, 2019, 56(13): 131009.

参考文献

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侯冰基, 杨明辉, 孙晓玮. 基于改进Faster RCNN的毫米波图像实时目标检测[J]. 激光与光电子学进展, 2019, 56(13): 131009. Bingji Hou, Minghui Yang, Xiaowei Sun. Real-Time Object Detection for Millimeter-Wave Images Based on Improved Faster Regions with Convolutional Neural Networks[J]. Laser & Optoelectronics Progress, 2019, 56(13): 131009.

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