中国激光, 2019, 46 (4): 0404013, 网络出版: 2019-05-09   

基于深度学习的车位智能检测方法 下载: 1580次

Method for Intelligent Detection of Parking Spaces Based on Deep Learning
作者单位
1 武汉理工大学资源与环境工程学院, 湖北 武汉 430079
2 重庆市计量质量检测研究院, 重庆 401120
3 武汉理工大学图书馆, 湖北 武汉 430079
引用该论文

徐乐先, 陈西江, 班亚, 黄丹. 基于深度学习的车位智能检测方法[J]. 中国激光, 2019, 46(4): 0404013.

Lexian Xu, Xijiang Chen, Ya Ban, Dan Huang. Method for Intelligent Detection of Parking Spaces Based on Deep Learning[J]. Chinese Journal of Lasers, 2019, 46(4): 0404013.

参考文献

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徐乐先, 陈西江, 班亚, 黄丹. 基于深度学习的车位智能检测方法[J]. 中国激光, 2019, 46(4): 0404013. Lexian Xu, Xijiang Chen, Ya Ban, Dan Huang. Method for Intelligent Detection of Parking Spaces Based on Deep Learning[J]. Chinese Journal of Lasers, 2019, 46(4): 0404013.

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