激光与光电子学进展, 2019, 56 (4): 040002, 网络出版: 2019-07-31   

三维点云场景数据获取及其场景理解关键技术综述 下载: 2400次

3D Point Cloud Scene Data Acquisition and Its Key Technologies for Scene Understanding
作者单位
1 东北大学信息科学与工程学院, 辽宁 沈阳 110819
2 河北交通职业技术学院电气与信息工程系, 河北 石家庄 050091
3 北京师范大学遥感科学国家重点实验室, 北京 100875
引用该论文

李勇, 佟国峰, 杨景超, 张立强, 彭浩, 高华帅. 三维点云场景数据获取及其场景理解关键技术综述[J]. 激光与光电子学进展, 2019, 56(4): 040002.

Yong Li, Guofeng Tong, Jingchao Yang, Liqiang Zhang, Hao Peng, Huashuai Gao. 3D Point Cloud Scene Data Acquisition and Its Key Technologies for Scene Understanding[J]. Laser & Optoelectronics Progress, 2019, 56(4): 040002.

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李勇, 佟国峰, 杨景超, 张立强, 彭浩, 高华帅. 三维点云场景数据获取及其场景理解关键技术综述[J]. 激光与光电子学进展, 2019, 56(4): 040002. Yong Li, Guofeng Tong, Jingchao Yang, Liqiang Zhang, Hao Peng, Huashuai Gao. 3D Point Cloud Scene Data Acquisition and Its Key Technologies for Scene Understanding[J]. Laser & Optoelectronics Progress, 2019, 56(4): 040002.

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