Chinese Journal of Lasers, Volume. 48, Issue 17, 1710004(2021)
Deep Learning Based on Semantic Segmentation for Three-Dimensional Object Detection from Point Clouds
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Liang Zhao, Jie Hu, Han Liu, Yongpeng An, Zongquan Xiong, Yu Wang. Deep Learning Based on Semantic Segmentation for Three-Dimensional Object Detection from Point Clouds[J]. Chinese Journal of Lasers, 2021, 48(17): 1710004
Received: Jan. 11, 2021
Accepted: Mar. 9, 2021
Published Online: Sep. 4, 2021
The Author Email: Hu Jie (auto_hj@163.com)