Chinese Journal of Lasers, Volume. 51, Issue 4, 0402105(2024)
Intelligent Online Detection of Laser Welding Defects Based on High Density Point Clouds (Invited)
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Chen Zhang, Peipei Hu, Xinwang Zhu, Changqi Yang. Intelligent Online Detection of Laser Welding Defects Based on High Density Point Clouds (Invited)[J]. Chinese Journal of Lasers, 2024, 51(4): 0402105
Category: Laser Forming Manufacturing
Received: Oct. 16, 2023
Accepted: Nov. 27, 2023
Published Online: Feb. 19, 2024
The Author Email: Zhang Chen (c.zhang@whu.edu.cn)
CSTR:32183.14.CJL231293