Chinese Journal of Lasers, Volume. 51, Issue 10, 1002319(2024)
Powder‑Spreading Defect Detection in Laser Powder Bed Fusion Based on Large Vision Model
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Kunpeng Tan, Jiafeng Tang, Zhibin Zhao, Chenxi Wang, Xingwu Zhang, Weifeng He, Xuefeng Chen. Powder‑Spreading Defect Detection in Laser Powder Bed Fusion Based on Large Vision Model[J]. Chinese Journal of Lasers, 2024, 51(10): 1002319
Category: Laser Additive Manufacturing
Received: Jan. 2, 2024
Accepted: Mar. 6, 2024
Published Online: Apr. 27, 2024
The Author Email: Zhao Zhibin (zhaozhibin@xjtu.edu.cn)