Laser & Optoelectronics Progress, Volume. 60, Issue 22, 2210009(2023)
YOLOv5-Based Lightweight Algorithm for Detecting Bottle-Cap Packaging Defects
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Lei Zhao, Likuan Jiao, Ran Zhai, Bin Li, Meiye Xu. YOLOv5-Based Lightweight Algorithm for Detecting Bottle-Cap Packaging Defects[J]. Laser & Optoelectronics Progress, 2023, 60(22): 2210009
Category: Image Processing
Received: May. 6, 2023
Accepted: Jun. 25, 2023
Published Online: Nov. 6, 2023
The Author Email: Zhao Lei (leizhaotjut@163.com), Jiao Likuan (1913194980@qq.com)