LI Guangyao, LIU Xiao, LAI Ming, JIANG Hao, CUI Junjia. Research on Intelligent Crimping Depth Detection Algorithm for Magnetic Pulse Crimping Pipe Based on Adaptive Vision. Aeronautical Manufacturing Technology, 2022, 65(7): 54-63.
LI Guangyao, LIU Xiao, LAI Ming, JIANG Hao, CUI Junjia. Research on Intelligent Crimping Depth Detection Algorithm for Magnetic Pulse Crimping Pipe Based on Adaptive Vision. Aeronautical Manufacturing Technology, 2022, 65(7): 54-63. DOI: 10.16080/j.issn1671-833x.2022.07.054.
Research on Intelligent Crimping Depth Detection Algorithm for Magnetic Pulse Crimping Pipe Based on Adaptive Vision
Magnetic pulse crimping technology has high forming speed and efficiency
and is suitable for the connection of high strength steel and aluminum
carbon fiber or other lightweight materials. It has wide application prospect in aircraft industry. However
there are few online detection methods for magnetic pulse crimping pipe
which is not conducive to realize automated production of the technology. A visual detection method based on improved YOLOv4–Tiny (You only look once v4–Tiny) detection network and adaptive image processing was proposed to meet the requirement of online detection of crimping quality of magnetic pulse pressure tubing. Efficient channel attention (ECA) module was introduced to improve the YOLOv4–Tiny detection network
and an adaptive crimping depth extraction algorithm was designed based on adaptive threshold segmentation algorithm and Canny edge detection algorithm. A batch of magnetic pulse crimping pipes images were collected in a simulated industrial environment and were divided into training set and verification set. Finally
the algorithm was trained with the training data set
and the detection model obtained by training was verified by the verification set. The average precision (AP@0.5) of the crimping area detection model is 100% when the intersection ratio threshold is 0.5
and the average precision (AP@0.5:0.8) is 93.14% when the intersection ratio threshold is 0.5
0.6
0.7 and 0.8
and the running time per frame is 1.66ms. For image processing edge extraction algorithm
verification results show that the average deviation is 0.85 pixels
the maximum deviation is 2.6 pixels
and the running time of a single frame is 3.49ms. The average deviation of the whole crimping depth detection algorithm is 0.313 pixels
the mean square error is 0.115 square pixels
the deviation ratio is 1.35%
and the running time of a single frame is 124.49ms. In conclusion
the proposed algorithm can accurately and quickly extract the crimping depth of magnetic pulse crimping pipe without additional positioning. The algorithm has low deployment cost
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Related Author
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XIAO Ruru
LIAO Yuxuan
LI Guangyao
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WANG Wei
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Related Institution
Shenzhen Automotive Research Institute (Shenzhen Research Institute of National Engineering Laboratory for Electric Vehicles), Beijing Institute of Technology
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