圖像自動增強與注意力機制深度學(xué)習(xí)的MIG焊縫跟蹤系統(tǒng)
MIG weld seam tracking system based on image automatic enhancement and attention mechanism deep learning
ZHU Ming1,2,LEI Runji1,WENG Jun1 ,WANG Jincheng1, SHI Yu1, 2 (1.State KeyLaboratoryof Advanced Procesing and Recycling of Non-ferrous Metals,Lanzhou Universityof Technology, Lanzhou 73Oo5O,China;2. Key Laboratory of Non-ferous Metal Alloys and Processing of State Education Ministry, Lanzhou University of Technology,Lanzhou 730o5O,China)
Abstract:Aiming at the problem that conventional MIG welding is diffcult to adjust the welding position in real time according to the group deviation and thermal accumulation deformation,a weld seam tracking method based on passive vision is proposed. Through the image spatial domain filtering and automatic enhancement algorithm, the YOLO v7 deep learning model with attention mechanism is used to extract and analyze the groove alignment position andarc position in theregion of interest inreal time.The fuzzy control algorithm isused to control the MIG welding processin real time when the preset deviation occurs. The results show that,the image automatic enhancement algorithm is used to complete the preprocesing of the image,and the pixel gray value of the edge position is increased from 40 to about110,which significantly improves the accuracy of the edge position information extraction;Based on the YOLO v7 network structure,the attntion mechanism module is added to improve the eficiency of target detection,and the mAP index is as high as 99.27% .The preset deviation test shows thatthe pixel errorof the alignment deviation detection is within8 pixels,and thealignment deviation distance is controlled between ±0.5 mm.
Key words: weld tracking;passive vision; image enhancement; deep learning
0 前言
在工程實踐中,由于焊件的坡口加工、組對與熱積累變形等造成的偏差,會引起間隙、錯邊的不規(guī)則變化,并嚴(yán)重影響了焊接過程的穩(wěn)定性與焊縫質(zhì)量[1]。(剩余4193字)