| Citation: | CHEN Feiqi, XUE Jiang, LU Peng, WANG Jian, DING Daiwei. Advances in Key Technologies for Steel Structure Operation and Maintenance Based on Machine Vision[J]. INDUSTRIAL CONSTRUCTION, 2025, 55(7): 131-142. doi: 10.3724/j.gyjzG25031702 |
| [1] |
周红波,高文杰,黄誉. 钢结构事故案例统计分析[J]. 钢结构,2008,23(6):28-31.
|
| [2] |
CHA Y J,YOU K,CHOI W. Vision-based detection of loosened bolts using the Hough transform and support vector machines[J]. Automation in Construction,2016,71:181-188.
|
| [3] |
NGUYEN T C,HUYNH T C,RYU J Y,et al. Bolt-loosening identification of bolt connections by vision image-based technique[C]// Nondestructive Characterization and Monitoring of Advanced Materials,Aerospace,and Civil Infrastructure 2016. Bellingham:SPIE,2016:227-243.
|
| [4] |
ZHAO X,ZHANG Y,WANG N. Bolt loosening angle detection technology using deep learning[J]. Structural Control and Health Monitoring,2019,26(1),e2292.
|
| [5] |
LAO W,CUI C,ZHANG D,et al. Computer vision‐based autonomous method for quantitative detection of loose bolts in bolted connections of steel structures[J]. Structural Control and Health Monitoring,2023,30(1),8817058.
|
| [6] |
周明涛,张永敬. 基于3D点云和深度学习的动车组螺栓松动智能检测研究[J]. 智慧轨道交通,2022,59(6
):62-66.
|
| [7] |
赵欣欣,钱胜胜,刘晓光. 基于卷积神经网络的铁路桥梁高强螺栓缺失图像识别方法[J]. 中国铁道科学,2018,39(4):56-62.
|
| [8] |
卓德兵. 基于计算机听觉与视觉技术的钢桁架螺栓连接损伤检测研究[D]. 重庆:重庆大学,2021.
|
| [9] |
张洪,朱志伟,胡天宇,等. 基于改进YOLOv5s的桥梁螺栓缺陷识别方法[J]. 吉林大学学报(工学版),2024,54(3):749-760.
|
| [10] |
LUO P,WANG B,WANG H,et al. An ultrasmall bolt defect detection method for transmission line inspection[J]. IEEE Transactions on Instrumentation and Measurement,2023,72:1-12.
|
| [11] |
崔闯,罗纯坤,邱师津,等. 基于数据深度增强的钢桥螺栓脱落智能检测方法研究[J]. 桥梁建设,2024,54(2):39-47.
|
| [12] |
王域辰,冯海龙,刘伯奇. 基于YOLO算法的高速铁路客运车站钢结构雨棚螺栓缺失检测系统[J]. 铁道学报,2023,45(12):1-10.
|
| [13] |
LIU B,ZHANG X,GAO Z,et al. Weld defect images classification with vgg16-based neural network[C]// International Forum on Digital TV and Wireless Multimedia Communications. Singapore:Springer Singapore,2017:215-223.
|
| [14] |
MA G,YU L,YUAN H,et al. A vision-based method for lap weld defects monitoring of galvanized steel sheets using convolutional neural network[J]. Journal of Manufacturing Processes,2021,64:130-139.
|
| [15] |
CHEN Y,WANG J,WANG G. Intelligent welding defect detection model on improved r-cnn[J]. IETE Journal of Research,2023,69(12):9235-9244.
|
| [16] |
JI C,WANG H,LI H. Defects detection in weld joints based on visual attention and deep learning[J]. NDT& E International,2023,133,102764.
|
| [17] |
WANG J,MU C,MU S,et al. Welding seam detection and location:deep learning network-based approach[J]. International Journal of Pressure Vessels and Piping,2023,202,104893.
|
| [18] |
JI W,LUO Z,LUO K,et al. Computer vision-based surface defect identification method for weld images[J]. Materials Letters,2024,325,136972.
|
| [19] |
KUMAR D D,FANG C,ZHENG Y,et al. Semi-supervised transfer learning-based automatic weld defect detection and visual inspection[J]. Engineering Structures,2023,292,116580.
|
| [20] |
GUO W,LIU K,QU H. Welding defect detection of X-ray images based on Faster R-CNN model[J]. Journal of Beijing University of Posts and Telecommunications,2019,42(6):20-29.
|
| [21] |
ROCA B F,DHIERRO P J,RIBES L F,et al. Development of an ultrasonic weld inspection system based on image processing and neural networks[J]. Nondestructive Testing and Evaluation,2017,32(7):678-692.
|
| [22] |
BUONGIORNO D,PRUNELLA M,GROSSI S,et al. Inline defective laser weld identification by processing thermal image sequences with machine and deep learning techniques[J]. Applied Sciences,2022,12(12),6455.
|
| [23] |
HAN Y,FAN J,YANG X. A structured light vision sensor for on-line weld bead measurement and weld quality inspection[J]. International Journal of Advanced Manufacturing Technology,2019,102(9):2055-2065.
|
| [24] |
赵亚波,王智. 基于三维激光点云的钢结构变形分析[J]. 测绘通报,2021,(5):155-158.
|
| [25] |
LIU Y F,LIU X G,FAN J S,et al. Refined safety assessment of steel grid structures with crooked tubular members[J]. Automation in Construction,2019,99:249-264.
|
| [26] |
诸宏博,谢忠,傅林峰. 三维激光扫描技术在钢结构检测技术中的应用研究[J]. 建筑结构,2023,53(增刊2):1739-1743.
|
| [27] |
WEI X C,FAN J S,LIU Y F,et al. Automated inspection and monitoring of member deformation in grid structures[J]. Computer-Aided Civil and Infrastructure Engineering,2022,37(10):1277-1297.
|
| [28] |
XU M N,SUN L M,LIU Y F,et al. Member separation and deformation recognition of spatial grid structures in-service[J]. Engineering Structures,2024,304,117642.
|
| [29] |
WANG J T,LIU Y F,LIU X G,et al. Photogrammetry-based bending monitoring and load identification of steel truss structures[J]. Advances in Structural Engineering,2023,26(13):2543-2561.
|
| [30] |
LYDON D,LYDON M,TAYLOR S,et al. Development and field testing of a vision-based displacement system using a low cost wireless action camera[J]. Mechanical Systems and Signal Processing,2019,121:343-358.
|
| [31] |
KROMANIS R,KRIPAKARAN P. A multiple camera position approach for accurate displacement measurement using computer vision[J]. Journal of Civil Structural Health Monitoring,2021,11(3):661-678.
|
| [32] |
HAGIWARA T,SHIMAMOTO Y,SUZUKI T. Non-contact detection of degradation of in-service steel sheet piles due to buckling phenomena by using digital image analysis with Hough transform[J]. Frontiers in Built Environment,2022,8,948232.
|
| [33] |
KHAYATAZAD M,DE P L,DE W W. Detection of corrosion on steel structures using automated image processing[J]. Developments in the Built Environment,2020,3,100022.
|
| [34] |
VOROBEL R,IVASENKO I,BEREHULYAK O,et al. Segmentation of rust defects on painted steel surfaces by intelligent image analysis[J]. Automation in Construction,2021,123,103515.
|
| [35] |
FONDEVIK S K,STAHL A,TRANSETH A A,et al. Image segmentation of corrosion damages in industrial inspections[C]// 2020 IEEE 32nd International Conference on Tools with Artificial Intelligence(ICTAI). Los Alamitos:IEEE Computer Society,2020:787-792.
|
| [36] |
TIAN Z,ZHANG G,LIAO Y,et al. Corrosion identification of fittings based on computer vision[C]// 2019 International Conference on Artificial Intelligence and Advanced Manufacturing(AIAM). New York:IEEE,2019:592-597.
|
| [37] |
PAN F. Corrosion detection method of substation aboveground steel structure based on deep learning[C]// 2022 7th Asia Conference on Power and Electrical Engineering(ACPEE). New York:IEEE,2022:2234-2238.
|
| [38] |
HUANG I F,CHEN P H. Automated steel bridge coating rust defect recognition method based on U-net fully convolutional networks[C]// 2020 IEEE 2nd International Conference on Architecture,Construction,Environment and Hydraulics(ICACEH). New York:IEEE,2020:18-21.
|
| [39] |
CHEN Q,WEN X,LU S,et al. Corrosion detection for large steel structure base on uav integrated with image processing system[C]// IOP Conference Series:Materials Science and Engineering. Bristol:IOP Publishing,2019,608(1),012020.
|
| [40] |
HAN Q,ZHAO N,XU J. Recognition and location of steel structure surface corrosion based on unmanned aerial vehicle images[J]. Journal of Civil Structural Health Monitoring,2021,11(5):1375-1392.
|
| [41] |
NASH W,ZHENG L,BIRBILIS N. Deep learning corrosion detection with confidence[J]. NPG Materials Degradation,2022,6(1),26.
|
| [42] |
KATSAMENIS I,PROTOPAPADAKIS E,DOULAMIS A,et al. Pixel-level corrosion detection on metal constructions by fusion of deep learning semantic and contour segmentation[C]// International Symposium on Visual Computing. Cham:Springer International Publishing,2020:160-169.
|
| [43] |
KHAYATAZAD M,HONHON M D W W. Detection of corrosion on steel structures using an artificial neural network[J]. Structure and Infrastructure Engineering,2023,19(12):1860-1871.
|
| [44] |
DAS A,DORAFSHAN S,KAABOUCH N. Autonomous image-based corrosion detection in steel structures using deep learning[J]. Sensors,2024,24(11),3630.
|
| [45] |
HATHOUT I,CALLERY K,HATHOUT T,et al. Digital image expert system for corrosion analysis of steel transmission structures[C]// 2017 IEEE Power& Energy Society General Meeting. New York:IEEE,2017:1-5.
|
| [46] |
逯鹏,赵天淞,王剑,等. 基于计算机视觉的钢结构表面锈蚀程度检测方法[J]. 工业建筑,2024,54(8):133-139.
|
| [47] |
WANG Y,SHEN X,WU K,et al. Corrosion grade recognition for weathering steel plate based on a convolutional neural network[J]. Measurement Science and Technology,2022,33(9),095014.
|
| [48] |
KATSAMENIS I,DOULAMIS N,DOULAMIS A,et al. Simultaneous precise localization and classification of metal rust defects for robotic-driven maintenance and prefabrication using residual attention U-Net[J]. Automation in Construction,2022,137,104182.
|
| [49] |
RAHMAN A,WU Z Y,KALFARISI R. Semantic deep learning integrated with RGB feature-based rule optimization for facility surface corrosion detection and evaluation[J]. Journal of Computing in Civil Engineering,2021,35(6),04021018.
|
| [50] |
ZHOU Q,DING S,FENG Y,et al. Corrosion inspection and evaluation of crane metal structure based on UAV vision[J]. Signal,Image and Video Processing,2022,16(6):1701-1709.
|
| [51] |
AMELI Z,NESHELI S J,LANDIS E N. Deep learning-based steel bridge corrosion segmentation and condition rating using Mask RCNN and YOLOv8[J]. Infrastructures,2023,9(1),3.
|