[1] TANG D L, LONG Z Y, TANG Y J, et al. Complete coverage path planning of oil tank detection wall climbing robot [J]. Chinese Journal of Engineering Design, 2020, 27(2): 162-171 (in Chinese).
[2] YANG Z L, WAN Y, WANG Y, et al. Analysis of safety and stability of wall-climbing robot [J]. Science Technology and Engineering, 2020, 20(15): 6113-6121 (in Chinese).
[3] SHU J J, WANG Q, HE Y Y, et al. Design of weld identification and inspection wall-climbing robot for large spherical tank container [J]. Hot Working Technology, 2020, 49(11): 127-131 (in Chinese).
[4] XIAO R H, CHENG Y X, JIANG Z Z, et al. Design of adsorption mechanism for rust-removing wall-climbing robot on the oil tank’s inner wall [J]. Journal of Machine Design, 2019, 36(7): 21-26 (in Chinese).
[5] LYU Z, ZHANG C, ZHONG G, et al. Kinematics analysis and simulation of a quadruped magnetic adsorption wall-climbing robot [J]. Advanced Engineering Sciences, 2020, 52(2): 121-129 (in Chinese).
[6] WANG W, GAO C, ZHANG X, et al. Analysis and simulation of permanent magnet adsorption characteristics of lightweight wall-climbing robot [J]. Manufacturing Automation, 2020, 42(12): 23-27 (in Chinese).
[7] LIU Y W, WANG L M, LIU S W, et al. Design and analysis of an inchworm-inspired wall-climbing robot [J]. Journal of Mechanical Transmission, 2019, 43(8): 87-91 (in Chinese).
[8] ZHUANG Y, TENG H, XU T, et al. Obstacle avoidance control of wall-climbing robot based on degraded fuzzy algorithms [J]. Science Technology and Engineering, 2020, 20(19): 7729-7736 (in Chinese).
[9] LU J, ZHU H, LIANG J, et al. Global path planning for a biped wall-climbing robot in 3D wall environment [J]. Journal of Harbin Institute of Technology, 2020, 52(1): 148-155 (in Chinese).
[10] TENG H, ZHUANG Y, DENG S, et al. Doubleloop trajectory tracking control of wall-climbing robot based on global stability [J]. Computer Engineering and Design, 2020, 41(9): 2636-2642 (in Chinese).
[11] REDMON J, DIVVALA S, GIRSHICK R, et al. You only look once: Unified, real-time object detection [C]//2016 IEEE Conference on Computer Vision and Pattern Recognition. Las Vegas: IEEE, 2016: 779-788.
[12] SUN X, HAO H, LIU Y, et al. Application of YOLOv4 in power inspection target detection [J]. Modern Information Technology, 2020, 4(20): 115-117 (in Chinese).
[13] TANG X, HUANG J, FENG J, et al. Image segmentation and defect detection of insulators based on U-net and YOLOv4 [J]. Journal of South China Normal University (Natural Science Edition), 2020, 52(6): 15-21 (in Chinese).
[14] DU X, CHEN D, LIU H, et al. Real-time hand tracking based on YOLOv4 model and Kalman filter [J]. The Journal of China Universities of Posts and Telecommunications, 2021, 28(3): 86-94.
[15] BOCHKOVSKIY A, WANG C Y, LIAO H Y M. YOLOv4: Optimal speed and accuracy of object detection [DB/OL]. (2020-04-23). https://arxiv.org/abs/2004.10934.
[16] LI B, WANG C, WU J, et al. Surface defect detection of aeroengine components based on improved YOLOv4 algorithm [J]. Laser & Optoelectronics Progress, 2021, 58(14): 406-415 (in Chinese).
[17] XIE Y, ZHANG P. Small target detection of transmission line based on improved YOLOv4 [J]. Foreign Electronic Measurement Technology, 2021, 40(2): 47-51 (in Chinese).
[18] CAI S, SUN Z, LIU H, et al. Real-time detection methodology for obstacles in orchards using improved YOLOv4 [J]. Transactions of the Chinese Society of Agricultural Engineering, 2021, 37(2): 36-43 (in Chinese).
[19] ZHANG K, LUO X, SUN Z, et al. Generator stator surface defect detection algorithm based on lightweight YOLOv4 [J]. Computer and Digital Engineering, 2021, 49(4): 686-691 (in Chinese).
[20] WANG B, LE H, LI W, et al. Mask detection algorithm based on improved YOLO lightweight network [J]. Computer Engineering and Applications, 2021, 57(8): 62-69 (in Chinese).
[21] CAO Y, GAO Y. Lightweight beverage recognition network based on Ghostnet residual structure [J]. Computer Engineering, 2022, 48(3): 310-314 (in Chinese).
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