计算机工程与应用 ›› 2024, Vol. 60 ›› Issue (1): 40-56.DOI: 10.3778/j.issn.1002-8331.2305-0154
何嘉彬,李雷孝,林浩,徐国新
出版日期:
2024-01-01
发布日期:
2024-01-01
HE Jiabin, LI Leixiao, LIN Hao, XU Guoxin
Online:
2024-01-01
Published:
2024-01-01
摘要: 公共场所吸烟严重危害人们身体健康甚至生命财产安全,因此实时高效的吸烟检测具有重要意义。目前基于计算机视觉的吸烟检测以高效率、高精度等优势逐渐成为主流方法。在对非计算机视觉的吸烟检测方法进行简要概述的基础上,重点归纳总结了三类基于计算机视觉的检测方法。探讨了颜色、外观、运动等多种烟雾特征的提取方法;介绍了基于单步骤和多步骤目标检测两种方法提取烟支目标;从人工特征构建、深度学习特征提取角度论述不同类型的吸烟动作特征提取方法。对上述方法进行分析总结并展望未来研究方向。
何嘉彬, 李雷孝, 林浩, 徐国新. 面向计算机视觉的吸烟检测方法研究综述[J]. 计算机工程与应用, 2024, 60(1): 40-56.
HE Jiabin, LI Leixiao, LIN Hao, XU Guoxin. Review of Smoking Detection Methods for Computer Vision[J]. Computer Engineering and Applications, 2024, 60(1): 40-56.
[1] JHA P. The hazards of smoking and the benefits of cessation: a critical summation of the epidemiological evidence in high-income countries[J]. Elife, 2020, 9: e49979. [2] WANG Z, JIANG K, HOU Y, et al. A survey on human behavior recognition using channel state information[J]. IEEE Access, 2019, 7: 155986-156024. [3] YANG X, TIAN Y L. Super normal vector for activity recognition using depth sequences[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. Piscataway, NJ: IEEE Press, 2014: 804-811. [4] MM S V, SIVARAMAKRISHNA M, CHITRAKKUMAR S. Design of an innovative smoke sensor and fire alarm panel[C]//2022 Third International Conference on Intelligent Computing Instrumentation and Control Technologies (ICICICT), Chengdu, 2022: 1365-1369. [5] IMTIAZ M H, RAMOS-GARCIA R I, WATTAL S, et al. Wearable sensors for monitoring of cigarette smoking in free-living: a systematic review[J]. Sensors, 2019, 19(21): 4678. [6] ZHENG X, WANG J, SHANGGUAN L, et al. Smokey: ubiquitous smoking detection with commercial WiFi infrastructures[C]//IEEE INFOCOM 2016-The 35th Annual IEEE International Conference on Computer Communications. San Francisco: IEEE, 2016: 1-9. [7] HAMEED H, AZAM N, USMAN M, et al. RF sensing for smoking detection at oil fields[C]//2022 IEEE International Symposium on Antennas and Propagation and USNC-URSI Radio Science Meeting (AP-S/URSI). Singapore: IEEE, 2022: 944-945. [8] XIE Y, LI F, WU Y, et al. HearSmoking: smoking detection in driving environment via acoustic sensing on smartphones[J]. IEEE Transactions on Mobile Computing, 2021, 21(8): 2847-2860. [9] ZHANG Q, LIU Y, YIN W, et al. The in situ detection of smoking in public area by laser-induced breakdown spectroscopy[J]. Chemosphere, 2020, 242: 125184. [10] ROSSEL P O, PAREDES L, BASCUR A, et al. SAS4P: providing automatic smoking detection for a persuasive smoking cessation application[J]. International Journal of Distributed Sensor Networks, 2019, 15(11): 15501. [11] SENYUREK V, IMTIAZ M, BELSARE P, et al. Cigarette smoking detection with an inertial sensor and a smart lighter[J]. Sensors, 2019, 19(3): 570. [12] KIRMIZIS A, KYRITSIS K, DELOPOULOS A. A bottom-up method towards the automatic and objective monitoring of smoking behavior in-the-wild using wrist-mounted inertial sensors[C]//2021 43rd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC) . NY: IEEE, 2021: 6867-6870. [13] IMTIAZ M H, SENYUREK V Y, BELSARE P, et al. Objective detection of cigarette smoking from physiological sensor signals[C]//2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC) . Germany: IEEE, 2019: 3563-3566. [14] RAMOS-GARCIA R I, SAZONOV E, TIFFANY S. Recognizing cigarette smoke inhalations using hidden Markov models[C]//2017 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), 2017: 1242-1245. [15] 潘广贞, 元琴, 樊彩霞, 等. 基于混合高斯模型和帧差法的吸烟检测算法[J]. 计算机工程与设计, 2015, 36(5): 1290-1294. PAN G Z, YUAN Q, FAN C X, et al. Cigarette-smoke detection based on Gaussian mixture model and frame difference[J]. Computer Engineering and Design, 2015, 36(5): 1290-1294. [16] 唐杰, 周洋, 杨萌, 等. 采用颜色混合模型和特征组合的视频烟雾检测[J]. 光电子激光, 2017, 28(7): 751-758. TANG J, ZHOU Y, YANG M, et al. A smoke detection algorithm using color mixture model and feature combination[J]. Journal of Optoelectronics·Laser, 2017, 28(7): 751-758. [17] 胡春海, 王晓婧, 刘斌, 等. 一种基于MI-Simba算法的香烟烟雾识别方法[J]. 模式识别与人工智能, 2015, 28(3): 253-259. HU C H, WANG X J, LIU B, et al. A recognition approach for cigarette smoke based on MI-Simba[J]. Pattern Recognition and Artificial Intelligence, 2015, 28(3): 253-259. [18] LIN Z, LV C, DOU Y, et al. Smoking behavior detection based on hand trajectory tracking and mouth saturation changes[C]//2018 International Conference on Security, Pattern Analysis, and Cybernetics (SPAC), Jinan, 2018. [19] 汪祖云, 廖惠敏, 张日东, 等. 结合烟雾多特征的出租车司机吸烟行为检测[C]//第十二届全国信号和智能信息处理与应用学术会议论文集, 杭州, 2018: 368-373. WANG Z Y, LIAO H M, ZHANG R D, et al. Detection of smoking behavior of taxi drivers based on smoke characteristics[C]//Proceedings of the 12th National Conference on Signal and Intelligent Information Processing and Application, Hangzhou, 2018: 368-373. [20] 黄训平, 贾克斌, 刘鹏宇. 基于交通监控的出租车司机吸烟行为自动检测[J]. 计算机仿真, 2020, 37(12): 337-344. HUANG X P, JIA K B, LIU P Y. Automatic detection of taxi driver smoking behavior based on traffic monitoring[J]. Computer Simulation, 2020, 37(12): 337-344. [21] CHEN M, LUDTKE S J. Deep learning-based mixed-dimensional Gaussian mixture model for characterizing variability in cryo-EM[J]. Nature Methods, 2021, 18(8): 930-936. [22] 张日东. 出租车司机吸烟行为评判标准及自动检测算法研究[D]. 北京: 北京工业大学, 2018. ZHANG R D. Study on the evaluation standard of smoking behavior of taxi drivers and automatic detection algorithm[D]. Beijing: Beijing University of Technology, 2018. [23] GIRSHICK R, DONAHUE J, DARRELL T, et al. Rich feature hierarchies for accurate object detection and semantic segmentation[C]//Proceedings of the 2014 IEEE Conference on Computer Vision and Pattern Recognition, 2014: 580-587. [24] REDMON J, DIVVALA S, GIRSHICK R, et al. You only look once: unified, real-time object detection[C]//Computer Vision & Pattern Recognition. Las Vegas: IEEE, 2016. [25] JIANG T, MU X, WEI X, et al. Research progress of single-stage small target detection based on deep learning[C]//2022 4th International Conference on Artificial Intelligence and Advanced Manufacturing (AIAM). Germany: IEEE, 2022: 893-898. [26] POONAM G, SHASHANK B N, ATHRI G R. Development of framework for detecting smoking scene in video clips[J]. Indonesian Journal of Engineering and Computer Science, 2019: 22-26. [27] LIAO J, ZOU J. Smoking target detection based on Yolo V3[C]//2020 5th International Conference on Mechanical, Control and Computer Engineering (ICMCCE), Harbin, 2020: 2241-2244. [28] MACALISANG J R, MERENCILLA N E, LIGAYO M A D, et al. Eye-smoker: a machine vision-based nose inference system of cigarette smoking detection using convolutional neural network[C]//2020 IEEE 7th International Conference on Engineering Technologies and Applied Sciences (ICETAS), Xi’an, 2020: 1-5. [29] SANTIAGO E C, REYES E M, TRIA M L, et al. Deep convolutional neural network for detection of cigarette smokers in public places: a low sample size training data approach[C]//2022 International Conference on Decision Aid Sciences and Applications (DASA), 2022: 1276-1280. [30] ZOU L, SHAO J, YU Y. Smoking behavior monitoring system in public places based on YOLOv5l+ CBAM[C]//2021 Smart City Challenges & Outcomes for Urban Transformation (SCOUT), Hainan, 2021: 100-106. [31] 杨国亮, 龚志鹏, 黄聪, 等. 基于深度学习的吸烟行为实时检测[J]. 安全与环境学报, 2023, 23(10): 3696-3705. YANG G L, GONG Z P, HUANG C, et al. Real-time smoking behavior detection based on deep learning[J]. Journal of Safety and Environment, 2023, 23(10): 3696-3705. [32] YANG T, YANG J, MENG J. Driver’s illegal driving behavior detection with ssd approach[C]//2021 IEEE 2nd International Conference on Pattern Recognition and Machine Learning (PRML), Chengdu, 2021: 109-114. [33] 李倩. 基于深度学习的烟支检测技术研究与应用[D]. 西安: 西安邮电大学, 2020. LI Q. Research and application of cigarette detection technology based on deep learning[D]. Xi’an: Xi’an University of Posts and Telecommunications, 2020. [34] HE Z, ZHANG L, GAO X, et al. Multi-adversarial faster-RCNN with paradigm teacher for unrestricted object detection[J]. International Journal of Computer Vision, 2023, 131(3): 680-700. [35] RENTAO Z, MENGYI W, ZILONG Z, et al. Indoor smoking behavior detection based on yolov3-tiny[C]//2019 Chinese Automation Congress (CAC), Hangzhou, 2019: 3477-3481. [36] WEI Z, ZHU Y X, LI Q X, et al. Improved smoking target detection algorithm based on YOLOv3[J]. Journal of Physics: Conference Series, 2021, 1883(1): 012052. [37] WANG D, YANG J, HOU F H. Design of intelligent detection system for smoking based on improved YOLOv4[J]. Sensors and Materials, 2022, 34(8): 3271-3284. [38] MA Y, YANG J, LI Z, et al. YOLO-cigarette: an effective YOLO network for outdoor smoking real-time object detection[C]//2021 Ninth International Conference on Advanced Cloud and Big Data (CBD), Xi’an, 2022: 121-126. [39] SHI F, ZHOU H, YE C, et al. Faster detection method of driver smoking based on decomposed YOLOv5[J]. Journal of Physics: Conference Series, 2021, 1993(1): 012035. [40] TANG J, LIU S, ZHENG B, et al. Smoking behavior detection based on improved YOLOv5s algorithm[C]//2021 9th International Symposium on Next Generation Electronics (ISNE), Changsha, 2021: 1-4. [41] LI R, SONG B, LIU X, et al. Smoking behavior detection based on TF-YOLOv5[C]//2022 3rd International Conference on Pattern Recognition and Machine Learning (PRML), Chengdu, 2022: 14-19. [42] 刘浩翰, 樊一鸣, 贺怀清, 等. 改进YOLOv7-tiny的目标检测轻量化模型[J]. 计算机工程与应用, 2023, 59(14): 166-175. LIU H H, FAN Y M, HE H Q, et al. Improved YOLOv7-tiny’s object detection lightweight model[J]. Computer Engineering and Applications, 2023, 59(14): 166-175. [43] HAN L, RONG L, LI Y, et al. CA-SSD-based real-time smoking target detection algorithm[C]//2021 5th International Conference on Digital Signal Processing, Chengdu, 2021: 283-288. [44] 张洋, 姚登峰, 江铭虎, 等. 基于EfficientDet网络的细粒度吸烟行为识别[J]. 计算机工程, 2022, 48(3): 302-309. ZHANG Y, YAO D F, JIANG M H, et al. Fine-grained smoking behavior recognition based on EfficientDet network[J]. Computer Engineering, 2022, 48(3): 302-309. [45] CHI J, GUO S, ZHANG H, et al. L-GhostNet: extract better quality features[J]. IEEE Access, 2023, 11: 2361-2374. [46] ZHAO L, WANG H. Salient object detection based on transformer and multi-scale feature fusion[C]//2023 3rd International Conference on Neural Networks, Information and Communication Engineering (NNICE), Guangzhou, 2023: 179-183. [47] 陈睿龙, 罗磊, 蔡志平, 等. 基于深度学习的实时吸烟检测算法[J]. 计算机科学与探索, 2021, 15(2): 327-337. CHEN R L, LUO L, CAI Z P, et al. Algorithm for real-time smoking detection based on deep learning[J]. Journal of Frontiers of Computer Science and Technology, 2021, 15(2): 327-337. [48] 李祥祥, 李晓华, 石刚. 基于深度学习的吸烟检测研究[J]. 东北师大学报 (自然科学版), 2022, 54(3): 98-106. LI X X, LI X H, SHI G. Research on smoking detection based on deep learning[J]. Journal of Northeast Normal University (Natural Science Edition), 2022, 54(3): 98-106. [49] ZHANG D, JIAO C, WANG S. Smoking image detection based on convolutional neural networks[C]//2018 IEEE 4th International Conference on Computer and Communications (ICCC), Xizang, 2018. [50] ZHANG Z, CHEN H, XIAO R, et al. Research on smoking detection based on deep learning[J]. Journal of Physics: Conference Series, 2021, 2024(1): 012042. [51] ZHAO Z, ZHAO H, YE C, et al. FPN-D-based driver smoking behavior detection method[J]. IETE Journal of Research, 2021: 1-10. [52] BRADSKI G. The OpenCV library[J]. Dr. Dobb’s Journal: Software Tools for the Professional Programmer, 2000, 25(11): 120-123. [53] KING D E. Dlib-ml: a machine learning toolkit[J]. The Journal of Machine Learning Research, 2009, 10: 1755-1758. [54] CECH J, SOUKUPOVA T. Real-time eye blink detection using facial landmarks[C]//21st Computer Vision Winter Workshop, 2016. [55] DENG J, GUO J, VERVERAS E, et al. Retinaface: single-shot multi-level face localisation in the wild[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, 2020: 5203-5212. [56] 程淑红, 马晓菲, 张仕军, 等. 基于多任务分类的吸烟行为检测[J]. 计量学报, 2020, 41(5): 538-543. CHENG S H, MA X F, ZHANG S J, et al. Smoking behavior detection based on multitask classification[J]. Acta Metrologica Sinica, 2020, 41(5): 538-543. [57] DANILCHENKO P V, ROMANOV N S. Neural networks application to detect the facts of smoking in video surveillance systems[J]. Journal of Physics: Conference Series, 2021, 1794(1): 012002. [58] XIAO M. Automatic identification of smoking behaviour in public places based on improved YOLO algorithm[J]. International Journal of Data Science, 2022, 7(4): 331-347. [59] 王鹏, 尹勇, 宋策. 基于改进RetinaFace和YOLOv4的船舶驾驶员吸烟和打电话行为检测[J]. 上海海事大学学报, 2022, 43(4): 44-50. WANG P, YI Y, SONG C. Smoking and calling behavior detection of ship officers based on improved RetinaFace and YOLOv4[J]. Journal of Shanghai Maritime University, 2022, 43(4): 44-50. [60] CABANTO W J D, JOCSON A D B, LATEO R L T, et al. Real-time multi-person smoking event detection[C]//Proceedings of the 2nd International Conference on Computing and Big Data, Taiwan, China, 2019: 126-130. [61] BAI C, ZHOU Y, GUO Q. Application study of area-based and YOLOv4 smoking behavior detection[C]//2022 4th International Conference on Natural Language Processing (ICNLP), Xi’an, 2022: 7-12. [62] 王鑫鹏, 王晓强, 林浩, 等. 深度学习典型目标检测算法的改进综述[J]. 计算机工程与应用, 2022, 58(6): 42-57. XANG X P, WANG X Q, LIN H, et al. Review on improvement of typical object detection algorithms in deep learning[J]. Computer Engineering and Applications, 2022, 58(6): 42-57. [63] 史芳菲. 监控视频下运营车辆司机吸烟行为检测系统的设计与实现[D]. 海口: 海南大学, 2021. SHI F F. Design and implementation of a smoking detection system for operating vehicle drivers under surveillance video[D]. Haikou: Hainan University, 2021. [64] YANG Z, HUANG H, XIA F, et al. Smoke detection algorithm based on improved EfficientDet[C]//Proceedings of the 2022 6th International Conference on Deep Learning Technologies, Xi’an, 2022: 61-67. [65] SHA R, GUHA T. Detection of smoking in inside the office using deep learning for CCTV camera[C]//2022 International Conference on Innovative Computing, Intelligent Communication and Smart Electrical Systems (ICSES), 2022: 1-9. [66] CHEN X, XUE Y, ZHU Y, et al. A novel smoke detection algorithm based on improved mixed Gaussian and YOLOv5 for textile workshop environments[J]. IET Image Processing, 2023: 1991-2004. [67] WANG P, YUAN C, HU W, et al. Graph based skeleton motion representation and similarity measurement for action recognition[C]//14th European Conference on Computer Vision (ECCV 2016), The Netherlands, 2016: 370-385. [68] 刘婧, 杨旭, 刘董经典, 等. 基于人体关节点的多人吸烟动作识别算法[J]. 计算机工程与应用, 2021, 57(1): 234-241. LIU J, YANG X, LIU D J D, et al. Multi-person smoking action recognition algorithm based on human joint points[J]. Computer Engineering and Applications, 2021, 57(1): 234-241. [69] 姜晓凤, 王保栋, 夏英杰, 等. 基于人体关键点和YOLOv4的吸烟行为检测[J]. 陕西师范大学学报 (自然科学版), 2022, 50(3): 96-103. JIANG X F, WANG B D, XIA Y J, et al. Smoking behavior detection based on human keypoints and YOLOv4[J]. Journal of Shaanxi Normal University (Natural Science Edition), 2022, 50(3): 96-103. [70] 邸昱卿, 张云伟. 基于人体关键点的吸烟行为识别方法研究[J]. 电视技术, 2022, 46(5): 12-16. DI Y Q, ZHANG Y W. Research on smoking behavior recognition method based on human key points[J]. Video Engineering, 2022, 46(5): 12-16. [71] 徐婉晴, 王保栋, 黄艺美, 等. 基于人体骨骼关键点的吸烟行为检测算法[J]. 计算机应用, 2021, 41(12): 3602-3607. XU W Q, WANG B D, HUANG Y M, et al. Smoking behavior detection algorithm based on human skeleton key points[J]. Journal of Computer Applications, 2021, 41(12): 3602-3607. [72] DU Y, FU Y, WANG L. Skeleton based action recognition with convolutional neural network[C]//2015 3rd IAPR Asian Conference on Pattern Recognition, Kuala Lumpur, 2015: 579-583. [73] WANG P, LI W, LI C, et al. Action recognition based on joint trajectory maps with convolutional neural networks[J]. Knowledge-Based Systems, 2016, 158: 43-53. [74] LIU M, CHEN C, LIU H. 3D action recognition using data visualization and convolutional neural networks[C]//2017 IEEE International Conference on Multimedia and Expo, Hong Kong, China, 2017: 925-930. [75] LI B, DAI Y, CHENG X, et al. Skeleton based action recognition using translation-scale invariant image mapping and multi-scale deep CNN[C]//2017 IEEE International Conference on Multimedia & Expo Workshops, Hong Kong, China, 2017: 601-604. [76] LIU M, LIU H, CHEN C. Enhanced skeleton visualization for view invariant human action recognition[J]. Pattern Recognition, 2017, 68: 346-362. [77] YANG Z, LI Y, YANG J, et al. Action recognition with spatiotemporal visual attention on skeleton image sequences[J]. IEEE Transactions on Circuits and Systems for Video Technology, 2019, 29(8): 2405-2415. [78] CAETANO C, BRéMOND F, SCHWARTZ W R. Skeleton image representation for 3D action recognition based on tree structure and reference joints[C]//2019 32nd SIBGRAPI Conference on Graphics, Patterns and Images, Brazil, 2019: 16-23. [79] LI Y, XIA R, LIU X, et al. Learning shape-motion representations from geometric algebra spatiotemporal model for skeleton-based action recognition[C]//2019 IEEE International Conference on Multimedia and Expo, Hong Kong, China, 2019: 1066-1071. [80] DU Y, WANG W, WANG L. Hierarchical recurrent neural network for skeleton based action recognition[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, Los Angeles, 2015: 1110-1118. [81] ZHU W, LAN C, XING J, et al. Co-occurrence feature learning for skeleton based action recognition using regularized deep LSTM networks[J]. Proceedings of the AAAI Conference on Artificial Intelligence, 2016. [82] SHAHROUDY A, LIU J, NG T T, et al. NTU RGB+D: a large scale dataset for 3D human activity analysis[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. Piscataway, NJ: IEEE Press, 2016: 1010-1019. [83] LIU J, SHAHROUDY A, XU D, et al. Spatio-temporal LSTM with trust gates for 3D human action recognition [C]//European Conference on Computer Vision. Berlin: Springer, 2016: 816-833. [84] ZHANG S, LIU X, XIAO J. On geometric features for skeleton-based action recognition using multilayer LSTM networks[C]//2017 IEEE Winter Conference on Applications of Computer Vision, California, 2017: 148-157. [85] ZHANG P, LAN C, XING J, et al. View adaptive recurrent neural networks for high performance human action recognition from skeleton data[C]//Proceedings of the IEEE International Conference on Computer Vision. Piscataway, NJ: IEEE Press, 2017: 2117-2126. [86] YAN S, XIONG Y, LIN D. Spatial temporal graph convolutional networks for skeleton-based action recognition[C]//Proceedings of the AAAI Conference on Artificial Intelligence, 2018. [87] THAKKAR K, NARAYANAN P J. Part-based graph convolutional network for action recognition[J]. arXiv:1809. 04983, 2018. [88] LI M, CHEN S, CHEN X, et al. Actional-structural graph convolutional networks for skeleton-based action recognition[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, Long Beach, 2019: 3595-3603. [89] SHI L, ZHANG Y, CHENG J, et al. Skeleton-based action recognition with directed graph neural networks[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, Long Beach, 2019: 7912-7921. [90] SHI L, ZHANG Y, CHENG J, et al. Two-stream adaptive graph convolutional networks for skeleton-based action recognition[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, Long Beach, 2019: 12026-12035. [91] LI C, ZHONG Q, XIE D, et al. Skeleton-based action recognition with convolutional neural networks[C]//2017 IEEE International Conference on Multimedia & Expo Workshops, Hong Kong, China, 2017: 597-600. [92] CAO C, LAN C, ZHANG Y, et al. Skeleton-based action recognition with gated convolutional neural networks[J]. IEEE Transactions on Circuits and Systems for Video Technology, 2019, 29(11): 3247-3257. [93] 任国印, 吕晓琪, 李宇豪. 基于2D转3D骨架的多特征融合实时动作识别[J]. 激光与光电子学进展, 2021, 58(24): 233-241. REN G Y, LV X Q, LI Y H. Multi-feature fusion real-time action recognition based on 2D to 3D skeleton[J]. Laser & Optoelectronics Progress, 2021, 58(24): 233-241. [94] LI X, ZHANG J, WANG S, et al. Two-stream spatial graphormer networks for skeleton-based action recognition[J]. IEEE Access, 2022, 10: 100426-100437. [95] YIN M, HE S, SOOMRO T A, et al. Efficient skeleton-based action recognition via multi-stream depthwise separable convolutional neural network[J]. Expert Systems with Applications, 2023, 226: 120080. [96] LIU J, SHAHROUDY A, XU D, et al. Skeleton-based action recognition using spatiotemporal LSTM network with trust gates[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2018, 40(12): 3007-3021. [97] ZHENG W, LI L, ZHANG Z, et al. Relational network for skeleton-based action recognition[C]//2019 IEEE International Conference on Multimedia and Expo, Shanghai, 2019: 826-831. [98] 余晓毅, 宋涛, 赵明富, 等. 基于双流独立循环神经网络的人体行为识别[J]. 激光杂志, 2021, 42(4): 86-90. YU X Y, SONG T, ZHAO M F, et al. Human action recognition with two-stream independently recurrent neural network[J]. Laser Journal, 2021, 42(4): 86-90. [99] 付仔蓉, 吴胜昔, 吴潇颖, 等. 基于空间特征的BI-LSTM人体行为识别[J]. 华东理工大学学报(自然科学版), 2021, 47(2): 225-232. FU Z R, WU S X, WU X Y, et al. Human action recognition using Bi-LSTM network based on spatial features[J]. Journal of East China University of Science and Technology, 2021, 47(2): 225-232. [100] CAO Y, LIU C, SHENG Y, et al. Action recognition model based on 3D graph convolution and attention enhanced[J]. Journal of Electronics and Information, 2021, 43(7): 2071-2078. [101] XIA H, GAO X. Multi-scale mixed dense graph convolution network for skeleton-based action recognition[J]. IEEE Access, 2021, 9: 36475-36484. [102] YANG H, GU Y, ZHU J, et al. PGCN-TCA: pseudo graph convolutional network with temporal and channel-wise attention for skeleton-based action recognition[J]. IEEE Access, 2020, 8: 10040-10047. [103] SHIRAKI K, HIRAKAWA T, YAMASHITA T, et al. Spatial temporal attention graph convolutional networks with mechanics-stream for skeleton-based action recognition [C]//Proceedings of the Asian Conference on Computer Vision. Berlin: Springer, 2020. [104] YOON Y, YU J, JEON M. Predictively encoded graph convolutional network for noise-robust skeleton-based action recognition[J]. Applied Intelligence, 2022, 52(3): 2317-2331. [105] LI C, LI S, GAO Y, et al. Improved shift graph convolutional network for action recognition with skeleton[J]. IEEE Signal Processing Letters, 2023, 30: 438-442. [106] YU L, TIAN L, DU Q, et al. Multi-stream adaptive 3D attention graph convolution network for skeleton-based action recognition[J]. Applied Intelligence, 2023, 53(12): 14838-14854. [107] ZHU A, WU Q, CUI R, et al. Exploring a rich spatial-temporal dependent relational model for skeleton-based action recognition by bidirectional LSTM-CNN[J]. Neurocomputing, 2020, 414: 90-100. [108] ZHANG P, LAN C, ZENG W, et al. Semantics-guided neural networks for efficient skeleton-based human action recognition[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, 2020: 1112-1121. [109] 冒鑫鑫, 吴胜昔, 咸博龙, 等. 基于骨架的自适应图卷积和LSTM行为识别[J]. 华东理工大学学报(自然科学版), 2022, 48(6): 816-825. MAO X X, WU S X, XIAN B L, et al. Adaptive graph convolution and LSTM action recognition based on skeleton[J]. Journal of East China University of Science and Technology, 2022, 48(6): 816-825. [110] JIANG Y, SUN Z, YU S, et al. A Graph skeleton transformer network for action recognition[J]. Symmetry, 2022, 14(8): 1547. [111] CAETANO C, SENA J, BRéMOND F, et al. Skelemotion: a new representation of skeleton joint sequences based on motion information for 3D action recognition[C]//2019 16th IEEE International Conference on Advanced Video and Signal Based Surveillance, Taiwan, China, 2019: 1-8. [112] 王洪雁, 袁海. 基于骨骼及表观特征融合的动作识别方法[J]. 通信学报, 2022, 43(1): 138-148. WANG H Y, YUAN H. Action recognition method based on fusion of skeleton and apparent features[J]. Journal of Communications, 2022, 43(1): 138-148. [113] ZHANG X, SU X, YU J, et al. Combine object detection with skeleton-based action recognition to detect smoking behavior[C]//2021 The 5th International Conference on Video and Image Processing, Guangzhou, 2021: 111-116. [114] JIAO S J, LIU L Y, LIU Q. A hybrid deep learning model for recognizing actions of distracted drivers[J]. Sensors, 2021, 21(21): 7424. [115] ARTAN Y, BALCI B, ELIHO? A, et al. Vision based driver smoking behavior detection using surveillance camera images[C]//20th International Conference on Image Analysis and Processing (ICIAP 2019). Italy: Springer International Publishing, 2019: 468-476. [116] 孙方伟, 李承阳, 谢永强, 等. 深度学习应用于遮挡目标检测算法综述[J]. 计算机科学与探索, 2022, 16(6): 1243-1259.SUN F W, LI C Y, XIE Y Q, et al. Review of deep learning applied to occluded object detection[J]. Journal of Frontiers of Computer Science and Technology, 2022, 16(6): 1243-1259. [117] MA Y, YUAN L, ABDELRAOUF A, et al. M2DAR: multi-view multi-scale driver action recognition with vision transformer[C]//Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, Britain, 2023: 5286-5293. |
[1] | 王怀济, 李广明, 张红良, 申京傲, 吴京. 融合卷积通道注意力的遥感图像目标检测方法[J]. 计算机工程与应用, 2024, 60(2): 200-210. |
[2] | 许晓阳, 高重阳. 改进YOLOv7-tiny的轻量级红外车辆目标检测算法[J]. 计算机工程与应用, 2024, 60(1): 74-83. |
[3] | 林正文, 宋思瑜, 范钧玮, 赵薇, 刘广臣. 改进YOLOv5的光伏组件热斑及遮挡小目标检测[J]. 计算机工程与应用, 2024, 60(1): 84-95. |
[4] | 杜娟, 崔少华, 晋美娟, 茹琛. 改进YOLOv7的复杂道路场景目标检测算法[J]. 计算机工程与应用, 2024, 60(1): 96-103. |
[5] | 张学立, 贾新春, 王美刚, 智瀚宇. 安全帽与反光衣的轻量化检测:改进YOLOv5s的算法[J]. 计算机工程与应用, 2024, 60(1): 104-109. |
[6] | 李安达, 吴瑞明, 李旭东. 改进YOLOv7的小目标检测算法研究[J]. 计算机工程与应用, 2024, 60(1): 122-134. |
[7] | 吴建成, 郭荣佐, 成嘉伟, 张浩. 注意力特征融合的快速遥感图像目标检测算法[J]. 计算机工程与应用, 2024, 60(1): 207-216. |
[8] | 周建亭, 宣士斌, 王婷. 融合遮挡信息的改进DDETR无人机目标检测算法[J]. 计算机工程与应用, 2024, 60(1): 236-244. |
[9] | 林文龙, 阿里甫·库尔班, 陈一潇, 袁旭. 面向遥感影像目标检测的ACFEM-RetinaNet算法[J]. 计算机工程与应用, 2024, 60(1): 245-253. |
[10] | 黄友文, 豆恒, 肖贵光. 融合分类校正与样本扩增的小样本目标检测[J]. 计算机工程与应用, 2024, 60(1): 254-262. |
[11] | 陈思雨, 付章杰. 融合高效注意力的多尺度输电线路部件检测[J]. 计算机工程与应用, 2024, 60(1): 327-336. |
[12] | 蔡正奕, 赵杰煜, 朱峰. 融合图像特征的单阶段点云目标检测[J]. 计算机工程与应用, 2023, 59(9): 140-149. |
[13] | 谢椿辉, 吴金明, 徐怀宇. 改进YOLOv5的无人机影像小目标检测算法[J]. 计算机工程与应用, 2023, 59(9): 198-206. |
[14] | 李坤亚, 欧鸥, 刘广滨, 于泽峰, 李林. 改进YOLOv5的遥感图像目标检测算法[J]. 计算机工程与应用, 2023, 59(9): 207-214. |
[15] | 黄磊, 杨媛, 杨成煜, 杨威, 李耀华. FS-YOLOv5:轻量化红外目标检测方法[J]. 计算机工程与应用, 2023, 59(9): 215-224. |
阅读次数 | ||||||
全文 |
|
|||||
摘要 |
|
|||||