• 中国精品科技期刊
  • CCF推荐A类中文期刊
  • 计算领域高质量科技期刊T1类
Advanced Search
Zhou Hang, Zhan Yongzhao, Mao Qirong. Video Anomaly Detection Based on Space-Time Fusion Graph Network Learning[J]. Journal of Computer Research and Development, 2021, 58(1): 48-59. DOI: 10.7544/issn1000-1239.2021.20200264
Citation: Zhou Hang, Zhan Yongzhao, Mao Qirong. Video Anomaly Detection Based on Space-Time Fusion Graph Network Learning[J]. Journal of Computer Research and Development, 2021, 58(1): 48-59. DOI: 10.7544/issn1000-1239.2021.20200264

Video Anomaly Detection Based on Space-Time Fusion Graph Network Learning

Funds: This work was supported by the National Natural Science Foundation of China (61672268).
More Information
  • Published Date: December 31, 2020
  • There are strong correlations among spatial-temporal features of abnormal events in videos. Aiming at the problem of performance for abnormal event detection caused by these correlations, a video anomaly detection method based on space-time fusion graph network learning is proposed. In this method, spatial similarity graph and temporal trend graph for the segments are constructed in terms of the features of the segments. The spatial similarity graph is built dynamically by treating the features of the video segments as the vertexes in graph. In this graph, the weights of edges are dynamically formed by taking the relationship between vertex and its Top-k similarity vertexes into account. The temporal trend graph is built by taking the time distance for m sequential segments into account. The space-time fusion graph convolutional network is constructed by adaptively weighting the spatial similarity graph and temporal trend graph. The video embedding features are learnt and generated by using this graph convolutional network. A graph sparse regularization is added to the ranking loss, in order to reduce the over-smoothing effect of graph model and improve detection performance. The experiments are conducted on two challenging video datasets: UCF-Crime(University of Central Florida crime dataset) and ShanghaiTech. ROC(receiver operating characteristic curve) and AUC (area under curve) are taken as performance metrics. Our method obtains the AUC score of 80.76% rising by 5.35% compared with the baseline on UCF-Crime dataset, and also gets the score of 89.88% rising by 5.44% compared with SOTA(state of the art) weakly supervised algorithm on ShanghaiTech. The experimental results show that our proposed method can improve the performance of video abnormal event detection effectively.
  • Related Articles

    [1]Li Zhongnian, Huangfu Zhiyu, Yang Kaijie, Ying Peng, Sun Tongfeng, Xu Xinzheng. Semi-supervised Open Vocabulary Multi-label Learning Based on Graph Prompting[J]. Journal of Computer Research and Development, 2025, 62(2): 432-442. DOI: 10.7544/issn1000-1239.202440123
    [2]Zhang Zhenyu, Jiang Yuan. Label Noise Robust Learning Algorithm in Environments Evolving Features[J]. Journal of Computer Research and Development, 2023, 60(8): 1740-1753. DOI: 10.7544/issn1000-1239.202330238
    [3]Cheng Yusheng, Zhang Lulu, Wang Yibin, Pei Gensheng. Label-Specific Features Learning for Feature-Specific Labels Association Mining[J]. Journal of Computer Research and Development, 2021, 58(1): 34-47. DOI: 10.7544/issn1000-1239.2021.20190674
    [4]Hong Min, Jia Caiyan, Li Yafang, Yu Jian. Sample-Weighted Multi-View Clustering[J]. Journal of Computer Research and Development, 2019, 56(8): 1677-1685. DOI: 10.7544/issn1000-1239.2019.20190150
    [5]Geng Xin, Xu Ning, Shao Ruifeng. Label Enhancement for Label Distribution Learning[J]. Journal of Computer Research and Development, 2017, 54(6): 1171-1184. DOI: 10.7544/issn1000-1239.2017.20170002
    [6]Xiong Bingyan, Wang Guoyin, Deng Weibin. Under-Sampling Method Based on Sample Weight for Imbalanced Data[J]. Journal of Computer Research and Development, 2016, 53(11): 2613-2622. DOI: 10.7544/issn1000-1239.2016.20150593
    [7]Zhang Minling. An Improved Multi-Label Lazy Learning Approach[J]. Journal of Computer Research and Development, 2012, 49(11): 2271-2282.
    [8]Li Yufeng, Huang Shengjun, and Zhou Zhihua. Regularized Semi-Supervised Multi-Label Learning[J]. Journal of Computer Research and Development, 2012, 49(6): 1272-1278.
    [9]Zhao Huan, Wang Gangjin, Hu Lian, and Peng Xiujuan. Voice Activity Detection Based on Sample Entropy in Car Environments[J]. Journal of Computer Research and Development, 2011, 48(3): 471-476.
    [10]Kong Xiangnan, Li Ming, Jiang Yuan, and Zhou Zhihua. A Transductive Multi-Label Classification Method for Weak Labeling[J]. Journal of Computer Research and Development, 2010, 47(8): 1392-1399.
  • Cited by

    Periodical cited type(27)

    1. 顾敏,徐雅男,王辛迪,花敏,周雯. 多用户MIMO-MEC网络中基于APSO的任务卸载研究. 无线电工程. 2024(03): 711-718 .
    2. 王斐然,郭昕阳,张峰. 基于边缘计算的输电线路巡检设备协同调配研究. 自动化仪表. 2024(05): 123-126 .
    3. 史晓蒙,吕晓鹏,魏健康,王凌. 基于算法组合的端边云任务处理方法. 价值工程. 2024(36): 108-112 .
    4. 向朝参,程文辉,张昭,焦贤龙,屈毓锛,陈超,戴海鹏. 基于边缘智能计算的城市交通感知数据自适应恢复. 计算机研究与发展. 2023(03): 619-634 . 本站查看
    5. 邵梁,何星舟,尚俊娜. 边缘计算中利用改进型遗传算法的任务卸载策略. 计算机应用与软件. 2023(11): 48-57 .
    6. 高仕斌,刘帝洋,韦晓广,康高强,罗嘉明,雷杰宇. 基于数字孪生网络的牵引供电智能运维体系与应用架构. 铁道学报. 2023(12): 1-15 .
    7. 张彦虎,鄢丽娟,马志愤,张彦军. 一种适用于多任务多资源移动边缘计算环境下的改进粒子群算力卸载算法. 计算机与现代化. 2022(05): 54-60+67 .
    8. 刘春林,秦进. 面向5G网络的移动边缘计算节点部署算法设计. 计算机仿真. 2022(12): 436-439+473 .
    9. 张开强,蒋从锋,程小兰,贾刚勇,张纪林,万健. 多分辨率下资源感知的图像目标自适应缩放检测. 计算机科学. 2021(04): 180-186 .
    10. 乐光学,陈光鲁,卢敏,杨晓慧,刘建华,黄淳岚,杨忠明. 一种基于K-shell影响力最大化的路径择优计算迁移算法. 计算机研究与发展. 2021(09): 2025-2039 . 本站查看
    11. 苏命峰,王国军,李仁发. 边云协同计算中基于预测的资源部署与任务调度优化. 计算机研究与发展. 2021(11): 2558-2570 . 本站查看
    12. 贾觐,暴占彪. 改进GA的边缘计算任务卸载与资源分配策略. 计算机工程与设计. 2021(11): 3009-3017 .
    13. 汪小威,林宁,胡玉平. 移动边缘计算中利用BPSO的任务卸载策略. 计算机工程与设计. 2021(12): 3333-3341 .
    14. 尹高,石远明. 移动边缘网络中深度学习任务卸载方案. 重庆邮电大学学报(自然科学版). 2020(01): 38-46 .
    15. 丁雪乾,薛建彬. 边缘计算下基于Lyapunov优化的系统资源分配策略. 微电子学与计算机. 2020(02): 63-68 .
    16. 白昱阳,黄彦浩,陈思远,张俊,李柏青,王飞跃. 云边智能:电力系统运行控制的边缘计算方法及其应用现状与展望. 自动化学报. 2020(03): 397-410 .
    17. 乐光学,戴亚盛,杨晓慧,刘建华,游真旭,朱友康. 边缘计算可信协同服务策略建模. 计算机研究与发展. 2020(05): 1080-1102 . 本站查看
    18. 盛津芳,滕潇雨,李伟民,王斌. 移动边缘计算中基于改进拍卖模型的计算卸载策略. 计算机应用研究. 2020(06): 1688-1692 .
    19. 胡锦天,王高才,徐晓桐. 移动边缘计算中具有能耗优化的任务迁移策略. 计算机科学. 2020(06): 260-265 .
    20. 周振宇,陈亚鹏,潘超,赵雄文,张磊,汪中原. 面向智能电力巡检的高可靠低时延移动边缘计算技术. 高电压技术. 2020(06): 1895-1902 .
    21. 吕洁娜,张家波,张祖凡,甘臣权. 移动边缘计算卸载策略综述. 小型微型计算机系统. 2020(09): 1866-1877 .
    22. 张伟. 边缘计算的任务迁移机制研究. 软件导刊. 2020(09): 48-53 .
    23. 路亚. MEC多服务器启发式联合任务卸载和资源分配策略. 计算机应用与软件. 2020(10): 77-84 .
    24. 方加娟,李凯. 基于边缘云和移动辅助设备的计算卸载优化方案. 计算机应用与软件. 2020(12): 6-12 .
    25. 危泽华,曾玲玲. 基于Stackelberg博弈论的边缘计算卸载决策方法. 数学的实践与认识. 2019(11): 91-100 .
    26. 居晓琴. 移动边缘计算的QoE视频缓存方法. 电脑与信息技术. 2019(05): 44-47 .
    27. 乐光学,戴亚盛,杨晓慧,朱友康,游真旭,刘建生. 边缘计算多约束可信协同任务迁移策略. 电信科学. 2019(11): 36-50 .

    Other cited types(66)

Catalog

    Article views (1175) PDF downloads (794) Cited by(93)

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return