Human behavior clustering for anomaly detection

被引:0
|
作者
Xudong Zhu
Zhijing Liu
机构
[1] Xidian University,School of Computer Science and Technology
关键词
computer vision; unsupervised anomaly detection; Bayesian topic models; hidden Markov model (HMM); spatiotemporal interest points;
D O I
暂无
中图分类号
学科分类号
摘要
This paper aims to address the problem of modeling human behavior patterns captured in surveillance videos for the application of online normal behavior recognition and anomaly detection. A novel framework is developed for automatic behavior modeling and online anomaly detection without the need for manual labeling of the training data set. The framework consists of the following key components. 1) A compact and effective behavior representation method is developed based on spatial-temporal interest point detection. 2) The natural grouping of behavior patterns is determined through a novel clustering algorithm, topic hidden Markov model (THMM) built upon the existing hidden Markov model (HMM) and latent Dirichlet allocation (LDA), which overcomes the current limitations in accuracy, robustness, and computational efficiency. The new model is a four-level hierarchical Bayesian model, in which each video is modeled as a Markov chain of behavior patterns where each behavior pattern is a distribution over some segments of the video. Each of these segments in the video can be modeled as a mixture of actions where each action is a distribution over spatial-temporal words. 3) An online anomaly measure is introduced to detect abnormal behavior, whereas normal behavior is recognized by runtime accumulative visual evidence using the likelihood ratio test (LRT) method. Experimental results demonstrate the effectiveness and robustness of our approach using noisy and sparse data sets collected from a real surveillance scenario.
引用
收藏
页码:279 / 289
页数:10
相关论文
共 50 条
  • [1] Human behavior clustering for anomaly detection
    Zhu, Xudong
    Liu, Zhijing
    [J]. FRONTIERS OF COMPUTER SCIENCE IN CHINA, 2011, 5 (03): : 279 - 289
  • [2] Behavior Clustering for Anomaly Detection
    Zhu Xudong
    Li Hui
    Liu Zhijing
    [J]. CHINA COMMUNICATIONS, 2010, 7 (06) : 17 - 23
  • [3] Behavior Recognition and Anomaly Behavior Detection Using Clustering
    Feizi, A.
    Aghagolzadeh, A.
    Seyedarabi, H.
    [J]. 2012 SIXTH INTERNATIONAL SYMPOSIUM ON TELECOMMUNICATIONS (IST), 2012, : 892 - 896
  • [4] Human Activity Clustering for Online Anomaly Detection
    Zhu, Xudong
    Liu, Zhijing
    Zhang, Juehui
    [J]. JOURNAL OF COMPUTERS, 2011, 6 (06) : 1071 - 1079
  • [5] An anomaly detection model of user behavior based on similarity clustering
    Hu, Shuai
    Xiao, Zhihua
    Rao, Qiang
    Liao, Rongtao
    [J]. PROCEEDINGS OF 2018 IEEE 4TH INFORMATION TECHNOLOGY AND MECHATRONICS ENGINEERING CONFERENCE (ITOEC 2018), 2018, : 835 - 838
  • [6] An anomaly intrusion detection method by clustering normal user behavior
    Oh, SH
    Lee, WS
    [J]. COMPUTERS & SECURITY, 2003, 22 (07) : 596 - 612
  • [8] Clustering ellipses for anomaly detection
    Moshtaghi, Masud
    Havens, Timothy C.
    Bezdek, James C.
    Park, Laurence
    Leckie, Christopher
    Rajasegarar, Sutharshan
    Keller, James M.
    Palaniswami, Marimuthu
    [J]. PATTERN RECOGNITION, 2011, 44 (01) : 55 - 69
  • [9] Understanding Home Inactivity for Human Behavior Anomaly Detection
    Masciadri, Andrea
    Scarantino, Carmelo
    Comai, Sara
    Salice, Fabio
    [J]. PROCEEDINGS OF THE 5TH EAI INTERNATIONAL CONFERENCE ON SMART OBJECTS AND TECHNOLOGIES FOR SOCIAL GOOD (GOODTECHS 2019), 2019, : 90 - 95
  • [10] Clustering based anomaly detection in the complex interaction of human and computer systems
    Cai, Zhongmin
    Chu, Xiaorong
    Wang, Xiaoqin
    Wang, Xiaoming
    [J]. DYNAMICS OF CONTINUOUS DISCRETE AND IMPULSIVE SYSTEMS-SERIES A-MATHEMATICAL ANALYSIS, 2006, 13 : 960 - 964