期刊文献+

视频异常行为识别与分级预警系统 被引量:4

Ranked-warning System on Identification of Abnormal Behavior in Video Monitoring
下载PDF
导出
摘要 参考格灵深瞳分级评价体系并引入迟滞比较器相关思想,结合最近邻与SVM双层分类器学习,建立了针对目标入侵、目标高速运动、目标遗留物与人群聚集逃离、人群打架斗殴、人群骚乱六种常见目标异常行为的自动分类与分级预警系统。1提出并实现了一套较完备的异常行为分级预警系统;2在行为分析之前以人群密度与能量为特征引入最近邻分类器实现个体行为与群体行为的预分类;3通过引入迟滞比较器实现高速运动行为的稳定预警;且该方法具有一定普及意义。分别在标准库和自行拍摄的视频上进行实验验证。实验证明,该系统能够稳定实现对上述六种普遍异常行为的分类分级预警,实现了群体分析与个体分析、检测与识别、分类与预警的一体化。 Taking into account grid deep spiritual pupil grade-evaluation system and main ideas of hysteresis comparator,the nearest neighbor classifier and SVM learning was combined with,which aims to establish an automatic Classification and Grading Warning System recognizing six common target abnormal behavior including invasion,fast-moving,remnants,fleeing,fights and riots.Following three aspects were contributed: firstly,a comprehensive system was proposed dealing with classification and warning of abnormal behavior.Secondly,before recognizing abnormal behavior the population density and the energy was characterized,which were input of the nearest neighbor classifier,achieving pre-classification of individual behavior and group behavior.Thirdly,The stable behavior warning by introducing hysteresis comparator was achieved,and this method has certain universal significance.Experiments were carried out on the standard library and video sets shoot.Experimental results show that the system can achieve high warning and classification stability of the six abnormal behavior,which integrates self-analysis and analysis groups,detection and identification,classification and warning together.
出处 《科学技术与工程》 北大核心 2015年第14期76-81,共6页 Science Technology and Engineering
基金 国家自然科学基金委员会和中国工程物理研究院联合基金(11176018)资助
关键词 分级预警系统 双层分类器学习 最近邻 SVM 迟滞比较 ranked-warning system double layer classifier learning nearest-neighbor classifier SVM learning hysteresis comparator
  • 相关文献

参考文献17

  • 1Mahadevan V, Li W, Bhalodia V, et aL Anomaly detection in crowded scenes. Computer Vision and Pattern Recognition (CVPR), IEEE, 2010:1975-1981.
  • 2Saligrama V, Chen Z. Video anomaly detection based on local statis- tical aggregates. Computer Vision and Pattern Recognition (CVPR), IEEE, 2012:2112-2119.
  • 3Aggarwal J K, Ryoo M S. Human activity analysis: a review. ACM Computing Surveys (CSUR), 2011 ; 43(3) : 16.
  • 4Ikizler-Cinbis N, Sclaroff S. Object, scene and actions : Combining multiple features for human action recognition. ECCV 2010, Springer Berlin Heidelberg, 2010:494-507.
  • 5Wipke K B, Cuddy M R, Butch S D. ADVISOR 2. 1 : a user-friendly advanced powertrain simulation using a combined backward/forward approach. Vehicular Technology, IEEE Transactions ova, 1999; 48(6) : 1751-1761.
  • 6Leonelli P, Bonvieini S, Spadoni G. New detailed numerical pre - dures for calculating risk measures in hazardous materials transpoantion. Journal of Loss Prevention in the Process Industries, 1999;12 (6) : 507-515.
  • 7Fabiano B, Curro F, Palazzi E, et al. A framework for risk assess- ment and decision-making strategies in dangerous good transporta- tion. Journal of Hazardous Materials, 2002 ; 93 ( 1 ) : 1-15.
  • 8Feng S, Xu L D. Decision support for fuzzy comprehensive evaluation of urban development. Fuzzy Sets and Systems, 1999 ; 105 ( 1 ) : 1- 12.
  • 936kr. Deepg/int. 2014-6-15. http ://www. 36kr. net/gelingshentong.
  • 10Davies A C, Yin J H, Velastin S A. Crowd monitoring using image processing. Electronics & Communication Engineering Journal, 1995;7(1) : 37-47.

同被引文献20

引证文献4

二级引证文献11

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部