期刊文献+

对光照、阴影和反光具有鲁棒性的变化检测算法及实现 被引量:3

A Robust Change Detection Algorithm for Varying Illumination,Shadow and Reflection Conditions
下载PDF
导出
摘要 变化检测算法研究就是要发展一种能实现目标自动检测的算法,实现对视频图像序列的初级分析,稳定可靠地识别目标区域,实现运动图像分割,它是实现目标的识别、跟踪和报警等高层次的自动视频监视应用的重要基础,也是计算机视觉研究的一个重要领域。文章在研究了目前的多种变化检测算法的基础上,提出了一种基于线性相关的变化检测的算法。该算法以每一象素及其邻域组成的集合作为图像矢量来描述图像,用局部线性相关检测器来判断背景图像和当前图像的对应图像矢量是否线性相关,从而确定是否有变化发生。室内外的试验结果表明,基于线性相关的变化检测新算法对真实环境中的光照、阴影和反光具有较强鲁棒性,对噪声也有较强的抑制作用。该算法可准确地检测语义目标及其内部,且边缘光滑,检测目标与原图像中的目标准确地吻合,可以提高变化检测的精度,极大地增强自动视频监视系统对环境光照变化的适应能力。 Video surveillance systems can provide varied degree of assistance to humans by providing an extended per-ception and reasoning capability about situations of interest that occur in the monitored environments.Specially,video surveillance systems can provide powerful supports to detection potential criminal activity and terror in public areas by abnormal event detection.With the increasing maturity of algorithms and techniques,they are used in various application sectors such as security,transportation,and the automotive industry.Change detection plays a very important role in video surveillance systems because object recognizing and tracking,event detection and alarm generation are based on it.This paper provides a robust linear dependence based change detection algorithm for varying illumination,shadow and reflec-tion conditions.At last,some results and conclusions are given.
出处 《计算机工程与应用》 CSCD 北大核心 2003年第24期23-26,共4页 Computer Engineering and Applications
基金 国家自然科学基金资助(编号:49971069)
关键词 图像处理 监视 变化检测 背景提取 图像分割 鲁棒性 光照 阴影 反光 Image processing,Surveillance,Change detection,Background extraction,Image segmentation
  • 相关文献

参考文献8

  • 1朱亚萍.关于局部线性相关与WRONSKIAN行列式的讨论[J].盐城工学院学报,1998,11(4):65-68. 被引量:2
  • 2C Enrique et al.Orthogonal Sets and Polar Methods in Linear Algebra[M].New York :Wiley, 1999.
  • 3W Li,H Yue et al.Recursive PCA for adaptive pricess monitoring [C].In:World Congress of the international Federation of Automatic Control, 1999 : 85-90.
  • 4Kingsley Sage,Stewart Young.Security applications of computer vision [J].IEEE AES systems Magazine, 1999:19-24.
  • 5D Corrall.VIEW :Computer vision for surveillance applications[C].In: Inst Elect Eng Colloquium Active and Passive Techniques for 3D vision ,IEE,London, 1991 ;8:1-3.
  • 6K Skifstad,R Jain.Illunination independent change detection for real world image sequence[J].CVIP, 1989 ;46(3) :387-399.
  • 7Y Z Hsu et al.New likehood test methods for change detection in image sequences[J].Computer Vision Graphic Image Process, 1984 ;26 : 73-106.
  • 8T Aach et al.Statistical model-based change detection in moving video[J].Singal Process, 1993 ;31 : 165-180.

共引文献1

同被引文献16

  • 1董士崇,王天珍,许刚.视频图像中的运动检测[J].武汉理工大学学报(信息与管理工程版),2004,26(4):1-3. 被引量:22
  • 2张继平,刘直芳.背景估计与运动目标检测跟踪[J].计算技术与自动化,2004,23(4):51-54. 被引量:14
  • 3邱尚斌,李刚,林凌.一种新的运动目标检测和背景更新方法[J].辽宁工学院学报,2005,25(1):10-12. 被引量:10
  • 4李晴,徐群.复杂场景下多运动目标速度检测技术的实现[J].计算机与数字工程,2006,34(11):167-171. 被引量:8
  • 5Horprasert T,Harwood D,Davis L S.A Statistical Approach for Real-time Robust Background Subtraction and Shadow Detection[C].International Conference on Computer Vision,1999.
  • 6Elgammal A,Harwood D,Davis L S.Non-parametric Model for Background Subtraction[C].European Conference on Computer Vision,2000.
  • 7Stauffer C,Grimson W E L.Adaptive Background Mixture Models for Real-time Tracking[C].Proc.of the IEEE Computer Society Conf.on Computer Vision and Pattern Recognition,1999,2:246-252.
  • 8Lou Jianguang,Yang Hao,Hu Weiming,et al.An Illumination Invariant Change Detection Algorithm[C].Asian Conference on Computer Vision,2002-12.
  • 9Piccardi Massimo.Background subtraction techniques:a review[R].The ARC Centre of Excellence for Autonomous Systems(CAS) Faculty of Engineering,UTS,April 15,2004.
  • 10Ying Ming,Jingjue Jiang,Jun Ming.Background Modeling and Subtraction Using a Local Linear Dependenc Based Cauchy Statistical Model[C].Proc.VIIth Digital Image Computing:Techniques and Applications,Sun C.,Talbot H.,Ourselin S.and Adriaansen T.(Eds.),10-12 Dec.2003,Sydney.

引证文献3

二级引证文献4

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