期刊文献+

Bayesian moving object detection in dynamic scenes using an adaptive foreground model 被引量:1

Bayesian moving object detection in dynamic scenes using an adaptive foreground model
原文传递
导出
摘要 Accurate detection of moving objects is an important step in stable tracking or recognition. By using a nonparametric density estimation method over a joint domain-range representation of image pixels, the correlation between neighboring pixels can be used to achieve high levels of detection accuracy in the presence of dynamic background. However, color similarity between foreground and background will cause many foreground pixels to be misclassified. In this paper, an adaptive foreground model is exploited to detect moving objects in dynamic scenes. The foreground model provides an effective description of foreground by adaptively combining the temporal persistence and spatial coherence of moving objects. Building on the advantages of MAP-MRF (the maximum a posteriori in the Markov random field) decision framework, the proposed method performs well in addressing the challenging problem of missed detection caused by similarity in color between foreground and background pixels. Experimental results on real dynamic scenes show that the proposed method is robust and efficient. Accurate detection of moving objects is an important step in stable tracking or recognition. By using a nonparametric density estimation method over a joint domain-range representation of image pixels, the correlation between neighboring pixels can be used to achieve high levels of detection accuracy in the presence of dynamic background. However, color similarity be- tween foreground and background will cause many foreground pixels to be misclassified. In this paper, an adaptive foreground model is exploited to detect moving objects in dynamic scenes. The foreground model provides an effective description of fore- ground by adaptively combining the temporal persistence and spatial coherence of moving objects. Building on the advantages of MAP-MRF (the maximum a posteriori in the Markov random field) decision framework, the proposed method performs well in addressing the challenging problem of missed detection caused by similarity in color between foreground and background pixels. Experimental results on real dynamic scenes show that the proposed method is robust and efficient.
出处 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2009年第12期1750-1758,共9页 浙江大学学报(英文版)A辑(应用物理与工程)
基金 Project (Nos 60602012 and 60675023) supported by the National Natural Science Foundation of China the National High-Tech Re-search and Development Program (863) of China (No 2007AA01Z 164) the Shanghai Key Laboratory Opening Plan Grant (No.06dz22103),China
关键词 Moving object detection Foreground model Kernel density estimation (KDE) MAP-MRF estimation 移动目标检测 自适应模型 动态场景 使用模型 贝叶斯 移动物体 图像像素 空间相干性
  • 相关文献

参考文献10

  • 1Lu, L.,Hager, G.D.A Nonparametric Treatment for Location/Segmentation Based Visual Tracking[].IEEE Conf on Computer Vision and Pattern Recognition.2007
  • 2Mahamud,S.Comparing Belief Propagation and Graph Cuts for Novelty Detection[].IEEE Computer Society Conf on Computer Vision and Pattern Recognition.2006
  • 3Sun, J.,Zhang, W.,Tang, X.,Shum, H.Y.Background cut[].Lecture Notes in Computer Science.2006
  • 4Wand, M.,Jones, M.Kernel Smoothing[].Monographs on Statistics and Applied Probability.1995
  • 5Greig D,Porteous B,Seheult A.Exact maximum a posteriori estimation for binary images[].Journal of the Royal Statistical Society Series B Statistical Methodology.1989
  • 6Parzen E.On estimation of a probability density function and mode[].Annals of Mathematics.1962
  • 7Stauffer C,Grimson WEL.Learning Patterns of Activity Using Real-Time Tracking[].IEEE Transactions on Pattern Analysis and Machine Intelligence.2000
  • 8Wren C R,Azarbayejani A,Darrel T,et al.Pfinder: Real-time tracking of the human body[].IEEE Transactions on Pattern Analysis and Machine Intelligence.1997
  • 9Deng,Y,Kenney,C,Moore,MS,Manjunath,BS.Peer group filtering and perceptual color image quantization[].Proc of IEEE ISCAS.1999
  • 10Elgammal,AM,Duraiswami,R,Harwood,D,Davis,LS.Background and foreground modeling using nonparametric kernel density estimation for visual surveillance[].Proceedings of the IEEE.2002

同被引文献1

引证文献1

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