Cite Details
      
      
        Paul Rodríguez and Brendt Wohlberg, "Translational and Rotational Jitter Invariant Incremental Principal Component Pursuit for Video Background Modeling", in 
Proceedings of IEEE International Conference on Image Processing (ICIP), (Québec City, Québec, Canada), doi:
10.1109/ICIP.2015.7350856, pp. 537--541, Sep 2015
 
      
        
Abstract
      
      
      While Principal Component Pursuit (PCP) is currently
     considered to be the state of the art method for video background
     modeling, it suffers from a number of limitations, including a
     high computational cost, a batch operating mode, and sensitivity
     to camera jitter. In this paper we propose a novel fully
     incremental PCP algorithm for video background modeling that is
     robust to translational and rotational jitter. It processes one
     frame at a time, obtaining similar results to standard batch PCP
     algorithms, while being able to deal with translational and
     rotational jitter. It also has extremely low memory footprint,
     and a computational complexity that allows almost real-time
     processing.
     
      
        
BibTeX Entry
      
      @inproceedings{rodriguez-2015-translational,
    
      author = {Paul Rodr\'{i}guez and Brendt Wohlberg},
    
      title = {Translational and Rotational Jitter Invariant Incremental Principal Component Pursuit for Video Background Modeling},
    
      year = {2015},
    
      month = Sep,
    
      urlpdf = {http://brendt.wohlberg.net/publications/pdf/rodriguez-2015-translational.pdf},
    
      booktitle = {Proceedings of IEEE International Conference on Image Processing (ICIP)},
    
      address = {Qu\'{e}bec City, Qu\'{e}bec, Canada},
    
      doi = {10.1109/ICIP.2015.7350856},
    
      pages = {537--541}
    
      }