• DocumentCode
    1220190
  • Title

    Low-Rank Matrix Fitting Based on Subspace Perturbation Analysis with Applications to Structure from Motion

  • Author

    Jia, Hongjun ; Martinez, Aleix M.

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Ohio State Univ., Columbus, OH
  • Volume
    31
  • Issue
    5
  • fYear
    2009
  • fDate
    5/1/2009 12:00:00 AM
  • Firstpage
    841
  • Lastpage
    854
  • Abstract
    The task of finding a low-rank (r) matrix that best fits an original data matrix of higher rank is a recurring problem in science and engineering. The problem becomes especially difficult when the original data matrix has some missing entries and contains an unknown additive noise term in the remaining elements. The former problem can be solved by concatenating a set of r-column matrices that share a common single r-dimensional solution space. Unfortunately, the number of possible submatrices is generally very large and, hence, the results obtained with one set of r-column matrices will generally be different from that captured by a different set. Ideally, we would like to find that solution that is least affected by noise. This requires that we determine which of the r-column matrices (i.e., which of the original feature points) are less influenced by the unknown noise term. This paper presents a criterion to successfully carry out such a selection. Our key result is to formally prove that the more distinct the r vectors of the r-column matrices are, the less they are swayed by noise. This key result is then combined with the use of a noise model to derive an upper bound for the effect that noise and occlusions have on each of the r-column matrices. It is shown how this criterion can be effectively used to recover the noise-free matrix of rank r. Finally, we derive the affine and projective structure-from-motion (SFM) algorithms using the proposed criterion. Extensive validation on synthetic and real data sets shows the superiority of the proposed approach over the state of the art.
  • Keywords
    computer vision; image motion analysis; set theory; singular value decomposition; SVD; additive noise term; computer vision; low-rank matrix fitting; projective structure-from-motion algorithm; set theory; subspace perturbation analysis; Additive noise; Bioinformatics; Computer graphics; Computer vision; Data engineering; Motion analysis; Optical noise; Pattern analysis; Pattern recognition; Upper bound; Low-rank matrix; computer vision; matrix perturbation; missing data; noise; pattern recognition.; random matrix; structure from motion; subspace analysis; Algorithms; Artificial Intelligence; Image Enhancement; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Motion; Movement; Pattern Recognition, Automated; Photography; Reproducibility of Results; Sensitivity and Specificity;
  • fLanguage
    English
  • Journal_Title
    Pattern Analysis and Machine Intelligence, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0162-8828
  • Type

    jour

  • DOI
    10.1109/TPAMI.2008.122
  • Filename
    4522562