• DocumentCode
    110418
  • Title

    Robust Point Matching via Vector Field Consensus

  • Author

    Jiayi Ma ; Ji Zhao ; Jinwen Tian ; Yuille, Alan L. ; Zhuowen Tu

  • Author_Institution
    Nat. Key Lab. of Sci. & Technol. on Multi-Spectral Inf. Process., Huazhong Univ. of Sci. & Technol., Wuhan, China
  • Volume
    23
  • Issue
    4
  • fYear
    2014
  • fDate
    Apr-14
  • Firstpage
    1706
  • Lastpage
    1721
  • Abstract
    In this paper, we propose an efficient algorithm, called vector field consensus, for establishing robust point correspondences between two sets of points. Our algorithm starts by creating a set of putative correspondences which can contain a very large number of false correspondences, or outliers, in addition to a limited number of true correspondences (inliers). Next, we solve for correspondence by interpolating a vector field between the two point sets, which involves estimating a consensus of inlier points whose matching follows a nonparametric geometrical constraint. We formulate this a maximum a posteriori (MAP) estimation of a Bayesian model with hidden/latent variables indicating whether matches in the putative set are outliers or inliers. We impose nonparametric geometrical constraints on the correspondence, as a prior distribution, using Tikhonov regularizers in a reproducing kernel Hilbert space. MAP estimation is performed by the EM algorithm which by also estimating the variance of the prior model (initialized to a large value) is able to obtain good estimates very quickly (e.g., avoiding many of the local minima inherent in this formulation). We illustrate this method on data sets in 2D and 3D and demonstrate that it is robust to a very large number of outliers (even up to 90%). We also show that in the special case where there is an underlying parametric geometrical model (e.g., the epipolar line constraint) that we obtain better results than standard alternatives like RANSAC if a large number of outliers are present. This suggests a two-stage strategy, where we use our nonparametric model to reduce the size of the putative set and then apply a parametric variant of our approach to estimate the geometric parameters. Our algorithm is computationally efficient and we provide code for others to use it. In addition, our approach is general and can be applied to other problems, such as learning with a badly corrupted training data set.
  • Keywords
    Bayes methods; Hilbert spaces; computational geometry; expectation-maximisation algorithm; image matching; interpolation; maximum likelihood estimation; nonparametric statistics; statistical distributions; Bayesian model; EM algorithm; MAP estimation; Tikhonov regularizers; geometric parameter estimation; hidden variables; inlier points consensus estimation; kernel Hilbert space; latent variables; maximum a posteriori; nonparametric geometrical constraint; point sets; prior distribution; robust point matching; two-stage strategy; variance estimation; vector field consensus estimation; vector field interpolation; Estimation; Interpolation; Kernel; Mathematical model; Robustness; Standards; Vectors; Point correspondence; matching; outlier removal; regularization;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/TIP.2014.2307478
  • Filename
    6746218