• DocumentCode
    35029
  • Title

    Analysis of Point Based Image Registration Errors With Applications in Single Molecule Microscopy

  • Author

    Cohen, E.A.K. ; Ober, Raimund J.

  • Author_Institution
    Department of Mathematics, Imperial College London, UK
  • Volume
    61
  • Issue
    24
  • fYear
    2013
  • fDate
    Dec.15, 2013
  • Firstpage
    6291
  • Lastpage
    6306
  • Abstract
    We present an asymptotic treatment of errors involved in point-based image registration where control point (CP) localization is subject to heteroscedastic noise; a suitable model for image registration in fluorescence microscopy. Assuming an affine transform, CPs are used to solve a multivariate regression problem. With measurement errors existing for both sets of CPs this is an errors-in-variable problem and linear least squares is inappropriate; the correct method being generalized least squares. To allow for point dependent errors the equivalence of a generalized maximum likelihood and heteroscedastic generalized least squares model is achieved allowing previously published asymptotic results to be extended to image registration. For a particularly useful model of heteroscedastic noise where covariance matrices are scalar multiples of a known matrix (including the case where covariance matrices are multiples of the identity) we provide closed form solutions to estimators and derive their distribution. We consider the target registration error (TRE) and define a new measure called the localization registration error (LRE) believed to be useful, especially in microscopy registration experiments. Assuming Gaussianity of the CP localization errors, it is shown that the asymptotic distribution for the TRE and LRE are themselves Gaussian and the parameterized distributions are derived. Results are successfully applied to registration in single molecule microscopy to derive the key dependence of the TRE and LRE variance on the number of CPs and their associated photon counts. Simulations show asymptotic results are robust for low CP numbers and non-Gaussianity. The method presented here is shown to outperform GLS on real imaging data.
  • Keywords
    Covariance matrices; Image registration; Maximum likelihood estimation; Measurement errors; Measurement uncertainty; Microscopy; Vectors; Errors-in-variable; fluorescence microscopy; generalized least squares; image registration;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2013.2284154
  • Filename
    6616646