• DocumentCode
    1133282
  • Title

    Recognition by symmetry derivatives and the generalized structure tensor

  • Author

    Bigun, Josef ; Bigun, Tomas ; Nilsson, Kenneth

  • Author_Institution
    Halmstad Univ., Sweden
  • Volume
    26
  • Issue
    12
  • fYear
    2004
  • Firstpage
    1590
  • Lastpage
    1605
  • Abstract
    We suggest a set of complex differential operators that can be used to produce and filter dense orientation (tensor) fields for feature extraction, matching, and pattern recognition. We present results on the invariance properties of these operators, that we call symmetry derivatives. These show that, in contrast to ordinary derivatives, all orders of symmetry derivatives of Gaussians yield a remarkable invariance: they are obtained by replacing the original differential polynomial with the same polynomial, but using ordinary coordinates x and y corresponding to partial derivatives. Moreover, the symmetry derivatives of Gaussians are closed under the convolution operator and they are invariant to the Fourier transform. The equivalent of the structure tensor, representing and extracting orientations of curve patterns, had previously been shown to hold in harmonic coordinates in a nearly identical manner. As a result, positions, orientations, and certainties of intricate patterns, e.g., spirals, crosses, parabolic shapes, can be modeled by use of symmetry derivatives of Gaussians with greater analytical precision as well as computational efficiency. Since Gaussians and their derivatives are utilized extensively in image processing, the revealed properties have practical consequences for local orientation based feature extraction. The usefulness of these results is demonstrated by two applications: 1) tracking cross markers in long image sequences from vehicle crash tests and 2) alignment of noisy fingerprints.
  • Keywords
    Fourier transforms; Gaussian processes; feature extraction; image matching; image sequences; mathematical operators; polynomials; tensors; vehicles; Fourier transform; Gaussian processes; convolution operator; curve pattern extraction; curve pattern representation; dense orientation fields; differential operators; differential polynomial; feature extraction; generalized structure tensor; image processing; image sequences; invariance properties; noisy fingerprint alignment; pattern matching; pattern recognition; symmetry derivative recognition; vehicle crash tests; Convolution; Feature extraction; Fourier transforms; Gaussian processes; Matched filters; Pattern matching; Pattern recognition; Polynomials; Tensile stress; Vehicle crash testing; Index Terms- Gaussians; alignment.; cross detection; differential invariants; feature measurement; filtering; fingerprints; invariants; moments; orientation fields; registration; representations; shape; structure tensor; tensor voting; tracking; vision and scene understanding; wavelets and fractals; Dermatoglyphics; Humans; Pattern Recognition, Automated;
  • fLanguage
    English
  • Journal_Title
    Pattern Analysis and Machine Intelligence, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0162-8828
  • Type

    jour

  • DOI
    10.1109/TPAMI.2004.126
  • Filename
    1343846