Medical Image Analysis
Volume 15, Issue 4 , Pages 622-639, August 2011

DRAMMS: Deformable registration via attribute matching and mutual-saliency weighting

  • Yangming Ou

      Affiliations

    • Section of Biomedical Image Analysis (SBIA), University of Pennsylvania, 3600 Market St., Ste 380, Philadelphia, PA 19104, USA
    • Corresponding Author InformationCorresponding author. Tel.: +1 215 662 7358; fax: +1 215 614 0266.
  • ,
  • Aristeidis Sotiras

      Affiliations

    • MAS Laboratory, Ecole Centrale de Paris, Grande Voie des Vignes, 92 295 Chatenay-Malabry, France
    • Equipe GALEN, INRIA Saclay – Ile-de-France, Orsay 91893, France
  • ,
  • Nikos Paragios

      Affiliations

    • MAS Laboratory, Ecole Centrale de Paris, Grande Voie des Vignes, 92 295 Chatenay-Malabry, France
    • Equipe GALEN, INRIA Saclay – Ile-de-France, Orsay 91893, France
  • ,
  • Christos Davatzikos

      Affiliations

    • Section of Biomedical Image Analysis (SBIA), University of Pennsylvania, 3600 Market St., Ste 380, Philadelphia, PA 19104, USA

published online 20 July 2010.

Abstract 

A general-purpose deformable registration algorithm referred to as “DRAMMS” is presented in this paper. DRAMMS bridges the gap between the traditional voxel-wise methods and landmark/feature-based methods with primarily two contributions. First, DRAMMS renders each voxel relatively distinctively identifiable by a rich set of attributes, therefore largely reducing matching ambiguities. In particular, a set of multi-scale and multi-orientation Gabor attributes are extracted and the optimal components are selected, so that they form a highly distinctive morphological signature reflecting the anatomical and geometric context around each voxel. Moreover, the way in which the optimal Gabor attributes are constructed is independent of the underlying image modalities or contents, which renders DRAMMS generally applicable to diverse registration tasks. A second contribution of DRAMMS is that it modulates the registration by assigning higher weights to those voxels having higher ability to establish unique (hence reliable) correspondences across images, therefore reducing the negative impact of those regions that are less capable of finding correspondences (such as outlier regions). A continuously-valued weighting function named “mutual-saliency” is developed to reflect the matching uniqueness between a pair of voxels implied by the tentative transformation. As a result, voxels do not contribute equally as in most voxel-wise methods, nor in isolation as in landmark/feature-based methods. Instead, they contribute according to the continuously-valued mutual-saliency map, which dynamically evolves during the registration process. Experiments in simulated images, inter-subject images, single-/multi-modality images, from brain, heart, and prostate have demonstrated the general applicability and the accuracy of DRAMMS.

Keywords: Image registration, Attribute matching, Gabor filter bank, Mutual-saliency, Outlier data

To access this article, please choose from the options below

Login to an existing account or Register a new account.

  • Purchase this article for 31.50 USD (You must login/register to purchase this article)

    Online access for 24 hours. The PDF version can be downloaded as your permanent record.

  • Subscribe to this title

    Get unlimited online access to this article and all other articles in this title 24/7 for one year.

  • Claim access now

    For current subscribers with Society Membership or Account Number.

  • Visit SciVerse ScienceDirect to see if you have access via your institution.
 

PII: S1361-8415(10)00094-0

doi:10.1016/j.media.2010.07.002

Medical Image Analysis
Volume 15, Issue 4 , Pages 622-639, August 2011