Skip to main content
Presentation
Efficient population registration of 3D data
International Conference of Computer Vision (2005)
  • Lilla Zöllei, Massachusetts Institute of Technology
  • Erik G Learned-Miller, University of Massachusetts - Amherst
  • Eric Grimson, Massachusetts Institute of Technology
  • William Wells, Massachusetts Institute of Technology
Abstract

We present a population registration framework that acts on large collections or populations of data volumes. The data alignment procedure runs in a simultaneous fashion, with every member of the population approaching the central tendency of the collection at the same time. Such a mechanism eliminates the need for selecting a particular reference frame a priori, resulting in a non-biased estimate of a digital atlas. Our algorithm adopts an affine congealing framework with an information theoretic objective function and is optimized via a gradientbased stochastic approximation process embedded in a multi-resolution setting. We present experimental results on both synthetic and real images.

Disciplines
Publication Date
2005
Citation Information
Lilla Zöllei, Erik G Learned-Miller, Eric Grimson and William Wells. "Efficient population registration of 3D data" International Conference of Computer Vision (2005)
Available at: http://works.bepress.com/erik_learned_miller/25/