Dynamic Shapes Average

Abstract

A framework for computing shape statistics in general, and average in particular, for dynamic shapes is introduced in this paper. Given a metric d(-,-) on the set of static shapes, the empirical mean of N static shapes, C(sub 1),...,C(sub N), is defined by arg min(sub C) 1/N SIGMA (sup N, sub i=1) d(C,C(sub i))(exp 2). The purpose of this paper is to extend this shape average work to the case of N dynamic shapes and to give an efficient algorithm to compute it. The key concept is to combine the static shape statistics approach with a time-alignment step. To align the time scale while performing the shape average the authors use dynamic time warping, adapted to deal with dynamic shapes. The proposed technique is independent of the particular choice of the shape metric d(.,.). They present the underlying concepts, a number of examples, and conclude with a variational formulation to address the dynamic shape average problem. They also demonstrate how to use these results for comparing different types of dynamics. Although only average is addressed in this paper, other shape statistics can be similarly obtained following the framework proposed here.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 2005
Accession Number
ADA437810

Entities

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  • Guillermo Sapiro
  • Pierre Maurel

Organizations

  • University of Minnesota

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  • Biomedical
  • Materials and Manufacturing Processes

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