Facial Shape Spaces from Surface Normals

  • Authors:
  • Simone Ceolin;William A. Smith;Edwin Hancock

  • Affiliations:
  • Computer Vision and Pattern Recognition Group,Computer Science, University of York Heslington, York, United Kingdom YO10-5DD;Computer Vision and Pattern Recognition Group,Computer Science, University of York Heslington, York, United Kingdom YO10-5DD;Computer Vision and Pattern Recognition Group,Computer Science, University of York Heslington, York, United Kingdom YO10-5DD

  • Venue:
  • ICIAR '08 Proceedings of the 5th international conference on Image Analysis and Recognition
  • Year:
  • 2008

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Abstract

In this paper, we draw on ideas from the field of statistical shape analysis to construct shape-spaces that span facial expressions and gender, and use the resulting shape-model to perform face recognition under varying expression and gender. Our novel contribution is to show how to construct shape-spaces over fields of surface normals rather than Cartesian landmark points. According to this model face needle-maps (or fields of surface normals) are points in a high-dimensional manifold referred to as a shape-space. We compute geodesic distances to compare the similarity between faces and gender difference.