Geodesic Regression on the Grassmannian Supplementary Material

نویسندگان

  • Yi Hong
  • Roland Kwitt
  • Nikhil Singh
  • Brad Davis
  • Nuno Vasconcelos
  • Marc Niethammer
چکیده

This supplementary material contains technical details on the structure of the Grassmann manifold (Section A), our shooting strategy for Grassmannian geodesic regression (GGR, Section B), and the continuous piecewise GGR (Section C). The references to sections that appear in the paper [2] are marked as [Paper, §xxx]. The source code and further updates are also provided here: https://[email protected]/yi_hong/ggr.git.

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تاریخ انتشار 2014