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Guillaume Damiand

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Directly Computing the Generators of Image Homology using Graph Pyramids

Peltier S., Ion A., Kropatsch W.g., Damiand G., Haxhimusa Y.
Image and Vision Computing (IMAVIS)
Volume 27, Number 7, pages 846-853, June 2009

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Abstract: We introduce a method for computing homology groups and their generators of a 2D image, using a hierarchical structure i.e. irregular graph pyramid. Starting from an image, a hierarchy of the image is built, by two operations that preserve homology of each region. Instead of computing homology generators in the base where the number of entities (cells) is large, we first reduce the number of cells by a graph pyramid. Then homology generators are computed efficiently on the top level of the pyramid, since the number of cells is small, and a top down process is then used to deduce homology generators in any level of the pyramid, including the base level i.e. the initial image. The produced generators fit on the object boundaries. A unique set of generators, called the minimal set, is defined and its computation is discussed. We show that the new method produces valid homology generators and present some experimental results.

Keywords: Homology generators; Irregular graph pyramids

BibTex references

@Article{PeltierAl09,
      author = {Peltier, S. and Ion, A. and Kropatsch, W.g. and Damiand, G. and Haxhimusa, Y.},
      title = {Directly Computing the Generators of Image Homology using Graph Pyramids},
      journal = {Image and Vision Computing (IMAVIS)},
      publisher = {Elsevier},
      volume = {27},
      number = {7},
      pages = {846-853},
      month = {June},
      year = {2009},
      keywords = {Homology generators; Irregular graph pyramids},
      url = {https://dx.doi.org/10.1016/j.imavis.2008.06.009}
}

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