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Guillaume Damiand

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Using 2D Topological Map Information in a Markovian Image Segmentation

Damiand G., Alata O., Bihoreau C.
Proc. of 11th International Conference on Discrete Geometry for Computer Imagery (DGCI)
Lecture Notes in Computer Science 2886, pages 288-297, November 2003, Naples, Italy

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Abstract: Topological map is a mathematical model of labeled image representation which contains both topological and geometrical information. In this work, we use this model to improve a Markovian segmentation algorithm. Image segmentation methods based on Markovian assumption consist in optimizing a Gibbs energy function. This energy function can be given by a sum of potentials which could be based on the shape or the size of a region, the number of adjacencies,... and can be computed by using topological map. In this work we propose the integration of a new potential: the global linearity of the boundaries, and show how this potential can be extracted from the topological map. Moreover, to decrease the complexity of our algorithm, we propose a local modification of the topological map in order to avoid the reconstruction of the entire structure.

Keywords: Markovian segmentation; topological maps; region segmentation; boundaries linearity.

BibTex references

@InProceedings{DAB03,
      author = {Damiand, G. and Alata, O. and Bihoreau, C.},
      title = {Using 2D Topological Map Information in a Markovian Image Segmentation},
      booktitle = {Proc. of 11th International Conference on Discrete Geometry for Computer Imagery (DGCI)},
      series = {Lecture Notes in Computer Science},
      publisher = {Springer Berlin/Heidelberg},
      volume = {2886},
      pages = {288-297},
      month = {November},
      year = {2003},
      address = {Naples, Italy},
      keywords = {Markovian segmentation; topological maps; region segmentation; boundaries linearity.},
      url = {https://doi.org/10.1007/978-3-540-39966-7_27}
}

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