We propose a general class of label configuration priors for
continuous multi-label optimization problems. In contrast to
MRF-based approaches, the proposed framework unifies label
configuration energies such as minimum description length priors,
co-occurrence priors and hierarchical label cost priors. Moreover,
it does not require any preprocessing in terms of super-pixel
estimation. All problems are solved using efficient primal-dual
algorithms which scale better with the number of labels than the
alpha-expansion method commonly used in the MRF setting.
Experimental results confirm that label configuration priors lead to
drastic improvements in segmentation. In particular, the
hierarchical prior allows to jointly compute a semantic segmentation
and a scene classification.
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We propose a general class of label configuration priors for
continuous multi-label optimization problems. In contrast to
MRF-based approaches, the proposed framework unifies label
configuration energies such as minimum description length priors,
co-occurrence priors and hierarchical label cost priors. Moreover,
it does not require any preprocessing in terms of super-pixel
estimation. All problems are solved using efficient primal-dual
algorithms which scale better with the...
»