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Significance Tests and Statistical Inequalities for Segmentation by Region Growing on Graph
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Significance Tests and Statistical Inequalities for Segmentation by Region Growing on Graph
Guillaume Née1, 2 , Stéphanie Jehan-Besson3 , Luc Brun1 and Marinette Revenu1 
| (1) |
GREYC - UMR CNRS 6072, 14050 Caen Cedex, France |
| (2) |
General Electric Healthcare, 78140 Vélizy, France |
| (3) |
LIMOS - UMR CNRS 6158, 63173 Aubière cedex, France |
Abstract
Bottom-up segmentation methods merge similar neighboring regions according to a decision rule and a merging order. In this
paper, we propose a contribution for each of these two points. Firstly, under statistical hypothesis of similarity, we provide
an improved decision rule for region merging based on significance tests and the recent statistical inequality of McDiarmid.
Secondly, we propose a dynamic merging order based on our merging predicate. This last heuristic is justified by considering
an energy minimisation framework. Experimental results on both natural and medical images show the validity of our method.
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