Local Mutual Information for Dissimilarity-Based Image Segmentation
Connective segmentation based on the definition
of a dissimilarity measure on pairs of adjacent pixels is an
appealing framework to develop new hierarchical segmentation
methods. Usually, the dissimilarity is fully determined
by the intensity values of the considered pair of adjacent
pixels, so that it is independent of the values of the other image
pixels. In this paper, we explore dissimilarity measures
depending on the overall image content encapsulated in its
local mutual information and show its invariance to information
preserving transforms. This is investigated in the framework
of the connective segmentation and constrained connectivity
paradigms and leads to the concept of dependent
connectivities. An efficient probability estimator based on
depth functions is proposed to handle multi-dimensional images.
Experiments conducted on hyper-spectral and multiangular
remote sensing images highlight the robustness of
the proposed approach.
GUEGUEN Lionel;
VELASCO-FORERO Santiago;
SOILLE Pierre;
2014-11-19
SPRINGER
JRC68079
0924-9907,
http://link.springer.com/article/10.1007%2Fs10851-013-0432-9,
https://publications.jrc.ec.europa.eu/repository/handle/JRC68079,
10.1007/s10851-013-0432-9,
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