Scale-based Gaussian coverings: combining intra and inter mixture models in image segmentation (Q845422)
From MaRDI portal
| This is the item page for this Wikibase entity, intended for internal use and editing purposes. Please use this page instead for the normal view: Scale-based Gaussian coverings: combining intra and inter mixture models in image segmentation |
scientific article; zbMATH DE number 5664170
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Scale-based Gaussian coverings: combining intra and inter mixture models in image segmentation |
scientific article; zbMATH DE number 5664170 |
Statements
Scale-based Gaussian coverings: combining intra and inter mixture models in image segmentation (English)
0 references
29 January 2010
0 references
Summary: By a ``covering'' we mean a Gaussian mixture model fit to observed data. Approximations of the Bayes factor can be availed of to judge model fit to the data within a given Gaussian mixture model. Between families of Gaussian mixture models, we propose the Rényi quadratic entropy as an excellent and tractable model comparison framework. We exemplify this using the segmentation of an MRI image volume, based (1) on a direct Gaussian mixture model applied to the marginal distribution function, and (2) Gaussian model fit through k-means applied to the 4D multivalued image volume furnished by the wavelet transform. Visual preference for one model over another is not immediate. The Rényi quadratic entropy allows us to show clearly that one of these modelings is superior to the other.
0 references
image segmentation
0 references
clustering
0 references
model selection
0 references
minimum description length
0 references
Bayes factor
0 references
Rényi entropy
0 references
Shannon entropy
0 references
0.8939102
0 references
0.88367546
0 references
0.8773922
0 references
0.8765639
0 references
0.87413156
0 references
0.8695264
0 references