Proposals:Refactoring Statistics Framework 2007 Background: Difference between revisions
From KitwarePublic
Jump to navigationJump to search
No edit summary |
|||
(5 intermediate revisions by the same user not shown) | |||
Line 1: | Line 1: | ||
[[Image:DudaClassifier.png]] | [[Image:DudaClassifier.png]] | ||
[[Image:StatisticalClassificationFramework.png]] | [[Image:StatisticalClassificationFramework.png]] | ||
The main components of a classification framework are | |||
# Input | |||
## Image | |||
## Data points | |||
#Membership models | |||
## Can be manually set or automatically generated from the sample data | |||
## Estimators are available to generate membership functions ( ImageModelEstimatorBase, ImageGuassianModelEstimator,ExpectationMaximizationMixtureModelEstimator ) | |||
## Some classes are named with Estimator suffix but they do more than just estimating membership functions | |||
### itkKdTreeBasedKmeansEstimator | |||
# Distance functions | |||
# Decision Rules | |||
# Classifiers | |||
Note: | |||
# Classifiers provide interface that integrates all the other components. Classifiers provide a common framework | |||
# ITK also contains classes which combine specific types of the different components into one Huge framework such as itkScalarImageKmeansImageFilter and itkBayesianClassifierImageFilter. | |||
## itkScalarImageKmeansImageFilter: EuclideanDistance, KdTreeBasedKmeansEstimator, SampleClassifier, MinimumDecisionRule | |||
## itkBayesianClassifierImageFilter: Bayesian Estimator, MaximumDecisionRule |
Latest revision as of 21:19, 16 July 2008
The main components of a classification framework are
- Input
- Image
- Data points
- Membership models
- Can be manually set or automatically generated from the sample data
- Estimators are available to generate membership functions ( ImageModelEstimatorBase, ImageGuassianModelEstimator,ExpectationMaximizationMixtureModelEstimator )
- Some classes are named with Estimator suffix but they do more than just estimating membership functions
- itkKdTreeBasedKmeansEstimator
- Distance functions
- Decision Rules
- Classifiers
Note:
- Classifiers provide interface that integrates all the other components. Classifiers provide a common framework
- ITK also contains classes which combine specific types of the different components into one Huge framework such as itkScalarImageKmeansImageFilter and itkBayesianClassifierImageFilter.
- itkScalarImageKmeansImageFilter: EuclideanDistance, KdTreeBasedKmeansEstimator, SampleClassifier, MinimumDecisionRule
- itkBayesianClassifierImageFilter: Bayesian Estimator, MaximumDecisionRule