[−][src]Trait opencv::ml::prelude::EM
Required methods
Loading content...Provided methods
pub fn get_clusters_number(&self) -> Result<i32>
[src]
The number of mixture components in the Gaussian mixture model. Default value of the parameter is EM::DEFAULT_NCLUSTERS=5. Some of %EM implementation could determine the optimal number of mixtures within a specified value range, but that is not the case in ML yet.
See also
setClustersNumber
pub fn set_clusters_number(&mut self, val: i32) -> Result<()>
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The number of mixture components in the Gaussian mixture model. Default value of the parameter is EM::DEFAULT_NCLUSTERS=5. Some of %EM implementation could determine the optimal number of mixtures within a specified value range, but that is not the case in ML yet.
See also
setClustersNumber getClustersNumber
pub fn get_covariance_matrix_type(&self) -> Result<i32>
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Constraint on covariance matrices which defines type of matrices. See EM::Types.
See also
setCovarianceMatrixType
pub fn set_covariance_matrix_type(&mut self, val: i32) -> Result<()>
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Constraint on covariance matrices which defines type of matrices. See EM::Types.
See also
setCovarianceMatrixType getCovarianceMatrixType
pub fn get_term_criteria(&self) -> Result<TermCriteria>
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The termination criteria of the %EM algorithm. The %EM algorithm can be terminated by the number of iterations termCrit.maxCount (number of M-steps) or when relative change of likelihood logarithm is less than termCrit.epsilon. Default maximum number of iterations is EM::DEFAULT_MAX_ITERS=100.
See also
setTermCriteria
pub fn set_term_criteria(&mut self, val: TermCriteria) -> Result<()>
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The termination criteria of the %EM algorithm. The %EM algorithm can be terminated by the number of iterations termCrit.maxCount (number of M-steps) or when relative change of likelihood logarithm is less than termCrit.epsilon. Default maximum number of iterations is EM::DEFAULT_MAX_ITERS=100.
See also
setTermCriteria getTermCriteria
pub fn get_weights(&self) -> Result<Mat>
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Returns weights of the mixtures
Returns vector with the number of elements equal to the number of mixtures.
pub fn get_means(&self) -> Result<Mat>
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Returns the cluster centers (means of the Gaussian mixture)
Returns matrix with the number of rows equal to the number of mixtures and number of columns equal to the space dimensionality.
pub fn get_covs(&self, covs: &mut Vector<Mat>) -> Result<()>
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Returns covariation matrices
Returns vector of covariation matrices. Number of matrices is the number of gaussian mixtures, each matrix is a square floating-point matrix NxN, where N is the space dimensionality.
pub fn predict(
&self,
samples: &dyn ToInputArray,
results: &mut dyn ToOutputArray,
flags: i32
) -> Result<f32>
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&self,
samples: &dyn ToInputArray,
results: &mut dyn ToOutputArray,
flags: i32
) -> Result<f32>
Returns posterior probabilities for the provided samples
Parameters
- samples: The input samples, floating-point matrix
- results: The optional output matrix of results. It contains posterior probabilities for each sample from the input
- flags: This parameter will be ignored
C++ default parameters
- results: noArray()
- flags: 0
pub fn predict2(
&self,
sample: &dyn ToInputArray,
probs: &mut dyn ToOutputArray
) -> Result<Vec2d>
[src]
&self,
sample: &dyn ToInputArray,
probs: &mut dyn ToOutputArray
) -> Result<Vec2d>
Returns a likelihood logarithm value and an index of the most probable mixture component for the given sample.
Parameters
- sample: A sample for classification. It should be a one-channel matrix of or size.
- probs: Optional output matrix that contains posterior probabilities of each component given the sample. It has size and CV_64FC1 type.
The method returns a two-element double vector. Zero element is a likelihood logarithm value for the sample. First element is an index of the most probable mixture component for the given sample.
pub fn train_em(
&mut self,
samples: &dyn ToInputArray,
log_likelihoods: &mut dyn ToOutputArray,
labels: &mut dyn ToOutputArray,
probs: &mut dyn ToOutputArray
) -> Result<bool>
[src]
&mut self,
samples: &dyn ToInputArray,
log_likelihoods: &mut dyn ToOutputArray,
labels: &mut dyn ToOutputArray,
probs: &mut dyn ToOutputArray
) -> Result<bool>
Estimate the Gaussian mixture parameters from a samples set.
This variation starts with Expectation step. Initial values of the model parameters will be estimated by the k-means algorithm.
Unlike many of the ML models, %EM is an unsupervised learning algorithm and it does not take responses (class labels or function values) as input. Instead, it computes the Maximum Likelihood Estimate of the Gaussian mixture parameters from an input sample set, stores all the parameters inside the structure: in probs, in means , in covs[k], in weights , and optionally computes the output "class label" for each sample: (indices of the most probable mixture component for each sample).
The trained model can be used further for prediction, just like any other classifier. The trained model is similar to the NormalBayesClassifier.
Parameters
- samples: Samples from which the Gaussian mixture model will be estimated. It should be a one-channel matrix, each row of which is a sample. If the matrix does not have CV_64F type it will be converted to the inner matrix of such type for the further computing.
- logLikelihoods: The optional output matrix that contains a likelihood logarithm value for each sample. It has size and CV_64FC1 type.
- labels: The optional output "class label" for each sample: (indices of the most probable mixture component for each sample). It has size and CV_32SC1 type.
- probs: The optional output matrix that contains posterior probabilities of each Gaussian mixture component given the each sample. It has size and CV_64FC1 type.
C++ default parameters
- log_likelihoods: noArray()
- labels: noArray()
- probs: noArray()
pub fn train_e(
&mut self,
samples: &dyn ToInputArray,
means0: &dyn ToInputArray,
covs0: &dyn ToInputArray,
weights0: &dyn ToInputArray,
log_likelihoods: &mut dyn ToOutputArray,
labels: &mut dyn ToOutputArray,
probs: &mut dyn ToOutputArray
) -> Result<bool>
[src]
&mut self,
samples: &dyn ToInputArray,
means0: &dyn ToInputArray,
covs0: &dyn ToInputArray,
weights0: &dyn ToInputArray,
log_likelihoods: &mut dyn ToOutputArray,
labels: &mut dyn ToOutputArray,
probs: &mut dyn ToOutputArray
) -> Result<bool>
Estimate the Gaussian mixture parameters from a samples set.
This variation starts with Expectation step. You need to provide initial means of mixture components. Optionally you can pass initial weights and covariance matrices of mixture components.
Parameters
- samples: Samples from which the Gaussian mixture model will be estimated. It should be a one-channel matrix, each row of which is a sample. If the matrix does not have CV_64F type it will be converted to the inner matrix of such type for the further computing.
- means0: Initial means of mixture components. It is a one-channel matrix of size. If the matrix does not have CV_64F type it will be converted to the inner matrix of such type for the further computing.
- covs0: The vector of initial covariance matrices of mixture components. Each of covariance matrices is a one-channel matrix of size. If the matrices do not have CV_64F type they will be converted to the inner matrices of such type for the further computing.
- weights0: Initial weights of mixture components. It should be a one-channel floating-point matrix with or size.
- logLikelihoods: The optional output matrix that contains a likelihood logarithm value for each sample. It has size and CV_64FC1 type.
- labels: The optional output "class label" for each sample: (indices of the most probable mixture component for each sample). It has size and CV_32SC1 type.
- probs: The optional output matrix that contains posterior probabilities of each Gaussian mixture component given the each sample. It has size and CV_64FC1 type.
C++ default parameters
- covs0: noArray()
- weights0: noArray()
- log_likelihoods: noArray()
- labels: noArray()
- probs: noArray()
pub fn train_m(
&mut self,
samples: &dyn ToInputArray,
probs0: &dyn ToInputArray,
log_likelihoods: &mut dyn ToOutputArray,
labels: &mut dyn ToOutputArray,
probs: &mut dyn ToOutputArray
) -> Result<bool>
[src]
&mut self,
samples: &dyn ToInputArray,
probs0: &dyn ToInputArray,
log_likelihoods: &mut dyn ToOutputArray,
labels: &mut dyn ToOutputArray,
probs: &mut dyn ToOutputArray
) -> Result<bool>
Estimate the Gaussian mixture parameters from a samples set.
This variation starts with Maximization step. You need to provide initial probabilities to use this option.
Parameters
- samples: Samples from which the Gaussian mixture model will be estimated. It should be a one-channel matrix, each row of which is a sample. If the matrix does not have CV_64F type it will be converted to the inner matrix of such type for the further computing.
- probs0: the probabilities
- logLikelihoods: The optional output matrix that contains a likelihood logarithm value for each sample. It has size and CV_64FC1 type.
- labels: The optional output "class label" for each sample: (indices of the most probable mixture component for each sample). It has size and CV_32SC1 type.
- probs: The optional output matrix that contains posterior probabilities of each Gaussian mixture component given the each sample. It has size and CV_64FC1 type.
C++ default parameters
- log_likelihoods: noArray()
- labels: noArray()
- probs: noArray()
Implementations
impl<'_> dyn EM + '_
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pub fn create() -> Result<Ptr<dyn EM>>
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Creates empty %EM model. The model should be trained then using StatModel::train(traindata, flags) method. Alternatively, you can use one of the EM::train* methods or load it from file using Algorithm::load<EM>(filename).
pub fn load(filepath: &str, node_name: &str) -> Result<Ptr<dyn EM>>
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Loads and creates a serialized EM from a file
Use EM::save to serialize and store an EM to disk. Load the EM from this file again, by calling this function with the path to the file. Optionally specify the node for the file containing the classifier
Parameters
- filepath: path to serialized EM
- nodeName: name of node containing the classifier
C++ default parameters
- node_name: String()