opencv/modules/ml/doc/normal_bayes_classifier.rst

64 lines
3.4 KiB
ReStructuredText
Raw Normal View History

2011-03-08 23:22:24 +01:00
.. _Bayes Classifier:
Normal Bayes Classifier
=======================
.. highlight:: cpp
This simple classification model assumes that feature vectors from each class are normally distributed (though, not necessarily independently distributed). So, the whole data distribution function is assumed to be a Gaussian mixture, one component per class. Using the training data the algorithm estimates mean vectors and covariance matrices for every class, and then it uses them for prediction.
.. [Fukunaga90] K. Fukunaga. *Introduction to Statistical Pattern Recognition*. second ed., New York: Academic Press, 1990.
CvNormalBayesClassifier
-----------------------
.. ocv:class:: CvNormalBayesClassifier : public CvStatModel
Bayes classifier for normally distributed data.
CvNormalBayesClassifier::CvNormalBayesClassifier
------------------------------------------------
Default and training constructors.
2011-02-26 12:05:10 +01:00
.. ocv:function:: CvNormalBayesClassifier::CvNormalBayesClassifier()
2011-02-26 12:05:10 +01:00
.. ocv:function:: CvNormalBayesClassifier::CvNormalBayesClassifier( const Mat& trainData, const Mat& responses, const Mat& varIdx=Mat(), const Mat& sampleIdx=Mat() )
2011-02-26 12:05:10 +01:00
.. ocv:function:: CvNormalBayesClassifier::CvNormalBayesClassifier( const CvMat* trainData, const CvMat* responses, const CvMat* varIdx=0, const CvMat* sampleIdx=0 )
2011-02-26 12:05:10 +01:00
.. ocv:pyfunction:: cv2.NormalBayesClassifier([trainData, responses[, varIdx[, sampleIdx]]]) -> <NormalBayesClassifier object>
2011-02-26 12:05:10 +01:00
The constructors follow conventions of :ocv:func:`CvStatModel::CvStatModel`. See :ocv:func:`CvStatModel::train` for parameters descriptions.
2011-03-03 08:29:55 +01:00
CvNormalBayesClassifier::train
------------------------------
Trains the model.
.. ocv:function:: bool CvNormalBayesClassifier::train( const Mat& trainData, const Mat& responses, const Mat& varIdx = Mat(), const Mat& sampleIdx=Mat(), bool update=false )
.. ocv:function:: bool CvNormalBayesClassifier::train( const CvMat* trainData, const CvMat* responses, const CvMat* varIdx = 0, const CvMat* sampleIdx=0, bool update=false )
.. ocv:pyfunction:: cv2.NormalBayesClassifier.train(trainData, responses[, varIdx[, sampleIdx[, update]]]) -> retval
:param update: Identifies whether the model should be trained from scratch (``update=false``) or should be updated using the new training data (``update=true``).
The method trains the Normal Bayes classifier. It follows the conventions of the generic :ocv:func:`CvStatModel::train` approach with the following limitations:
2011-05-15 21:15:36 +02:00
* Only ``CV_ROW_SAMPLE`` data layout is supported.
* Input variables are all ordered.
* Output variable is categorical , which means that elements of ``responses`` must be integer numbers, though the vector may have the ``CV_32FC1`` type.
2011-05-15 21:15:36 +02:00
* Missing measurements are not supported.
CvNormalBayesClassifier::predict
--------------------------------
Predicts the response for sample(s).
2011-06-16 14:48:23 +02:00
.. ocv:function:: float CvNormalBayesClassifier::predict( const Mat& samples, Mat* results=0 ) const
.. ocv:function:: float CvNormalBayesClassifier::predict( const CvMat* samples, CvMat* results=0 ) const
.. ocv:pyfunction:: cv2.NormalBayesClassifier.predict(samples) -> retval, results
The method estimates the most probable classes for input vectors. Input vectors (one or more) are stored as rows of the matrix ``samples``. In case of multiple input vectors, there should be one output vector ``results``. The predicted class for a single input vector is returned by the method.
The function is parallelized with the TBB library.