create_class_train_data
— Create a handle for training data for classifiers.
create_class_train_data( : : NumDim : ClassTrainDataHandle)
create_class_train_data
creates a handle for training data
for classifiers. The handle is
returned in ClassTrainDataHandle
.
The dimension of the feature vectors is specified
with NumDim
. Only feature vectors of this length can be added
to the handle.
This operator returns a handle. Note that the state of an instance of this handle type may be changed by specific operators even though the handle is used as an input parameter by those operators.
NumDim
(input_control) number →
(integer)
Number of dimensions of the feature vector.
Default value: 10
ClassTrainDataHandle
(output_control) class_train_data →
(handle)
Handle of the training data.
* Find out which of the two features distinguishes two Classes NameFeature1 := 'Good Feature' NameFeature2 := 'Bad Feature' LengthFeature1 := 3 LengthFeature2 := 2 * Create training data create_class_train_data (LengthFeature1+LengthFeature2,\ ClassTrainDataHandle) * Define the features which are in the training data set_feature_lengths_class_train_data (ClassTrainDataHandle, [LengthFeature1,\ LengthFeature2], [NameFeature1, NameFeature2]) * Add training data * |Feat1| |Feat2| add_sample_class_train_data (ClassTrainDataHandle, 'row', [1,1,1, 2,1 ], 0) add_sample_class_train_data (ClassTrainDataHandle, 'row', [2,2,2, 2,1 ], 1) add_sample_class_train_data (ClassTrainDataHandle, 'row', [1,1,1, 3,4 ], 0) add_sample_class_train_data (ClassTrainDataHandle, 'row', [2,2,2, 3,4 ], 1) add_sample_class_train_data (ClassTrainDataHandle, 'row', [0,0,1, 5,6 ], 0) add_sample_class_train_data (ClassTrainDataHandle, 'row', [2,3,2, 5,6 ], 1) add_sample_class_train_data (ClassTrainDataHandle, 'row', [0,0,1, 5,6 ], 0) add_sample_class_train_data (ClassTrainDataHandle, 'row', [2,3,2, 5,6 ], 1) add_sample_class_train_data (ClassTrainDataHandle, 'row', [0,0,1, 5,6 ], 0) add_sample_class_train_data (ClassTrainDataHandle, 'row', [2,3,2, 5,6 ], 1) * Add more data * ... * Select the better feature with the classifier of your choice select_feature_set_knn (ClassTrainDataHandle, 'greedy', [], [], KNNHandle,\ SelectedFeature, Score) select_feature_set_svm (ClassTrainDataHandle, 'greedy', [], [], SVMHandle,\ SelectedFeature, Score) select_feature_set_mlp (ClassTrainDataHandle, 'greedy', [], [], MLPHandle,\ SelectedFeature, Score) select_feature_set_gmm (ClassTrainDataHandle, 'greedy', [], [], GMMHandle,\ SelectedFeature, Score) * Use the classifier * ...
If the parameters are valid, the operator create_class_train_data
returns the value 2 (H_MSG_TRUE). If necessary, an exception is raised.
add_sample_class_knn
,
train_class_knn
create_class_svm
,
create_class_mlp
select_feature_set_knn
,
read_class_knn
Foundation