protoclass.extraction.GaborBankExtraction

class protoclass.extraction.GaborBankExtraction(base_modality, frequencies, alphas, gammas, scale_sigmas)[source]

Edge signal extraction from standalone modality.

Parameters:

base_modality : object

The base modality on which the normalization will be applied. The base modality should inherate from StandaloneModality class.

frequencies : ndarray, shape (n_frequency, )

Vector containing the different frequencies of the Gabor filter bank.

alphas : ndarray, shape (n_alpha, )

Vector containing the different rotation angles of the filter bank in x-y plane.

gammas : ndarray, shape (n_gamma, )

Vector containing the different rotations angles of the filer bank in the z plane.

scale_sigmas : ndarray, shape (3, )

The standard deviations x, y, and z for each direction of the filter bank.

Attributes

base_modality_ (object) The base modality on which the normalization will be applied. The base modality should inherate from StandaloneModality class.
roi_data_ (ndarray, shape flexible) Corresponds to the index to consider in order to fit the data.

Methods

fit(modality[, ground_truth, cat]) Compute the images images.
load_from_pickles(filename) Function to load a normalization object.
save_to_pickles(filename) Function to save a normalizatio object using pickles.
transform(modality[, ground_truth, cat]) Extract the data from the given modality.
__init__(base_modality, frequencies, alphas, gammas, scale_sigmas)[source]

Methods

__init__(base_modality, frequencies, alphas, ...)
fit(modality[, ground_truth, cat]) Compute the images images.
load_from_pickles(filename) Function to load a normalization object.
save_to_pickles(filename) Function to save a normalizatio object using pickles.
transform(modality[, ground_truth, cat]) Extract the data from the given modality.
fit(modality, ground_truth=None, cat=None)[source]

Compute the images images.

Parameters:

modality : object of type TemporalModality

The modality object of interest.

ground-truth : object of type GTModality or None

The ground-truth of GTModality. If None, the whole data will be considered.

cat : str or None

String corresponding at the ground-truth of interest. Cannot be None if ground-truth is not None.

load_from_pickles(filename)

Function to load a normalization object.

Parameters:

filename : str

Filename to the pickle file. The extension should be .p.

Returns:

bpp : object

Returns the loaded object.

save_to_pickles(filename)

Function to save a normalizatio object using pickles.

Parameters:

filename : str

Filename to the pickle file. The extension should be .p.

Returns:

None

transform(modality, ground_truth=None, cat=None)[source]

Extract the data from the given modality.

Parameters:

modality : object of type StandaloneModality

The modality object of interest.

ground-truth : object of type GTModality or None

The ground-truth of GTModality. If None, the whole data will be considered.

cat : str or None

String corresponding at the ground-truth of interest. Cannot be None if ground-truth is not None.

Returns

——

data : ndarray, shape (n_sample, n_feature)

A matrix containing the features extracted. The number of samples is equal to the number of positive label in the ground-truth.