sklearn.datasets.fetch_olivetti_faces#

sklearn.datasets.fetch_olivetti_faces(*, data_home=None, shuffle=False, random_state=0, download_if_missing=True, return_X_y=False)[source]#

Load the Olivetti faces data-set from AT&T (classification).

Download it if necessary.

Classes

40

Samples total

400

Dimensionality

4096

Features

real, between 0 and 1

Read more in the User Guide.

Parameters:
data_homestr or path-like, default=None

Specify another download and cache folder for the datasets. By default all scikit-learn data is stored in ‘~/scikit_learn_data’ subfolders.

shufflebool, default=False

If True the order of the dataset is shuffled to avoid having images of the same person grouped.

random_stateint, RandomState instance or None, default=0

Determines random number generation for dataset shuffling. Pass an int for reproducible output across multiple function calls. See Glossary.

download_if_missingbool, default=True

If False, raise an OSError if the data is not locally available instead of trying to download the data from the source site.

return_X_ybool, default=False

If True, returns (data, target) instead of a Bunch object. See below for more information about the data and target object.

New in version 0.22.

Returns:
dataBunch

Dictionary-like object, with the following attributes.

data: ndarray, shape (400, 4096)

Each row corresponds to a ravelled face image of original size 64 x 64 pixels.

imagesndarray, shape (400, 64, 64)

Each row is a face image corresponding to one of the 40 subjects of the dataset.

targetndarray, shape (400,)

Labels associated to each face image. Those labels are ranging from 0-39 and correspond to the Subject IDs.

DESCRstr

Description of the modified Olivetti Faces Dataset.

(data, target)tuple if return_X_y=True

Tuple with the data and target objects described above.

New in version 0.22.

Examples using sklearn.datasets.fetch_olivetti_faces#

Online learning of a dictionary of parts of faces

Online learning of a dictionary of parts of faces

Faces dataset decompositions

Faces dataset decompositions

Pixel importances with a parallel forest of trees

Pixel importances with a parallel forest of trees

Face completion with a multi-output estimators

Face completion with a multi-output estimators