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aaronreidsmith / scikit-learn   python

Repository URL to install this package:

Version: 0.22 

/ feature_extraction / image.py

"""
The :mod:`sklearn.feature_extraction.image` submodule gathers utilities to
extract features from images.
"""

# Authors: Emmanuelle Gouillart <emmanuelle.gouillart@normalesup.org>
#          Gael Varoquaux <gael.varoquaux@normalesup.org>
#          Olivier Grisel
#          Vlad Niculae
# License: BSD 3 clause

from itertools import product
import numbers
import numpy as np
from scipy import sparse
from numpy.lib.stride_tricks import as_strided

from ..utils import check_array, check_random_state, deprecated
from ..base import BaseEstimator

__all__ = ['PatchExtractor',
           'extract_patches_2d',
           'grid_to_graph',
           'img_to_graph',
           'reconstruct_from_patches_2d']

###############################################################################
# From an image to a graph


def _make_edges_3d(n_x, n_y, n_z=1):
    """Returns a list of edges for a 3D image.

    Parameters
    ----------
    n_x : integer
        The size of the grid in the x direction.
    n_y : integer
        The size of the grid in the y direction.
    n_z : integer, optional
        The size of the grid in the z direction, defaults to 1
    """
    vertices = np.arange(n_x * n_y * n_z).reshape((n_x, n_y, n_z))
    edges_deep = np.vstack((vertices[:, :, :-1].ravel(),
                            vertices[:, :, 1:].ravel()))
    edges_right = np.vstack((vertices[:, :-1].ravel(),
                             vertices[:, 1:].ravel()))
    edges_down = np.vstack((vertices[:-1].ravel(), vertices[1:].ravel()))
    edges = np.hstack((edges_deep, edges_right, edges_down))
    return edges


def _compute_gradient_3d(edges, img):
    _, n_y, n_z = img.shape
    gradient = np.abs(img[edges[0] // (n_y * n_z),
                      (edges[0] % (n_y * n_z)) // n_z,
                      (edges[0] % (n_y * n_z)) % n_z] -
                      img[edges[1] // (n_y * n_z),
                      (edges[1] % (n_y * n_z)) // n_z,
                      (edges[1] % (n_y * n_z)) % n_z])
    return gradient


# XXX: Why mask the image after computing the weights?

def _mask_edges_weights(mask, edges, weights=None):
    """Apply a mask to edges (weighted or not)"""
    inds = np.arange(mask.size)
    inds = inds[mask.ravel()]
    ind_mask = np.logical_and(np.in1d(edges[0], inds),
                              np.in1d(edges[1], inds))
    edges = edges[:, ind_mask]
    if weights is not None:
        weights = weights[ind_mask]
    if len(edges.ravel()):
        maxval = edges.max()
    else:
        maxval = 0
    order = np.searchsorted(np.unique(edges.ravel()), np.arange(maxval + 1))
    edges = order[edges]
    if weights is None:
        return edges
    else:
        return edges, weights


def _to_graph(n_x, n_y, n_z, mask=None, img=None,
              return_as=sparse.coo_matrix, dtype=None):
    """Auxiliary function for img_to_graph and grid_to_graph
    """
    edges = _make_edges_3d(n_x, n_y, n_z)

    if dtype is None:
        if img is None:
            dtype = np.int
        else:
            dtype = img.dtype

    if img is not None:
        img = np.atleast_3d(img)
        weights = _compute_gradient_3d(edges, img)
        if mask is not None:
            edges, weights = _mask_edges_weights(mask, edges, weights)
            diag = img.squeeze()[mask]
        else:
            diag = img.ravel()
        n_voxels = diag.size
    else:
        if mask is not None:
            mask = mask.astype(dtype=np.bool, copy=False)
            mask = np.asarray(mask, dtype=np.bool)
            edges = _mask_edges_weights(mask, edges)
            n_voxels = np.sum(mask)
        else:
            n_voxels = n_x * n_y * n_z
        weights = np.ones(edges.shape[1], dtype=dtype)
        diag = np.ones(n_voxels, dtype=dtype)

    diag_idx = np.arange(n_voxels)
    i_idx = np.hstack((edges[0], edges[1]))
    j_idx = np.hstack((edges[1], edges[0]))
    graph = sparse.coo_matrix((np.hstack((weights, weights, diag)),
                              (np.hstack((i_idx, diag_idx)),
                               np.hstack((j_idx, diag_idx)))),
                              (n_voxels, n_voxels),
                              dtype=dtype)
    if return_as is np.ndarray:
        return graph.toarray()
    return return_as(graph)


def img_to_graph(img, mask=None, return_as=sparse.coo_matrix, dtype=None):
    """Graph of the pixel-to-pixel gradient connections

    Edges are weighted with the gradient values.

    Read more in the :ref:`User Guide <image_feature_extraction>`.

    Parameters
    ----------
    img : ndarray, 2D or 3D
        2D or 3D image
    mask : ndarray of booleans, optional
        An optional mask of the image, to consider only part of the
        pixels.
    return_as : np.ndarray or a sparse matrix class, optional
        The class to use to build the returned adjacency matrix.
    dtype : None or dtype, optional
        The data of the returned sparse matrix. By default it is the
        dtype of img

    Notes
    -----
    For scikit-learn versions 0.14.1 and prior, return_as=np.ndarray was
    handled by returning a dense np.matrix instance.  Going forward, np.ndarray
    returns an np.ndarray, as expected.

    For compatibility, user code relying on this method should wrap its
    calls in ``np.asarray`` to avoid type issues.
    """
    img = np.atleast_3d(img)
    n_x, n_y, n_z = img.shape
    return _to_graph(n_x, n_y, n_z, mask, img, return_as, dtype)


def grid_to_graph(n_x, n_y, n_z=1, mask=None, return_as=sparse.coo_matrix,
                  dtype=np.int):
    """Graph of the pixel-to-pixel connections

    Edges exist if 2 voxels are connected.

    Parameters
    ----------
    n_x : int
        Dimension in x axis
    n_y : int
        Dimension in y axis
    n_z : int, optional, default 1
        Dimension in z axis
    mask : ndarray of booleans, optional
        An optional mask of the image, to consider only part of the
        pixels.
    return_as : np.ndarray or a sparse matrix class, optional
        The class to use to build the returned adjacency matrix.
    dtype : dtype, optional, default int
        The data of the returned sparse matrix. By default it is int

    Notes
    -----
    For scikit-learn versions 0.14.1 and prior, return_as=np.ndarray was
    handled by returning a dense np.matrix instance.  Going forward, np.ndarray
    returns an np.ndarray, as expected.

    For compatibility, user code relying on this method should wrap its
    calls in ``np.asarray`` to avoid type issues.
    """
    return _to_graph(n_x, n_y, n_z, mask=mask, return_as=return_as,
                     dtype=dtype)


###############################################################################
# From an image to a set of small image patches

def _compute_n_patches(i_h, i_w, p_h, p_w, max_patches=None):
    """Compute the number of patches that will be extracted in an image.

    Read more in the :ref:`User Guide <image_feature_extraction>`.

    Parameters
    ----------
    i_h : int
        The image height
    i_w : int
        The image with
    p_h : int
        The height of a patch
    p_w : int
        The width of a patch
    max_patches : integer or float, optional default is None
        The maximum number of patches to extract. If max_patches is a float
        between 0 and 1, it is taken to be a proportion of the total number
        of patches.
    """
    n_h = i_h - p_h + 1
    n_w = i_w - p_w + 1
    all_patches = n_h * n_w

    if max_patches:
        if (isinstance(max_patches, (numbers.Integral))
                and max_patches < all_patches):
            return max_patches
        elif (isinstance(max_patches, (numbers.Integral))
              and max_patches >= all_patches):
            return all_patches
        elif (isinstance(max_patches, (numbers.Real))
                and 0 < max_patches < 1):
            return int(max_patches * all_patches)
        else:
            raise ValueError("Invalid value for max_patches: %r" % max_patches)
    else:
        return all_patches


def _extract_patches(arr, patch_shape=8, extraction_step=1):
    """Extracts patches of any n-dimensional array in place using strides.

    Given an n-dimensional array it will return a 2n-dimensional array with
    the first n dimensions indexing patch position and the last n indexing
    the patch content. This operation is immediate (O(1)). A reshape
    performed on the first n dimensions will cause numpy to copy data, leading
    to a list of extracted patches.

    Read more in the :ref:`User Guide <image_feature_extraction>`.

    Parameters
    ----------
    arr : ndarray
        n-dimensional array of which patches are to be extracted

    patch_shape : integer or tuple of length arr.ndim
        Indicates the shape of the patches to be extracted. If an
        integer is given, the shape will be a hypercube of
        sidelength given by its value.

    extraction_step : integer or tuple of length arr.ndim
        Indicates step size at which extraction shall be performed.
        If integer is given, then the step is uniform in all dimensions.


    Returns
    -------
    patches : strided ndarray
        2n-dimensional array indexing patches on first n dimensions and
        containing patches on the last n dimensions. These dimensions
        are fake, but this way no data is copied. A simple reshape invokes
        a copying operation to obtain a list of patches:
        result.reshape([-1] + list(patch_shape))
    """

    arr_ndim = arr.ndim

    if isinstance(patch_shape, numbers.Number):
        patch_shape = tuple([patch_shape] * arr_ndim)
    if isinstance(extraction_step, numbers.Number):
        extraction_step = tuple([extraction_step] * arr_ndim)

    patch_strides = arr.strides

    slices = tuple(slice(None, None, st) for st in extraction_step)
    indexing_strides = arr[slices].strides

    patch_indices_shape = ((np.array(arr.shape) - np.array(patch_shape)) //
                           np.array(extraction_step)) + 1

    shape = tuple(list(patch_indices_shape) + list(patch_shape))
    strides = tuple(list(indexing_strides) + list(patch_strides))

    patches = as_strided(arr, shape=shape, strides=strides)
    return patches

@deprecated("The function feature_extraction.image.extract_patches has been "
            "deprecated in 0.22 and will be removed in 0.24.")
def extract_patches(arr, patch_shape=8, extraction_step=1):
    """Extracts patches of any n-dimensional array in place using strides.

    Given an n-dimensional array it will return a 2n-dimensional array with
    the first n dimensions indexing patch position and the last n indexing
    the patch content. This operation is immediate (O(1)). A reshape
    performed on the first n dimensions will cause numpy to copy data, leading
    to a list of extracted patches.

    Read more in the :ref:`User Guide <image_feature_extraction>`.

    Parameters
    ----------
    arr : ndarray
        n-dimensional array of which patches are to be extracted

    patch_shape : integer or tuple of length arr.ndim
        Indicates the shape of the patches to be extracted. If an
        integer is given, the shape will be a hypercube of
        sidelength given by its value.

    extraction_step : integer or tuple of length arr.ndim
        Indicates step size at which extraction shall be performed.
        If integer is given, then the step is uniform in all dimensions.


    Returns
    -------
    patches : strided ndarray
        2n-dimensional array indexing patches on first n dimensions and
        containing patches on the last n dimensions. These dimensions
        are fake, but this way no data is copied. A simple reshape invokes
        a copying operation to obtain a list of patches:
        result.reshape([-1] + list(patch_shape))
    """
    return _extract_patches(arr, patch_shape=patch_shape,
                            extraction_step=extraction_step)


def extract_patches_2d(image, patch_size, max_patches=None, random_state=None):
    """Reshape a 2D image into a collection of patches

    The resulting patches are allocated in a dedicated array.

    Read more in the :ref:`User Guide <image_feature_extraction>`.

    Parameters
    ----------
    image : array, shape = (image_height, image_width) or
        (image_height, image_width, n_channels)
        The original image data. For color images, the last dimension specifies
        the channel: a RGB image would have `n_channels=3`.

    patch_size : tuple of ints (patch_height, patch_width)
        the dimensions of one patch

    max_patches : integer or float, optional default is None
        The maximum number of patches to extract. If max_patches is a float
        between 0 and 1, it is taken to be a proportion of the total number
        of patches.

    random_state : int, RandomState instance or None, optional (default=None)
        Determines the random number generator used for random sampling when
        `max_patches` is not None. Use an int to make the randomness
        deterministic.
        See :term:`Glossary <random_state>`.

    Returns
    -------
    patches : array, shape = (n_patches, patch_height, patch_width) or
        (n_patches, patch_height, patch_width, n_channels)
        The collection of patches extracted from the image, where `n_patches`
        is either `max_patches` or the total number of patches that can be
        extracted.

    Examples
    --------
    >>> from sklearn.datasets import load_sample_image
    >>> from sklearn.feature_extraction import image
    >>> # Use the array data from the first image in this dataset:
    >>> one_image = load_sample_image("china.jpg")
    >>> print('Image shape: {}'.format(one_image.shape))
    Image shape: (427, 640, 3)
    >>> patches = image.extract_patches_2d(one_image, (2, 2))
    >>> print('Patches shape: {}'.format(patches.shape))
    Patches shape: (272214, 2, 2, 3)
    >>> # Here are just two of these patches:
    >>> print(patches[1])
    [[[174 201 231]
      [174 201 231]]
     [[173 200 230]
      [173 200 230]]]
    >>> print(patches[800])
    [[[187 214 243]
      [188 215 244]]
     [[187 214 243]
      [188 215 244]]]
    """
    i_h, i_w = image.shape[:2]
    p_h, p_w = patch_size

    if p_h > i_h:
        raise ValueError("Height of the patch should be less than the height"
                         " of the image.")

    if p_w > i_w:
        raise ValueError("Width of the patch should be less than the width"
                         " of the image.")

    image = check_array(image, allow_nd=True)
    image = image.reshape((i_h, i_w, -1))
    n_colors = image.shape[-1]

    extracted_patches = _extract_patches(image,
                                         patch_shape=(p_h, p_w, n_colors),
                                         extraction_step=1)

    n_patches = _compute_n_patches(i_h, i_w, p_h, p_w, max_patches)
    if max_patches:
        rng = check_random_state(random_state)
        i_s = rng.randint(i_h - p_h + 1, size=n_patches)
        j_s = rng.randint(i_w - p_w + 1, size=n_patches)
        patches = extracted_patches[i_s, j_s, 0]
    else:
        patches = extracted_patches

    patches = patches.reshape(-1, p_h, p_w, n_colors)
    # remove the color dimension if useless
    if patches.shape[-1] == 1:
        return patches.reshape((n_patches, p_h, p_w))
    else:
        return patches


def reconstruct_from_patches_2d(patches, image_size):
    """Reconstruct the image from all of its patches.

    Patches are assumed to overlap and the image is constructed by filling in
    the patches from left to right, top to bottom, averaging the overlapping
    regions.

    Read more in the :ref:`User Guide <image_feature_extraction>`.

    Parameters
    ----------
    patches : array, shape = (n_patches, patch_height, patch_width) or
        (n_patches, patch_height, patch_width, n_channels)
        The complete set of patches. If the patches contain colour information,
        channels are indexed along the last dimension: RGB patches would
        have `n_channels=3`.

    image_size : tuple of ints (image_height, image_width) or
        (image_height, image_width, n_channels)
        the size of the image that will be reconstructed

    Returns
    -------
    image : array, shape = image_size
        the reconstructed image
    """
    i_h, i_w = image_size[:2]
    p_h, p_w = patches.shape[1:3]
    img = np.zeros(image_size)
    # compute the dimensions of the patches array
    n_h = i_h - p_h + 1
    n_w = i_w - p_w + 1
    for p, (i, j) in zip(patches, product(range(n_h), range(n_w))):
        img[i:i + p_h, j:j + p_w] += p

    for i in range(i_h):
        for j in range(i_w):
            # divide by the amount of overlap
            # XXX: is this the most efficient way? memory-wise yes, cpu wise?
            img[i, j] /= float(min(i + 1, p_h, i_h - i) *
                               min(j + 1, p_w, i_w - j))
    return img


class PatchExtractor(BaseEstimator):
    """Extracts patches from a collection of images

    Read more in the :ref:`User Guide <image_feature_extraction>`.

    Parameters
    ----------
    patch_size : tuple of ints (patch_height, patch_width)
        the dimensions of one patch

    max_patches : integer or float, optional default is None
        The maximum number of patches per image to extract. If max_patches is a
        float in (0, 1), it is taken to mean a proportion of the total number
        of patches.

    random_state : int, RandomState instance or None, optional (default=None)
        Determines the random number generator used for random sampling when
        `max_patches` is not None. Use an int to make the randomness
        deterministic.
        See :term:`Glossary <random_state>`.


    Examples
    --------
    >>> from sklearn.datasets import load_sample_images
    >>> from sklearn.feature_extraction import image
    >>> # Use the array data from the second image in this dataset:
    >>> X = load_sample_images().images[1]
    >>> print('Image shape: {}'.format(X.shape))
    Image shape: (427, 640, 3)
    >>> pe = image.PatchExtractor(patch_size=(2, 2))
    >>> pe_fit = pe.fit(X)
    >>> pe_trans = pe.transform(X)
    >>> print('Patches shape: {}'.format(pe_trans.shape))
    Patches shape: (545706, 2, 2)
    """

    def __init__(self, patch_size=None, max_patches=None, random_state=None):
        self.patch_size = patch_size
        self.max_patches = max_patches
        self.random_state = random_state

    def fit(self, X, y=None):
        """Do nothing and return the estimator unchanged

        This method is just there to implement the usual API and hence
        work in pipelines.

        Parameters
        ----------
        X : array-like, shape [n_samples, n_features]
            Training data.
        """
        return self

    def transform(self, X):
        """Transforms the image samples in X into a matrix of patch data.

        Parameters
        ----------
        X : array, shape = (n_samples, image_height, image_width) or
            (n_samples, image_height, image_width, n_channels)
            Array of images from which to extract patches. For color images,
            the last dimension specifies the channel: a RGB image would have
            `n_channels=3`.

        Returns
        -------
        patches : array, shape = (n_patches, patch_height, patch_width) or
             (n_patches, patch_height, patch_width, n_channels)
             The collection of patches extracted from the images, where
             `n_patches` is either `n_samples * max_patches` or the total
             number of patches that can be extracted.
        """
        self.random_state = check_random_state(self.random_state)
        n_images, i_h, i_w = X.shape[:3]
        X = np.reshape(X, (n_images, i_h, i_w, -1))
        n_channels = X.shape[-1]
        if self.patch_size is None:
            patch_size = i_h // 10, i_w // 10
        else:
            patch_size = self.patch_size

        # compute the dimensions of the patches array
        p_h, p_w = patch_size
        n_patches = _compute_n_patches(i_h, i_w, p_h, p_w, self.max_patches)
        patches_shape = (n_images * n_patches,) + patch_size
        if n_channels > 1:
            patches_shape += (n_channels,)

        # extract the patches
        patches = np.empty(patches_shape)
        for ii, image in enumerate(X):
            patches[ii * n_patches:(ii + 1) * n_patches] = extract_patches_2d(
                image, patch_size, self.max_patches, self.random_state)
        return patches

    def _more_tags(self):
        return {'X_types': ['3darray']}