Beispiel #1
0
def region_surface_areas(regions, voxel_size=1, strel=None):
    r"""
    Extracts the surface area of each region in a labeled image.

    Optionally, it can also find the the interfacial area between all
    adjoining regions.

    Parameters
    ----------
    regions : ND-array
        An image of the pore space partitioned into individual pore regions.
        Note that zeros in the image will not be considered for area
        calculation.
    voxel_size : scalar
        The resolution of the image, expressed as the length of one side of a
        voxel, so the volume of a voxel would be **voxel_size**-cubed.  The
        default is 1.
    strel : array_like
        The structuring element used to blur the region.  If not provided,
        then a spherical element (or disk) with radius 1 is used.  See the
        docstring for ``mesh_region`` for more details, as this argument is
        passed to there.

    Returns
    -------
    result : list
        A list containing the surface area of each region, offset by 1, such
        that the surface area of region 1 is stored in element 0 of the list.

    """
    print('-' * 60)
    print('Finding surface area of each region')
    im = regions.copy()
    # Get 'slices' into im for each pore region
    slices = spim.find_objects(im)
    # Initialize arrays
    Ps = np.arange(1, np.amax(im) + 1)
    sa = np.zeros_like(Ps, dtype=float)
    # Start extracting marching cube area from im
    for i in tqdm(Ps):
        reg = i - 1
        if slices[reg] is not None:
            s = extend_slice(slices[reg], im.shape)
            sub_im = im[s]
            mask_im = sub_im == i
            mesh = mesh_region(region=mask_im, strel=strel)
            sa[reg] = mesh_surface_area(mesh)
    result = sa * voxel_size**2
    return result
Beispiel #2
0
def region_interface_areas(regions, areas, voxel_size=1, strel=None):
    r"""
    Calculates the interfacial area between all pairs of adjecent regions

    Parameters
    ----------
    regions : ND-array
        An image of the pore space partitioned into individual pore regions.
        Note that zeros in the image will not be considered for area
        calculation.
    areas : array_like
        A list containing the areas of each regions, as determined by
        ``region_surface_area``.  Note that the region number and list index
        are offset by 1, such that the area for region 1 is stored in
        ``areas[0]``.
    voxel_size : scalar
        The resolution of the image, expressed as the length of one side of a
        voxel, so the volume of a voxel would be **voxel_size**-cubed.  The
        default is 1.
    strel : array_like
        The structuring element used to blur the region.  If not provided,
        then a spherical element (or disk) with radius 1 is used.  See the
        docstring for ``mesh_region`` for more details, as this argument is
        passed to there.

    Returns
    -------
    result : named_tuple
        A named-tuple containing 2 arrays. ``conns`` holds the connectivity
        information and ``area`` holds the result for each pair.  ``conns`` is
        a N-regions by 2 array with each row containing the region number of an
        adjacent pair of regions.  For instance, if ``conns[0, 0]`` is 0 and
        ``conns[0, 1]`` is 5, then row 0 of ``area`` contains the interfacial
        area shared by regions 0 and 5.

    """
    print('-' * 60)
    print('Finding interfacial areas between each region')
    from skimage.morphology import disk, ball
    im = regions.copy()
    if im.ndim != im.squeeze().ndim:
        warnings.warn('Input image conains a singleton axis:' + str(im.shape) +
                      ' Reduce dimensionality with np.squeeze(im) to avoid' +
                      ' unexpected behavior.')
    # cube_elem = square if im.ndim == 2 else cube
    ball_elem = disk if im.ndim == 2 else ball
    # Get 'slices' into im for each region
    slices = spim.find_objects(im)
    # Initialize arrays
    Ps = np.arange(1, np.amax(im) + 1)
    sa = np.zeros_like(Ps, dtype=float)
    sa_combined = []  # Difficult to preallocate since number of conns unknown
    cn = []
    # Start extracting area from im
    for i in tqdm(Ps):
        reg = i - 1
        if slices[reg] is not None:
            s = extend_slice(slices[reg], im.shape)
            sub_im = im[s]
            mask_im = sub_im == i
            sa[reg] = areas[reg]
            im_w_throats = spim.binary_dilation(input=mask_im,
                                                structure=ball_elem(1))
            im_w_throats = im_w_throats * sub_im
            Pn = np.unique(im_w_throats)[1:] - 1
            for j in Pn:
                if j > reg:
                    cn.append([reg, j])
                    merged_region = im[(
                        min(slices[reg][0].start, slices[j][0].start)
                    ):max(slices[reg][0].stop, slices[j][0].stop), (
                        min(slices[reg][1].start, slices[j][1].start)
                    ):max(slices[reg][1].stop, slices[j][1].stop)]
                    merged_region = ((merged_region == reg + 1) +
                                     (merged_region == j + 1))
                    mesh = mesh_region(region=merged_region, strel=strel)
                    sa_combined.append(mesh_surface_area(mesh))
    # Interfacial area calculation
    cn = np.array(cn)
    ia = 0.5 * (sa[cn[:, 0]] + sa[cn[:, 1]] - sa_combined)
    ia[ia <= 0] = 1
    result = namedtuple('interfacial_areas', ('conns', 'area'))
    result.conns = cn
    result.area = ia * voxel_size**2
    return result