import numpy as np
import scipy.sparse as sparse
from menpo.landmark import LandmarkGroup
from . import (PointCloud, UndirectedGraph, DirectedGraph, Tree, TriMesh,
PointUndirectedGraph, PointDirectedGraph, PointTree)
def stencil_grid(stencil, shape, dtype=None, format=None):
"""Construct a sparse matrix form a local matrix stencil
This function is useful for building sparse adjacency matrices according
to a specific connectivity pattern.
This function is borrowed from the PyAMG project, under the permission of
the MIT license:
The MIT License (MIT)
Copyright (c) 2008-2015 PyAMG Developers
Permission is hereby granted, free of charge, to any person obtaining a copy
of this software and associated documentation files (the "Software"), to
deal in the Software without restriction, including without limitation the
rights to use, copy, modify, merge, publish, distribute, sublicense, and/or
sell copies of the Software, and to permit persons to whom the Software is
furnished to do so, subject to the following conditions:
The above copyright notice and this permission notice shall be included in
all copies or substantial portions of the Software.
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING
FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS
IN THE SOFTWARE.
The original version of this file can be found here:
https://github.com/pyamg/pyamg/blob/621d63411895898660e5ea078840118905bec061/pyamg/gallery/stencil.py
This file has been modified to fit the style standards of the Menpo
project.
Parameters
----------
S : `ndarray`
Matrix stencil stored in N-d array
grid : `tuple`
Tuple containing the N shape dimensions (shape)
dtype : `np.dtype`, optional
Numpy data type of the result
format : `str`, optional
Sparse matrix format to return, e.g. "csr", "coo", etc.
Returns
-------
A : sparse matrix
Sparse matrix which represents the operator given by applying
stencil stencil at each vertex of a regular shape with given dimensions.
Notes
-----
The shape vertices are enumerated as ``arange(prod(shape)).reshape(shape)``.
This implies that the last shape dimension cycles fastest, while the
first dimension cycles slowest. For example, if ``shape=(2,3)`` then the
shape vertices are ordered as ``(0,0), (0,1), (0,2), (1,0), (1,1), (1,2)``.
This coincides with the ordering used by the NumPy functions
``ndenumerate()`` and ``mgrid()``.
Raises
------
ValueError
If the stencil shape is not odd.
ValueError
If the stencil dimension does not equal the number of shape dimensions
ValueError
If the shape dimensions are not all positive
Examples
--------
>>> import numpy as np
>>> from menpo.shape import stencil_grid
>>> stencil = [[0,-1,0],[-1,4,-1],[0,-1,0]] # 2D Poisson stencil
>>> shape = (3, 3) # 2D shape with shape 3x3
>>> A = stencil_grid(stencil, shape, dtype=np.float, format='csr')
>>> A.todense()
matrix([[ 4., -1., 0., -1., 0., 0., 0., 0., 0.],
[-1., 4., -1., 0., -1., 0., 0., 0., 0.],
[ 0., -1., 4., 0., 0., -1., 0., 0., 0.],
[-1., 0., 0., 4., -1., 0., -1., 0., 0.],
[ 0., -1., 0., -1., 4., -1., 0., -1., 0.],
[ 0., 0., -1., 0., -1., 4., 0., 0., -1.],
[ 0., 0., 0., -1., 0., 0., 4., -1., 0.],
[ 0., 0., 0., 0., -1., 0., -1., 4., -1.],
[ 0., 0., 0., 0., 0., -1., 0., -1., 4.]])
>>> stencil = [[0,1,0],[1,0,1],[0,1,0]] # 2D Lattice Connectivity
>>> shape = (3, 3) # 2D shape with shape 3x3
>>> A = stencil_grid(stencil, shape, dtype=np.float, format='csr')
>>> A.todense()
matrix([[ 0., 1., 0., 1., 0., 0., 0., 0., 0.],
[ 1., 0., 1., 0., 1., 0., 0., 0., 0.],
[ 0., 1., 0., 0., 0., 1., 0., 0., 0.],
[ 1., 0., 0., 0., 1., 0., 1., 0., 0.],
[ 0., 1., 0., 1., 0., 1., 0., 1., 0.],
[ 0., 0., 1., 0., 1., 0., 0., 0., 1.],
[ 0., 0., 0., 1., 0., 0., 0., 1., 0.],
[ 0., 0., 0., 0., 1., 0., 1., 0., 1.],
[ 0., 0., 0., 0., 0., 1., 0., 1., 0.]])
"""
stencil = np.asarray(stencil, dtype=dtype)
shape = tuple(shape)
if not (np.asarray(stencil.shape) % 2 == 1).all():
raise ValueError('all stencil dimensions must be odd')
if len(shape) != np.ndim(stencil):
raise ValueError('stencil dimension must equal number of shape\
dimensions')
if min(shape) < 1:
raise ValueError('shape dimensions must be positive')
N_v = np.prod(shape) # number of vertices in the mesh
N_s = (stencil != 0).sum() # number of nonzero stencil entries
# diagonal offsets
diags = np.zeros(N_s, dtype=int)
# compute index offset of each dof within the stencil
strides = np.cumprod([1] + list(reversed(shape)))[:-1]
indices = tuple(i.copy() for i in stencil.nonzero())
for i, s in zip(indices, stencil.shape):
i -= s // 2
# i = (i - s) // 2
# i = i // 2
# i = i - (s // 2)
for stride, coords in zip(strides, reversed(indices)):
diags += stride * coords
data = stencil[stencil != 0].repeat(N_v).reshape(N_s, N_v)
indices = np.vstack(indices).T
# zero boundary connections
for index, diag in zip(indices, data):
diag = diag.reshape(shape)
for n, i in enumerate(index):
if i > 0:
s = [slice(None)] * len(shape)
s[n] = slice(0, i)
diag[s] = 0
elif i < 0:
s = [slice(None)]*len(shape)
s[n] = slice(i, None)
diag[s] = 0
# remove diagonals that lie outside matrix
mask = abs(diags) < N_v
if not mask.all():
diags = diags[mask]
data = data[mask]
# sum duplicate diagonals
if len(np.unique(diags)) != len(diags):
new_diags = np.unique(diags)
new_data = np.zeros((len(new_diags), data.shape[1]),
dtype=data.dtype)
for dia, dat in zip(diags, data):
n = np.searchsorted(new_diags, dia)
new_data[n, :] += dat
diags = new_diags
data = new_data
return sparse.dia_matrix((data, diags),
shape=(N_v, N_v)).asformat(format)
def _get_points_and_number_of_vertices(shape):
if isinstance(shape, LandmarkGroup):
return shape.lms.points, shape.n_landmarks
elif isinstance(shape, PointCloud):
return shape.points, shape.n_points
else:
raise ValueError("shape must be either a LandmarkGroup or a "
"PointCloud instance.")
def _get_star_graph_edges(vertices_list, root_vertex):
edges = []
for v in vertices_list:
if v != root_vertex:
edges.append([root_vertex, v])
return edges
def _get_complete_graph_edges(vertices_list):
n_vertices = len(vertices_list)
edges = []
for i in range(n_vertices-1):
k = i + 1
for j in range(k, n_vertices, 1):
v1 = vertices_list[i]
v2 = vertices_list[j]
edges.append([v1, v2])
return edges
def _get_chain_graph_edges(vertices_list, closed):
n_vertices = len(vertices_list)
edges = []
for i in range(n_vertices-1):
k = i + 1
v1 = vertices_list[i]
v2 = vertices_list[k]
edges.append([v1, v2])
if closed:
v1 = vertices_list[-1]
v2 = vertices_list[0]
edges.append([v1, v2])
return edges
[docs]def empty_graph(shape, return_pointgraph=True):
r"""
Returns an empty graph given the landmarks configuration of a shape
instance.
Parameters
----------
shape : :map:`PointCloud` or :map:`LandmarkGroup` or subclass
The shape instance that defines the landmarks configuration based on
which the graph will be created.
return_pointgraph : `bool`, optional
If ``True``, then a :map:`PointUndirectedGraph` instance will be
returned. If ``False``, then an :map:`UndirectedGraph` instance will be
returned.
Returns
-------
graph : :map:`UndirectedGraph` or :map:`PointUndirectedGraph`
The generated graph.
"""
# get points and number of vertices
points, n_vertices = _get_points_and_number_of_vertices(shape)
# create empty edges
edges = None
# return graph
if return_pointgraph:
return PointUndirectedGraph.init_from_edges(points, edges, n_vertices,
skip_checks=True)
else:
return UndirectedGraph.init_from_edges(edges, n_vertices,
skip_checks=True)
[docs]def star_graph(shape, root_vertex, graph_cls=PointTree):
r"""
Returns a star graph given the landmarks configuration of a shape instance.
Parameters
----------
shape : :map:`PointCloud` or :map:`LandmarkGroup` or subclass
The shape instance that defines the landmarks configuration based on
which the graph will be created.
root_vertex : `int`
The root of the star tree.
graph_cls : `Graph` or `PointGraph` subclass
The output graph type.
Possible options are ::
{:map:`UndirectedGraph`, :map:`DirectedGraph`, :map:`Tree`,
:map:`PointUndirectedGraph`, :map:`PointDirectedGraph`,
:map:`PointTree`}
Returns
-------
graph : `Graph` or `PointGraph` subclass
The generated graph.
Raises
------
ValueError
graph_cls must be UndirectedGraph, DirectedGraph, Tree,
PointUndirectedGraph, PointDirectedGraph or PointTree.
"""
# get points and number of vertices
points, n_vertices = _get_points_and_number_of_vertices(shape)
# create star graph edges
edges = _get_star_graph_edges(range(n_vertices), root_vertex)
# return graph
if graph_cls == Tree:
return graph_cls.init_from_edges(edges=edges, n_vertices=n_vertices,
root_vertex=root_vertex,
skip_checks=True)
elif graph_cls == PointTree:
return graph_cls.init_from_edges(points=points, edges=edges,
root_vertex=root_vertex,
skip_checks=True)
elif graph_cls == UndirectedGraph or graph_cls == DirectedGraph:
return graph_cls.init_from_edges(edges=edges, n_vertices=n_vertices,
skip_checks=True)
elif graph_cls == PointUndirectedGraph or graph_cls == PointDirectedGraph:
return graph_cls.init_from_edges(points=points, edges=edges,
skip_checks=True)
else:
raise ValueError("graph_cls must be UndirectedGraph, DirectedGraph, "
"Tree, PointUndirectedGraph, PointDirectedGraph or "
"PointTree.")
[docs]def complete_graph(shape, graph_cls=PointUndirectedGraph):
r"""
Returns a complete graph given the landmarks configuration of a shape
instance.
Parameters
----------
shape : :map:`PointCloud` or :map:`LandmarkGroup` or subclass
The shape instance that defines the landmarks configuration based on
which the graph will be created.
graph_cls : `Graph` or `PointGraph` subclass
The output graph type.
Possible options are ::
{:map:`UndirectedGraph`, :map:`DirectedGraph`,
:map:`PointUndirectedGraph`, :map:`PointDirectedGraph`}
Returns
-------
graph : `Graph` or `PointGraph` subclass
The generated graph.
Raises
------
ValueError
graph_cls must be UndirectedGraph, DirectedGraph, PointUndirectedGraph
or PointDirectedGraph.
"""
# get points and number of vertices
points, n_vertices = _get_points_and_number_of_vertices(shape)
# create complete graph edges
edges = _get_complete_graph_edges(range(n_vertices))
# return graph
if graph_cls == UndirectedGraph or graph_cls == DirectedGraph:
return graph_cls.init_from_edges(edges=edges, n_vertices=n_vertices,
skip_checks=True)
elif graph_cls == PointUndirectedGraph or graph_cls == PointDirectedGraph:
return graph_cls.init_from_edges(points=points, edges=edges,
skip_checks=True)
else:
raise ValueError("graph_cls must be UndirectedGraph, DirectedGraph, "
"PointUndirectedGraph or PointDirectedGraph.")
[docs]def chain_graph(shape, graph_cls=PointDirectedGraph, closed=False):
r"""
Returns a chain graph given the landmarks configuration of a shape instance.
Parameters
----------
shape : :map:`PointCloud` or :map:`LandmarkGroup` or subclass
The shape instance that defines the landmarks configuration based on
which the graph will be created.
graph_cls : `Graph` or `PointGraph` subclass
The output graph type.
Possible options are ::
{:map:`UndirectedGraph`, :map:`DirectedGraph`, :map:`Tree`,
:map:`PointUndirectedGraph`, :map:`PointDirectedGraph`,
:map:`PointTree`}
closed : `bool`, optional
If ``True``, then the chain will be closed (i.e. edge between the
first and last vertices).
Returns
-------
graph : `Graph` or `PointGraph` subclass
The generated graph.
Raises
------
ValueError
A closed chain graph cannot be a Tree or PointTree instance.
ValueError
graph_cls must be UndirectedGraph, DirectedGraph, Tree,
PointUndirectedGraph, PointDirectedGraph or PointTree.
"""
# get points and number of vertices
points, n_vertices = _get_points_and_number_of_vertices(shape)
# create chain graph edges
edges = _get_chain_graph_edges(range(n_vertices), closed=closed)
# return graph
if graph_cls == Tree:
if closed:
raise ValueError("A closed chain graph cannot be a Tree "
"instance.")
else:
return graph_cls.init_from_edges(edges=edges, n_vertices=n_vertices,
root_vertex=0, skip_checks=True)
elif graph_cls == PointTree:
if closed:
raise ValueError("A closed chain graph cannot be a PointTree "
"instance.")
else:
return graph_cls.init_from_edges(points=points, edges=edges,
root_vertex=0, skip_checks=True)
elif graph_cls == UndirectedGraph or graph_cls == DirectedGraph:
return graph_cls.init_from_edges(edges=edges, n_vertices=n_vertices,
skip_checks=True)
elif graph_cls == PointUndirectedGraph or graph_cls == PointDirectedGraph:
return graph_cls.init_from_edges(points=points, edges=edges,
skip_checks=True)
else:
raise ValueError("graph_cls must be UndirectedGraph, DirectedGraph, "
"Tree, PointUndirectedGraph, PointDirectedGraph or "
"PointTree.")
[docs]def delaunay_graph(shape, return_pointgraph=True):
r"""
Returns a graph with the edges being generated by Delaunay triangulation.
Parameters
----------
shape : :map:`PointCloud` or :map:`LandmarkGroup` or subclass
The shape instance that defines the landmarks configuration based on
which the graph will be created.
return_pointgraph : `bool`, optional
If ``True``, then a :map:`PointUndirectedGraph` instance will be
returned. If ``False``, then an :map:`UndirectedGraph` instance will be
returned.
Returns
-------
graph : :map:`UndirectedGraph` or :map:`PointUndirectedGraph`
The generated graph.
"""
# get TriMesh instance that estimates the Delaunay triangulation
if isinstance(shape, LandmarkGroup):
trimesh = TriMesh(shape.lms.points)
n_vertices = shape.n_landmarks
points = shape.lms.points
elif isinstance(shape, PointCloud):
trimesh = TriMesh(shape.points)
n_vertices = shape.n_points
points = shape.points
else:
raise ValueError("shape must be either a LandmarkGroup or a "
"PointCloud instance.")
# get edges
edges = trimesh.edge_indices()
# return graph
if return_pointgraph:
return PointUndirectedGraph.init_from_edges(
points=points, edges=edges, skip_checks=True)
else:
return UndirectedGraph.init_from_edges(
edges=edges, n_vertices=n_vertices, skip_checks=True)