DAMASK_EICMD/python/damask/_geom.py

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import copy
import multiprocessing as mp
from functools import partial
from os import path
import numpy as np
import pandas as pd
import h5py
from scipy import ndimage,spatial
from . import environment
from . import VTK
from . import util
from . import grid_filters
from . import Rotation
class Geom:
"""Geometry definition for grid solvers."""
def __init__(self,material,size,origin=[0.0,0.0,0.0],comments=[]):
"""
New geometry definition from array of material, size, and origin.
Parameters
----------
material : numpy.ndarray
Material index array (3D).
size : list or numpy.ndarray
Physical size of the geometry in meter.
origin : list or numpy.ndarray, optional
Physical origin of the geometry in meter.
comments : list of str, optional
Comment lines.
"""
if len(material.shape) != 3:
raise ValueError(f'Invalid material shape {material.shape}.')
elif material.dtype not in np.sctypes['float'] + np.sctypes['int']:
raise TypeError(f'Invalid material data type {material.dtype}.')
else:
self.material = np.copy(material)
if self.material.dtype in np.sctypes['float'] and \
np.all(self.material == self.material.astype(int).astype(float)):
self.material = self.material.astype(int)
if len(size) != 3 or any(np.array(size) <= 0):
raise ValueError(f'Invalid size {size}.')
else:
self.size = np.array(size)
if len(origin) != 3:
raise ValueError(f'Invalid origin {origin}.')
else:
self.origin = np.array(origin)
self.comments = [str(c) for c in comments] if isinstance(comments,list) else [str(comments)]
def __repr__(self):
"""Basic information on geometry definition."""
return util.srepr([
f'grid a b c: {util.srepr(self.grid, " x ")}',
f'size x y z: {util.srepr(self.size, " x ")}',
f'origin x y z: {util.srepr(self.origin," ")}',
f'# materials: {self.N_materials}',
f'max material: {np.nanmax(self.material)}',
])
def __copy__(self):
"""Copy geometry."""
return copy.deepcopy(self)
def copy(self):
"""Copy geometry."""
return self.__copy__()
def diff(self,other):
"""
Report property differences of self relative to other.
Parameters
----------
other : Geom
Geometry to compare self against.
"""
message = []
if np.any(other.grid != self.grid):
message.append(util.delete(f'grid a b c: {util.srepr(other.grid," x ")}'))
message.append(util.emph( f'grid a b c: {util.srepr( self.grid," x ")}'))
if not np.allclose(other.size,self.size):
message.append(util.delete(f'size x y z: {util.srepr(other.size," x ")}'))
message.append(util.emph( f'size x y z: {util.srepr( self.size," x ")}'))
if not np.allclose(other.origin,self.origin):
message.append(util.delete(f'origin x y z: {util.srepr(other.origin," ")}'))
message.append(util.emph( f'origin x y z: {util.srepr( self.origin," ")}'))
if other.N_materials != self.N_materials:
message.append(util.delete(f'# materials: {other.N_materials}'))
message.append(util.emph( f'# materials: { self.N_materials}'))
if np.nanmax(other.material) != np.nanmax(self.material):
message.append(util.delete(f'max material: {np.nanmax(other.material)}'))
message.append(util.emph( f'max material: {np.nanmax( self.material)}'))
return util.return_message(message)
@property
def grid(self):
return np.asarray(self.material.shape)
@property
def N_materials(self):
return np.unique(self.material).size
@staticmethod
def load(fname):
"""
Read a VTK rectilinear grid.
Parameters
----------
fname : str or or pathlib.Path
Geometry file to read.
Valid extension is .vtr, it will be appended if not given.
"""
v = VTK.load(fname if str(fname).endswith('.vtr') else str(fname)+'.vtr')
comments = v.get_comments()
grid = np.array(v.vtk_data.GetDimensions())-1
bbox = np.array(v.vtk_data.GetBounds()).reshape(3,2).T
return Geom(material = v.get('material').reshape(grid,order='F'),
size = bbox[1] - bbox[0],
origin = bbox[0],
comments=comments)
@staticmethod
def load_ASCII(fname):
"""
Read a geom file.
Parameters
----------
fname : str or file handle
Geometry file to read.
"""
try:
f = open(fname)
except TypeError:
f = fname
f.seek(0)
try:
header_length,keyword = f.readline().split()[:2]
header_length = int(header_length)
except ValueError:
header_length,keyword = (-1, 'invalid')
if not keyword.startswith('head') or header_length < 3:
raise TypeError('Header length information missing or invalid')
content = f.readlines()
comments = []
for i,line in enumerate(content[:header_length]):
items = line.split('#')[0].lower().strip().split()
key = items[0] if items else ''
if key == 'grid':
grid = np.array([ int(dict(zip(items[1::2],items[2::2]))[i]) for i in ['a','b','c']])
elif key == 'size':
size = np.array([float(dict(zip(items[1::2],items[2::2]))[i]) for i in ['x','y','z']])
elif key == 'origin':
origin = np.array([float(dict(zip(items[1::2],items[2::2]))[i]) for i in ['x','y','z']])
else:
comments.append(line.strip())
material = np.empty(grid.prod()) # initialize as flat array
i = 0
for line in content[header_length:]:
items = line.split('#')[0].split()
if len(items) == 3:
if items[1].lower() == 'of':
items = np.ones(int(items[0]))*float(items[2])
elif items[1].lower() == 'to':
items = np.linspace(int(items[0]),int(items[2]),
abs(int(items[2])-int(items[0]))+1,dtype=float)
else: items = list(map(float,items))
else: items = list(map(float,items))
material[i:i+len(items)] = items
i += len(items)
if i != grid.prod():
raise TypeError(f'Invalid file: expected {grid.prod()} entries, found {i}')
if not np.any(np.mod(material,1) != 0.0): # no float present
material = material.astype('int')
return Geom(material.reshape(grid,order='F'),size,origin,comments)
@staticmethod
def load_DREAM3D(fname,base_group,point_data=None,material='FeatureIds'):
"""
Load a DREAM.3D file.
Parameters
----------
fname : str
Filename of the DREAM.3D file
base_group : str
Name of the group (folder) below 'DataContainers'. For example
'SyntheticVolumeDataContainer'.
point_data : str, optional
Name of the group (folder) containing the point wise material data,
for example 'CellData'. Defaults to None, in which case points consecutively numbered.
material : str, optional
Name of the dataset containing the material ID. Defaults to
'FeatureIds'.
"""
root_dir ='DataContainers'
f = h5py.File(fname, 'r')
g = path.join(root_dir,base_group,'_SIMPL_GEOMETRY')
size = f[path.join(g,'DIMENSIONS')][()] * f[path.join(g,'SPACING')][()]
grid = f[path.join(g,'DIMENSIONS')][()]
origin = f[path.join(g,'ORIGIN')][()]
group_pointwise = path.join(root_dir,base_group,point_data)
ma = np.arange(1,np.product(grid)+1,dtype=int) if point_data is None else \
np.reshape(f[path.join(group_pointwise,material)],grid.prod())
return Geom(ma.reshape(grid,order='F'),size,origin,util.execution_stamp('Geom','load_DREAM3D'))
@staticmethod
def from_table(table,coordinates,labels):
"""
Load an ASCII table.
Parameters
----------
table : damask.Table
Table that contains material information.
coordinates : str
Label of the column containing the vector of spatial coordinates.
Need to be ordered (1./x fast, 3./z slow).
labels : str or list of str
Label(s) of the columns containing the material definition.
Each unique combintation of values results in a material.
"""
grid,size,origin = grid_filters.cell_coord0_gridSizeOrigin(table.get(coordinates))
labels_ = [labels] if isinstance(labels,str) else labels
unique,unique_inverse = np.unique(np.hstack([table.get(l) for l in labels_]),return_inverse=True,axis=0)
ma = np.arange(grid.prod()) if len(unique) == grid.prod() else \
np.arange(unique.size)[np.argsort(pd.unique(unique_inverse))][unique_inverse]
return Geom(ma.reshape(grid,order='F'),size,origin,util.execution_stamp('Geom','from_table'))
@staticmethod
def _find_closest_seed(seeds, weights, point):
return np.argmin(np.sum((np.broadcast_to(point,(len(seeds),3))-seeds)**2,axis=1) - weights)
@staticmethod
def from_Laguerre_tessellation(grid,size,seeds,weights,material=None,periodic=True):
"""
Generate geometry from Laguerre tessellation.
Parameters
----------
grid : int numpy.ndarray of shape (3)
Number of grid points in x,y,z direction.
size : list or numpy.ndarray of shape (3)
Physical size of the geometry in meter.
seeds : numpy.ndarray of shape (:,3)
Position of the seed points in meter. All points need to lay within the box.
weights : numpy.ndarray of shape (seeds.shape[0])
Weights of the seeds. Setting all weights to 1.0 gives a standard Voronoi tessellation.
material : numpy.ndarray of shape (seeds.shape[0]), optional
Material ID of the seeds. Defaults to None, in which case materials are
consecutively numbered.
periodic : Boolean, optional
Perform a periodic tessellation. Defaults to True.
"""
if periodic:
weights_p = np.tile(weights,27) # Laguerre weights (1,2,3,1,2,3,...,1,2,3)
seeds_p = np.vstack((seeds -np.array([size[0],0.,0.]),seeds, seeds +np.array([size[0],0.,0.])))
seeds_p = np.vstack((seeds_p-np.array([0.,size[1],0.]),seeds_p,seeds_p+np.array([0.,size[1],0.])))
seeds_p = np.vstack((seeds_p-np.array([0.,0.,size[2]]),seeds_p,seeds_p+np.array([0.,0.,size[2]])))
coords = grid_filters.cell_coord0(grid*3,size*3,-size).reshape(-1,3)
else:
weights_p = weights
seeds_p = seeds
coords = grid_filters.cell_coord0(grid,size).reshape(-1,3)
pool = mp.Pool(processes = int(environment.options['DAMASK_NUM_THREADS']))
result = pool.map_async(partial(Geom._find_closest_seed,seeds_p,weights_p), [coord for coord in coords])
pool.close()
pool.join()
material_ = np.array(result.get())
if periodic:
material_ = material_.reshape(grid*3)
material_ = material_[grid[0]:grid[0]*2,grid[1]:grid[1]*2,grid[2]:grid[2]*2]%seeds.shape[0]
else:
material_ = material_.reshape(grid)
return Geom(material = material_ if material is None else material[material_],
size = size,
comments = util.execution_stamp('Geom','from_Laguerre_tessellation'),
)
@staticmethod
def from_Voronoi_tessellation(grid,size,seeds,material=None,periodic=True):
"""
Generate geometry from Voronoi tessellation.
Parameters
----------
grid : int numpy.ndarray of shape (3)
Number of grid points in x,y,z direction.
size : list or numpy.ndarray of shape (3)
Physical size of the geometry in meter.
seeds : numpy.ndarray of shape (:,3)
Position of the seed points in meter. All points need to lay within the box.
material : numpy.ndarray of shape (seeds.shape[0]), optional
Material ID of the seeds. Defaults to None, in which case materials are
consecutively numbered.
periodic : Boolean, optional
Perform a periodic tessellation. Defaults to True.
"""
coords = grid_filters.cell_coord0(grid,size).reshape(-1,3)
KDTree = spatial.cKDTree(seeds,boxsize=size) if periodic else spatial.cKDTree(seeds)
devNull,material_ = KDTree.query(coords)
return Geom(material = (material_ if material is None else material[material_]).reshape(grid),
size = size,
comments = util.execution_stamp('Geom','from_Voronoi_tessellation'),
)
_minimal_surface = \
{'Schwarz P': lambda x,y,z: np.cos(x) + np.cos(y) + np.cos(z),
'Double Primitive': lambda x,y,z: ( 0.5 * (np.cos(x)*np.cos(y) + np.cos(y)*np.cos(z) + np.cos(z)*np.cos(x))
+ 0.2 * (np.cos(2*x) + np.cos(2*y) + np.cos(2*z)) ),
'Schwarz D': lambda x,y,z: ( np.sin(x)*np.sin(y)*np.sin(z)
+ np.sin(x)*np.cos(y)*np.cos(z)
+ np.cos(x)*np.cos(y)*np.sin(z)
+ np.cos(x)*np.sin(y)*np.cos(z) ),
'Complementary D': lambda x,y,z: ( np.cos(3*x+y)*np.cos(z) - np.sin(3*x-y)*np.sin(z) + np.cos(x+3*y)*np.cos(z)
+ np.sin(x-3*y)*np.sin(z) + np.cos(x-y)*np.cos(3*z) - np.sin(x+y)*np.sin(3*z) ),
'Double Diamond': lambda x,y,z: 0.5 * (np.sin(x)*np.sin(y)
+ np.sin(y)*np.sin(z)
+ np.sin(z)*np.sin(x)
+ np.cos(x) * np.cos(y) * np.cos(z) ),
'Dprime': lambda x,y,z: 0.5 * ( np.cos(x)*np.cos(y)*np.cos(z)
+ np.cos(x)*np.sin(y)*np.sin(z)
+ np.sin(x)*np.cos(y)*np.sin(z)
+ np.sin(x)*np.sin(y)*np.cos(z)
- np.sin(2*x)*np.sin(2*y)
- np.sin(2*y)*np.sin(2*z)
- np.sin(2*z)*np.sin(2*x) ) - 0.2,
'Gyroid': lambda x,y,z: np.cos(x)*np.sin(y) + np.cos(y)*np.sin(z) + np.cos(z)*np.sin(x),
'Gprime': lambda x,y,z : ( np.sin(2*x)*np.cos(y)*np.sin(z)
+ np.sin(2*y)*np.cos(z)*np.sin(x)
+ np.sin(2*z)*np.cos(x)*np.sin(y) ) + 0.32,
'Karcher K': lambda x,y,z: ( 0.3 * ( np.cos(x) + np.cos(y) + np.cos(z)
+ np.cos(x)*np.cos(y) + np.cos(y)*np.cos(z) + np.cos(z)*np.cos(x) )
- 0.4 * ( np.cos(2*x) + np.cos(2*y) + np.cos(2*z) ) ) + 0.2,
'Lidinoid': lambda x,y,z: 0.5 * ( np.sin(2*x)*np.cos(y)*np.sin(z)
+ np.sin(2*y)*np.cos(z)*np.sin(x)
+ np.sin(2*z)*np.cos(x)*np.sin(y)
- np.cos(2*x)*np.cos(2*y)
- np.cos(2*y)*np.cos(2*z)
- np.cos(2*z)*np.cos(2*x) ) + 0.15,
'Neovius': lambda x,y,z: ( 3 * (np.cos(x)+np.cos(y)+np.cos(z))
+ 4 * np.cos(x)*np.cos(y)*np.cos(z) ),
'Fisher-Koch S': lambda x,y,z: ( np.cos(2*x)*np.sin( y)*np.cos( z)
+ np.cos( x)*np.cos(2*y)*np.sin( z)
+ np.sin( x)*np.cos( y)*np.cos(2*z) ),
}
@staticmethod
def from_minimal_surface(grid,size,surface,threshold=0.0,periods=1,materials=(0,1)):
"""
Generate geometry from definition of triply periodic minimal surface.
Parameters
----------
grid : int numpy.ndarray of shape (3)
Number of grid points in x,y,z direction.
size : list or numpy.ndarray of shape (3)
Physical size of the geometry in meter.
surface : str
Type of the minimal surface. See notes for details.
threshold : float, optional.
Threshold of the minimal surface. Defaults to 0.0.
periods : integer, optional.
Number of periods per unit cell. Defaults to 1.
materials : (int, int), optional
Material IDs. Defaults to (1,2).
Notes
-----
The following triply-periodic minimal surfaces are implemented:
- Schwarz P
- Double Primitive
- Schwarz D
- Complementary D
- Double Diamond
- Dprime
- Gyroid
- Gprime
- Karcher K
- Lidinoid
- Neovius
- Fisher-Koch S
References
----------
Surface curvature in triply-periodic minimal surface architectures as
a distinct design parameter in preparing advanced tissue engineering scaffolds
Sébastien B G Blanquer, Maike Werner, Markus Hannula, Shahriar Sharifi,
Guillaume P R Lajoinie, David Eglin, Jari Hyttinen, André A Poot, and Dirk W Grijpma
10.1088/1758-5090/aa6553
Triply Periodic Bicontinuous Cubic Microdomain Morphologies by Symmetries
Meinhard Wohlgemuth, Nataliya Yufa, James Hoffman, and Edwin L. Thomas
10.1021/ma0019499
Minisurf A minimal surface generator for finite element modeling and additive manufacturing
Meng-Ting Hsieh, Lorenzo Valdevit
10.1016/j.simpa.2020.100026
"""
x,y,z = np.meshgrid(periods*2.0*np.pi*(np.arange(grid[0])+0.5)/grid[0],
periods*2.0*np.pi*(np.arange(grid[1])+0.5)/grid[1],
periods*2.0*np.pi*(np.arange(grid[2])+0.5)/grid[2],
indexing='ij',sparse=True)
return Geom(material = np.where(threshold < Geom._minimal_surface[surface](x,y,z),materials[1],materials[0]),
size = size,
comments = util.execution_stamp('Geom','from_minimal_surface'),
)
def save(self,fname,compress=True):
"""
Store as vtk rectilinear grid.
Parameters
----------
fname : str or or pathlib.Path
Filename to write. Valid extension is .vtr, it will be appended if not given.
compress : bool, optional
Compress with zlib algorithm. Defaults to True.
"""
v = VTK.from_rectilinear_grid(self.grid,self.size,self.origin)
v.add(self.material.flatten(order='F'),'material')
v.add_comments(self.comments)
v.save(fname if str(fname).endswith('.vtr') else str(fname)+'.vtr',parallel=False,compress=compress)
def save_ASCII(self,fname):
"""
Write a geom file.
Parameters
----------
fname : str or file handle
Geometry file to write with extension '.geom'.
compress : bool, optional
Compress geometry with 'x of y' and 'a to b'.
"""
header = [f'{len(self.comments)+4} header'] + self.comments \
+ ['grid a {} b {} c {}'.format(*self.grid),
'size x {} y {} z {}'.format(*self.size),
'origin x {} y {} z {}'.format(*self.origin),
'homogenization 1',
]
format_string = '%g' if self.material.dtype in np.sctypes['float'] else \
'%{}i'.format(1+int(np.floor(np.log10(np.nanmax(self.material)))))
np.savetxt(fname,
self.material.reshape([self.grid[0],np.prod(self.grid[1:])],order='F').T,
header='\n'.join(header), fmt=format_string, comments='')
def show(self):
"""Show on screen."""
v = VTK.from_rectilinear_grid(self.grid,self.size,self.origin)
v.show()
def add_primitive(self,dimension,center,exponent,
fill=None,R=Rotation(),inverse=False,periodic=True):
"""
Insert a primitive geometric object at a given position.
Parameters
----------
dimension : int or float numpy.ndarray of shape(3)
Dimension (diameter/side length) of the primitive. If given as
integers, grid point locations (cell centers) are addressed.
If given as floats, coordinates are addressed.
center : int or float numpy.ndarray of shape(3)
Center of the primitive. If given as integers, grid point
locations (cell centers) are addressed.
If given as floats, coordinates are addressed.
exponent : numpy.ndarray of shape(3) or float
Exponents for the three axes.
0 gives octahedron (ǀxǀ^(2^0) + ǀyǀ^(2^0) + ǀzǀ^(2^0) < 1)
1 gives sphere (ǀxǀ^(2^1) + ǀyǀ^(2^1) + ǀzǀ^(2^1) < 1)
fill : int, optional
Fill value for primitive. Defaults to material.max() + 1.
R : damask.Rotation, optional
Rotation of primitive. Defaults to no rotation.
inverse : Boolean, optional
Retain original materials within primitive and fill outside.
Defaults to False.
periodic : Boolean, optional
Repeat primitive over boundaries. Defaults to True.
"""
# normalized 'radius' and center
r = np.array(dimension)/self.grid/2.0 if np.array(dimension).dtype in np.sctypes['int'] else \
np.array(dimension)/self.size/2.0
c = (np.array(center) + .5)/self.grid if np.array(center).dtype in np.sctypes['int'] else \
(np.array(center) - self.origin)/self.size
coords = grid_filters.cell_coord0(self.grid,np.ones(3)) \
- ((np.ones(3)-(1./self.grid if np.array(center).dtype in np.sctypes['int'] else 0))*0.5 if periodic else c) # periodic center is always at CoG
coords_rot = R.broadcast_to(tuple(self.grid))@coords
with np.errstate(all='ignore'):
mask = np.sum(np.power(coords_rot/r,2.0**np.array(exponent)),axis=-1) > 1.0
if periodic: # translate back to center
mask = np.roll(mask,((c-np.ones(3)*.5)*self.grid).astype(int),(0,1,2))
fill_ = np.full_like(self.material,np.nanmax(self.material)+1 if fill is None else fill)
return Geom(material = np.where(np.logical_not(mask) if inverse else mask, self.material,fill_),
size = self.size,
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','add_primitive')],
)
def mirror(self,directions,reflect=False):
"""
Mirror geometry along given directions.
Parameters
----------
directions : iterable containing str
Direction(s) along which the geometry is mirrored.
Valid entries are 'x', 'y', 'z'.
reflect : bool, optional
Reflect (include) outermost layers. Defaults to False.
"""
valid = ['x','y','z']
if not set(directions).issubset(valid):
raise ValueError(f'Invalid direction {set(directions).difference(valid)} specified.')
limits = [None,None] if reflect else [-2,0]
mat = self.material.copy()
if 'x' in directions:
mat = np.concatenate([mat,mat[limits[0]:limits[1]:-1,:,:]],0)
if 'y' in directions:
mat = np.concatenate([mat,mat[:,limits[0]:limits[1]:-1,:]],1)
if 'z' in directions:
mat = np.concatenate([mat,mat[:,:,limits[0]:limits[1]:-1]],2)
return Geom(material = mat,
size = self.size/self.grid*np.asarray(mat.shape),
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','mirror')],
)
def flip(self,directions):
"""
Flip geometry along given directions.
Parameters
----------
directions : iterable containing str
Direction(s) along which the geometry is flipped.
Valid entries are 'x', 'y', 'z'.
"""
valid = ['x','y','z']
if not set(directions).issubset(valid):
raise ValueError(f'Invalid direction {set(directions).difference(valid)} specified.')
mat = np.flip(self.material, (valid.index(d) for d in directions if d in valid))
return Geom(material = mat,
size = self.size,
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','flip')],
)
def scale(self,grid,periodic=True):
"""
Scale geometry to new grid.
Parameters
----------
grid : numpy.ndarray of shape (3)
Number of grid points in x,y,z direction.
periodic : Boolean, optional
Assume geometry to be periodic. Defaults to True.
"""
return Geom(material = ndimage.interpolation.zoom(
self.material,
grid/self.grid,
output=self.material.dtype,
order=0,
mode=('wrap' if periodic else 'nearest'),
prefilter=False
),
size = self.size,
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','scale')],
)
def clean(self,stencil=3,selection=None,periodic=True):
"""
Smooth geometry by selecting most frequent material index within given stencil at each location.
Parameters
----------
stencil : int, optional
Size of smoothing stencil.
selection : list, optional
Field values that can be altered. Defaults to all.
periodic : Boolean, optional
Assume geometry to be periodic. Defaults to True.
"""
def mostFrequent(arr,selection=None):
me = arr[arr.size//2]
if selection is None or me in selection:
unique, inverse = np.unique(arr, return_inverse=True)
return unique[np.argmax(np.bincount(inverse))]
else:
return me
return Geom(material = ndimage.filters.generic_filter(
self.material,
mostFrequent,
size=(stencil if selection is None else stencil//2*2+1,)*3,
mode=('wrap' if periodic else 'nearest'),
extra_keywords=dict(selection=selection),
).astype(self.material.dtype),
size = self.size,
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','clean')],
)
def renumber(self):
"""Renumber sorted material indices to 0,...,N-1."""
_,renumbered = np.unique(self.material,return_inverse=True)
return Geom(material = renumbered.reshape(self.grid),
size = self.size,
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','renumber')],
)
def rotate(self,R,fill=None):
"""
Rotate geometry (pad if required).
Parameters
----------
R : damask.Rotation
Rotation to apply to the geometry.
fill : int or float, optional
Material index to fill the corners. Defaults to material.max() + 1.
"""
if fill is None: fill = np.nanmax(self.material) + 1
dtype = float if np.isnan(fill) or int(fill) != fill or self.material.dtype==np.float else int
Eulers = R.as_Eulers(degrees=True)
material_in = self.material.copy()
# These rotations are always applied in the reference coordinate system, i.e. (z,x,z) not (z,x',z'')
# see https://www.cs.utexas.edu/~theshark/courses/cs354/lectures/cs354-14.pdf
for angle,axes in zip(Eulers[::-1], [(0,1),(1,2),(0,1)]):
material_out = ndimage.rotate(material_in,angle,axes,order=0,
prefilter=False,output=dtype,cval=fill)
if np.prod(material_in.shape) == np.prod(material_out.shape):
# avoid scipy interpolation errors for rotations close to multiples of 90°
material_in = np.rot90(material_in,k=np.rint(angle/90.).astype(int),axes=axes)
else:
material_in = material_out
origin = self.origin-(np.asarray(material_in.shape)-self.grid)*.5 * self.size/self.grid
return Geom(material = material_in,
size = self.size/self.grid*np.asarray(material_in.shape),
origin = origin,
comments = self.comments+[util.execution_stamp('Geom','rotate')],
)
def canvas(self,grid=None,offset=None,fill=None):
"""
Crop or enlarge/pad geometry.
Parameters
----------
grid : numpy.ndarray of shape (3)
Number of grid points in x,y,z direction.
offset : numpy.ndarray of shape (3)
Offset (measured in grid points) from old to new geometry [0,0,0].
fill : int or float, optional
Material index to fill the background. Defaults to material.max() + 1.
"""
if offset is None: offset = 0
if fill is None: fill = np.nanmax(self.material) + 1
dtype = float if int(fill) != fill or self.material.dtype in np.sctypes['float'] else int
canvas = np.full(self.grid if grid is None else grid,fill,dtype)
LL = np.clip( offset, 0,np.minimum(self.grid, grid+offset))
UR = np.clip( offset+grid, 0,np.minimum(self.grid, grid+offset))
ll = np.clip(-offset, 0,np.minimum( grid,self.grid-offset))
ur = np.clip(-offset+self.grid,0,np.minimum( grid,self.grid-offset))
canvas[ll[0]:ur[0],ll[1]:ur[1],ll[2]:ur[2]] = self.material[LL[0]:UR[0],LL[1]:UR[1],LL[2]:UR[2]]
return Geom(material = canvas,
size = self.size/self.grid*np.asarray(canvas.shape),
origin = self.origin+offset*self.size/self.grid,
comments = self.comments+[util.execution_stamp('Geom','canvas')],
)
def substitute(self,from_material,to_material):
"""
Substitute material indices.
Parameters
----------
from_material : iterable of ints
Material indices to be substituted.
to_material : iterable of ints
New material indices.
"""
def mp(entry,mapper):
return mapper[entry] if entry in mapper else entry
mp = np.vectorize(mp)
mapper = dict(zip(from_material,to_material))
return Geom(material = mp(self.material,mapper).reshape(self.grid),
size = self.size,
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','substitute')],
)
def vicinity_offset(self,vicinity=1,offset=None,trigger=[],periodic=True):
"""
Offset material index of points in the vicinity of xxx.
Different from themselves (or listed as triggers) within a given (cubic) vicinity,
i.e. within the region close to a grain/phase boundary.
ToDo: use include/exclude as in seeds.from_geom
Parameters
----------
vicinity : int, optional
Voxel distance checked for presence of other materials.
Defaults to 1.
offset : int, optional
Offset (positive or negative) to tag material indices,
defaults to material.max() + 1.
trigger : list of ints, optional
List of material indices that trigger a change.
Defaults to [], meaning that any different neighbor triggers a change.
periodic : Boolean, optional
Assume geometry to be periodic. Defaults to True.
"""
def tainted_neighborhood(stencil,trigger):
me = stencil[stencil.shape[0]//2]
if len(trigger) == 0:
return np.any(stencil != me)
if me in trigger:
trigger = set(trigger)
trigger.remove(me)
trigger = list(trigger)
return np.any(np.in1d(stencil,np.array(trigger)))
offset_ = np.nanmax(self.material) if offset is None else offset
mask = ndimage.filters.generic_filter(self.material,
tainted_neighborhood,
size=1+2*vicinity,
mode='wrap' if periodic else 'nearest',
extra_keywords={'trigger':trigger})
return Geom(material = np.where(mask, self.material + offset_,self.material),
size = self.size,
origin = self.origin,
comments = self.comments+[util.execution_stamp('Geom','vicinity_offset')],
)