"""
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Builtin colormaps, colormap handling utilities, and the `ScalarMappable` mixin.
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.. seealso::
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:doc:`/gallery/color/colormap_reference` for a list of builtin
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colormaps.
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:doc:`/tutorials/colors/colormap-manipulation` for examples of how to
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make colormaps and
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:doc:`/tutorials/colors/colormaps` an in-depth discussion of
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choosing colormaps.
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:doc:`/tutorials/colors/colormapnorms` for more details about data
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normalization
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"""
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import functools
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import numpy as np
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from numpy import ma
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import matplotlib as mpl
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import matplotlib.colors as colors
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import matplotlib.cbook as cbook
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from matplotlib._cm import datad
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from matplotlib._cm_listed import cmaps as cmaps_listed
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cmap_d = {}
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# reverse all the colormaps.
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# reversed colormaps have '_r' appended to the name.
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def _reverser(f, x=None):
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"""Helper such that ``_reverser(f)(x) == f(1 - x)``."""
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if x is None:
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# Returning a partial object keeps it picklable.
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return functools.partial(_reverser, f)
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return f(1 - x)
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def revcmap(data):
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"""Can only handle specification *data* in dictionary format."""
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data_r = {}
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for key, val in data.items():
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if callable(val):
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valnew = _reverser(val)
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# This doesn't work: lambda x: val(1-x)
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# The same "val" (the first one) is used
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# each time, so the colors are identical
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# and the result is shades of gray.
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else:
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# Flip x and exchange the y values facing x = 0 and x = 1.
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valnew = [(1.0 - x, y1, y0) for x, y0, y1 in reversed(val)]
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data_r[key] = valnew
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return data_r
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def _reverse_cmap_spec(spec):
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"""Reverses cmap specification *spec*, can handle both dict and tuple
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type specs."""
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if 'listed' in spec:
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return {'listed': spec['listed'][::-1]}
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if 'red' in spec:
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return revcmap(spec)
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else:
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revspec = list(reversed(spec))
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if len(revspec[0]) == 2: # e.g., (1, (1.0, 0.0, 1.0))
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revspec = [(1.0 - a, b) for a, b in revspec]
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return revspec
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def _generate_cmap(name, lutsize):
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"""Generates the requested cmap from its *name*. The lut size is
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*lutsize*."""
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spec = datad[name]
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# Generate the colormap object.
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if 'red' in spec:
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return colors.LinearSegmentedColormap(name, spec, lutsize)
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elif 'listed' in spec:
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return colors.ListedColormap(spec['listed'], name)
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else:
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return colors.LinearSegmentedColormap.from_list(name, spec, lutsize)
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LUTSIZE = mpl.rcParams['image.lut']
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# Generate the reversed specifications (all at once, to avoid
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# modify-when-iterating).
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datad.update({cmapname + '_r': _reverse_cmap_spec(spec)
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for cmapname, spec in datad.items()})
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# Precache the cmaps with ``lutsize = LUTSIZE``.
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# Also add the reversed ones added in the section above:
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for cmapname in datad:
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cmap_d[cmapname] = _generate_cmap(cmapname, LUTSIZE)
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cmap_d.update(cmaps_listed)
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locals().update(cmap_d)
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# Continue with definitions ...
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def register_cmap(name=None, cmap=None, data=None, lut=None):
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"""
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Add a colormap to the set recognized by :func:`get_cmap`.
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It can be used in two ways::
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register_cmap(name='swirly', cmap=swirly_cmap)
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register_cmap(name='choppy', data=choppydata, lut=128)
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In the first case, *cmap* must be a :class:`matplotlib.colors.Colormap`
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instance. The *name* is optional; if absent, the name will
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be the :attr:`~matplotlib.colors.Colormap.name` attribute of the *cmap*.
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In the second case, the three arguments are passed to
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the :class:`~matplotlib.colors.LinearSegmentedColormap` initializer,
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and the resulting colormap is registered.
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"""
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if name is None:
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try:
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name = cmap.name
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except AttributeError:
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raise ValueError("Arguments must include a name or a Colormap")
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if not isinstance(name, str):
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raise ValueError("Colormap name must be a string")
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if isinstance(cmap, colors.Colormap):
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cmap_d[name] = cmap
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return
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# For the remainder, let exceptions propagate.
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if lut is None:
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lut = mpl.rcParams['image.lut']
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cmap = colors.LinearSegmentedColormap(name, data, lut)
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cmap_d[name] = cmap
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def get_cmap(name=None, lut=None):
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"""
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Get a colormap instance, defaulting to rc values if *name* is None.
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Colormaps added with :func:`register_cmap` take precedence over
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built-in colormaps.
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If *name* is a :class:`matplotlib.colors.Colormap` instance, it will be
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returned.
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If *lut* is not None it must be an integer giving the number of
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entries desired in the lookup table, and *name* must be a standard
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mpl colormap name.
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"""
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if name is None:
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name = mpl.rcParams['image.cmap']
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if isinstance(name, colors.Colormap):
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return name
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if name in cmap_d:
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if lut is None:
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return cmap_d[name]
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else:
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return cmap_d[name]._resample(lut)
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else:
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raise ValueError(
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"Colormap %s is not recognized. Possible values are: %s"
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% (name, ', '.join(sorted(cmap_d))))
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class ScalarMappable(object):
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"""
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This is a mixin class to support scalar data to RGBA mapping.
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The ScalarMappable makes use of data normalization before returning
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RGBA colors from the given colormap.
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"""
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def __init__(self, norm=None, cmap=None):
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r"""
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Parameters
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----------
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norm : :class:`matplotlib.colors.Normalize` instance
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The normalizing object which scales data, typically into the
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interval ``[0, 1]``.
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If *None*, *norm* defaults to a *colors.Normalize* object which
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initializes its scaling based on the first data processed.
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cmap : str or :class:`~matplotlib.colors.Colormap` instance
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The colormap used to map normalized data values to RGBA colors.
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"""
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self.callbacksSM = cbook.CallbackRegistry()
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if cmap is None:
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cmap = get_cmap()
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if norm is None:
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norm = colors.Normalize()
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self._A = None
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#: The Normalization instance of this ScalarMappable.
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self.norm = norm
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#: The Colormap instance of this ScalarMappable.
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self.cmap = get_cmap(cmap)
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#: The last colorbar associated with this ScalarMappable. May be None.
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self.colorbar = None
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self.update_dict = {'array': False}
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def to_rgba(self, x, alpha=None, bytes=False, norm=True):
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"""
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Return a normalized rgba array corresponding to *x*.
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In the normal case, *x* is a 1-D or 2-D sequence of scalars, and
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the corresponding ndarray of rgba values will be returned,
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based on the norm and colormap set for this ScalarMappable.
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There is one special case, for handling images that are already
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rgb or rgba, such as might have been read from an image file.
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If *x* is an ndarray with 3 dimensions,
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and the last dimension is either 3 or 4, then it will be
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treated as an rgb or rgba array, and no mapping will be done.
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The array can be uint8, or it can be floating point with
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values in the 0-1 range; otherwise a ValueError will be raised.
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If it is a masked array, the mask will be ignored.
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If the last dimension is 3, the *alpha* kwarg (defaulting to 1)
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will be used to fill in the transparency. If the last dimension
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is 4, the *alpha* kwarg is ignored; it does not
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replace the pre-existing alpha. A ValueError will be raised
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if the third dimension is other than 3 or 4.
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In either case, if *bytes* is *False* (default), the rgba
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array will be floats in the 0-1 range; if it is *True*,
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the returned rgba array will be uint8 in the 0 to 255 range.
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If norm is False, no normalization of the input data is
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performed, and it is assumed to be in the range (0-1).
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"""
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# First check for special case, image input:
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try:
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if x.ndim == 3:
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if x.shape[2] == 3:
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if alpha is None:
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alpha = 1
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if x.dtype == np.uint8:
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alpha = np.uint8(alpha * 255)
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m, n = x.shape[:2]
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xx = np.empty(shape=(m, n, 4), dtype=x.dtype)
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xx[:, :, :3] = x
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xx[:, :, 3] = alpha
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elif x.shape[2] == 4:
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xx = x
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else:
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raise ValueError("third dimension must be 3 or 4")
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if xx.dtype.kind == 'f':
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if norm and (xx.max() > 1 or xx.min() < 0):
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raise ValueError("Floating point image RGB values "
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"must be in the 0..1 range.")
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if bytes:
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xx = (xx * 255).astype(np.uint8)
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elif xx.dtype == np.uint8:
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if not bytes:
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xx = xx.astype(np.float32) / 255
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else:
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raise ValueError("Image RGB array must be uint8 or "
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"floating point; found %s" % xx.dtype)
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return xx
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except AttributeError:
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# e.g., x is not an ndarray; so try mapping it
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pass
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# This is the normal case, mapping a scalar array:
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x = ma.asarray(x)
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if norm:
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x = self.norm(x)
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rgba = self.cmap(x, alpha=alpha, bytes=bytes)
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return rgba
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def set_array(self, A):
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"""Set the image array from numpy array *A*.
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Parameters
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----------
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A : ndarray
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"""
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self._A = A
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self.update_dict['array'] = True
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def get_array(self):
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'Return the array'
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return self._A
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def get_cmap(self):
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'return the colormap'
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return self.cmap
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def get_clim(self):
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'return the min, max of the color limits for image scaling'
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return self.norm.vmin, self.norm.vmax
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def set_clim(self, vmin=None, vmax=None):
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"""
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set the norm limits for image scaling; if *vmin* is a length2
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sequence, interpret it as ``(vmin, vmax)`` which is used to
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support setp
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ACCEPTS: a length 2 sequence of floats; may be overridden in methods
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that have ``vmin`` and ``vmax`` kwargs.
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"""
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if vmax is None:
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try:
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vmin, vmax = vmin
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except (TypeError, ValueError):
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pass
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if vmin is not None:
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self.norm.vmin = colors._sanitize_extrema(vmin)
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if vmax is not None:
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self.norm.vmax = colors._sanitize_extrema(vmax)
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self.changed()
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def set_cmap(self, cmap):
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"""
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set the colormap for luminance data
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Parameters
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----------
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cmap : colormap or registered colormap name
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"""
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cmap = get_cmap(cmap)
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self.cmap = cmap
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self.changed()
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def set_norm(self, norm):
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"""Set the normalization instance.
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Parameters
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----------
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norm : `.Normalize`
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"""
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if norm is None:
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norm = colors.Normalize()
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self.norm = norm
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self.changed()
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def autoscale(self):
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"""
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Autoscale the scalar limits on the norm instance using the
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current array
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"""
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if self._A is None:
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raise TypeError('You must first set_array for mappable')
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self.norm.autoscale(self._A)
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self.changed()
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def autoscale_None(self):
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"""
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Autoscale the scalar limits on the norm instance using the
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current array, changing only limits that are None
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"""
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if self._A is None:
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raise TypeError('You must first set_array for mappable')
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self.norm.autoscale_None(self._A)
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self.changed()
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def add_checker(self, checker):
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"""
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Add an entry to a dictionary of boolean flags
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that are set to True when the mappable is changed.
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"""
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self.update_dict[checker] = False
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def check_update(self, checker):
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"""
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If mappable has changed since the last check,
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return True; else return False
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"""
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if self.update_dict[checker]:
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self.update_dict[checker] = False
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return True
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return False
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def changed(self):
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"""
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Call this whenever the mappable is changed to notify all the
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callbackSM listeners to the 'changed' signal
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"""
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self.callbacksSM.process('changed', self)
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for key in self.update_dict:
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self.update_dict[key] = True
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self.stale = True
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