matplotlib.colors.BoundaryNorm
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class matplotlib.colors.BoundaryNorm(boundaries, ncolors, clip=False)
[source] -
Bases:
matplotlib.colors.Normalize
Generate a colormap index based on discrete intervals.
Unlike
Normalize
orLogNorm
,BoundaryNorm
maps values to integers instead of to the interval 0-1.Mapping to the 0-1 interval could have been done via piece-wise linear interpolation, but using integers seems simpler, and reduces the number of conversions back and forth between integer and floating point.
Parameters: -
boundariesarray-like
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Monotonically increasing sequence of boundaries
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ncolorsint
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Number of colors in the colormap to be used
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clipbool, optional
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If clip is
True
, out of range values are mapped to 0 if they are belowboundaries[0]
or mapped to ncolors - 1 if they are aboveboundaries[-1]
.If clip is
False
, out of range values are mapped to -1 if they are belowboundaries[0]
or mapped to ncolors if they are aboveboundaries[-1]
. These are then converted to valid indices byColormap.__call__()
.
Notes
boundaries defines the edges of bins, and data falling within a bin is mapped to the color with the same index.
If the number of bins doesn't equal ncolors, the color is chosen by linear interpolation of the bin number onto color numbers.
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inverse(self, value)
[source] -
Raises: - ValueError
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BoundaryNorm is not invertible, so calling this method will always raise an error
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Examples using matplotlib.colors.BoundaryNorm
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Licensed under the Matplotlib License Agreement.
https://matplotlib.org/3.2.2/api/_as_gen/matplotlib.colors.BoundaryNorm.html