matplotlib.colors.LogNorm
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class matplotlib.colors.LogNorm(vmin=None, vmax=None, clip=False)[source] -
Bases:
matplotlib.colors.NormalizeNormalize a given value to the 0-1 range on a log scale.
Parameters: -
vmin, vmaxfloat or None -
If vmin and/or vmax is not given, they are initialized from the minimum and maximum value, respectively, of the first input processed; i.e.,
__call__(A)callsautoscale_None(A). -
clipbool, default: False -
If
Truevalues falling outside the range[vmin, vmax], are mapped to 0 or 1, whichever is closer, and masked values are set to 1. IfFalsemasked values remain masked.Clipping silently defeats the purpose of setting the over, under, and masked colors in a colormap, so it is likely to lead to surprises; therefore the default is
clip=False.
Notes
Returns 0 if
vmin == vmax.-
__call__(self, value, clip=None)[source] -
Normalize value data in the
[vmin, vmax]interval into the[0.0, 1.0]interval and return it.Parameters: - value
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Data to normalize.
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clipbool -
If
None, defaults toself.clip(which defaults toFalse).
Notes
If not already initialized,
self.vminandself.vmaxare initialized usingself.autoscale_None(value).
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__module__ = 'matplotlib.colors'
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__slotnames__ = []
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autoscale(self, A)[source] -
Set vmin, vmax to min, max of A.
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autoscale_None(self, A)[source] -
If vmin or vmax are not set, use the min/max of A to set them.
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inverse(self, value)[source]
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Examples using matplotlib.colors.LogNorm
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Licensed under the Matplotlib License Agreement.
https://matplotlib.org/3.3.3/api/_as_gen/matplotlib.colors.LogNorm.html