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Fixes for binned non_uniform_axes #2728

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14 changes: 10 additions & 4 deletions hyperspy/_components/doniach.py
Original file line number Diff line number Diff line change
Expand Up @@ -150,19 +150,25 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
self.centre.value = centre
self.sigma.value = sigma
self.A.value = height * 1.3
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.value /= axis.scale
if axis.is_uniform:
self.A.value /= axis.scale
else:
self.A.value /= np.gradient(axis.axis)[axis.value2index(centre)]
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return True
else:
if self.A.map is None:
self._create_arrays()
self.A.map['values'][:] = height * 1.3
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.map['values'][:] /= axis.scale
if axis.is_uniform:
self.A.map['values'][:] /= axis.scale
else:
self.A.map['values'][:] /= np.gradient(axis.axis)[axis.value2index(centre)]
self.A.map['is_set'][:] = True
self.sigma.map['values'][:] = sigma
self.sigma.map['is_set'][:] = True
Expand Down
10 changes: 5 additions & 5 deletions hyperspy/_components/exponential.py
Original file line number Diff line number Diff line change
Expand Up @@ -88,9 +88,6 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
"""
super(Exponential, self)._estimate_parameters(signal)
axis = signal.axes_manager.signal_axes[0]
if not axis.is_uniform and self.binned:
raise NotImplementedError(
"This operation is not implemented for non-uniform axes.")
i1, i2 = axis.value_range_to_indices(x1, x2)
if i1 + 1 == i2:
if i2 < axis.high_index:
Expand Down Expand Up @@ -149,10 +146,13 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
'a zero or negative value).')
return False

if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
A /= axis.scale
if axis.is_uniform:
A /= axis.scale
else:
A /= np.gradient(axis.axis)[i_mid]
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if only_current is True:
self.A.value = A
self.tau.value = t
Expand Down
17 changes: 10 additions & 7 deletions hyperspy/_components/gaussian.py
Original file line number Diff line number Diff line change
Expand Up @@ -162,28 +162,31 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):

super(Gaussian, self)._estimate_parameters(signal)
axis = signal.axes_manager.signal_axes[0]
if not axis.is_uniform and self.binned:
raise NotImplementedError(
"This operation is not implemented for non-uniform axes.")
centre, height, sigma = _estimate_gaussian_parameters(signal, x1, x2,
only_current)
if only_current is True:
self.centre.value = centre
self.sigma.value = sigma
self.A.value = height * sigma * sqrt2pi
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.value /= axis.scale
if axis.is_uniform:
self.A.value /= axis.scale
else:
self.A.value /= np.gradient(axis.axis)[axis.value2index(centre)]
return True
else:
if self.A.map is None:
self._create_arrays()
self.A.map['values'][:] = height * sigma * sqrt2pi
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.map['values'] /= axis.scale
if axis.is_uniform:
self.A.map['values'] /= axis.scale
else:
self.A.map['values'] /= np.gradient(axis.axis)[axis.value2index(centre)]
self.A.map['is_set'][:] = True
self.sigma.map['values'][:] = sigma
self.sigma.map['is_set'][:] = True
Expand Down
15 changes: 11 additions & 4 deletions hyperspy/_components/gaussianhf.py
Original file line number Diff line number Diff line change
Expand Up @@ -17,6 +17,7 @@
# along with HyperSpy. If not, see <http://www.gnu.org/licenses/>.

import math
import numpy as np

from hyperspy._components.expression import Expression
from hyperspy._components.gaussian import _estimate_gaussian_parameters
Expand Down Expand Up @@ -144,19 +145,25 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
self.centre.value = centre
self.fwhm.value = sigma * sigma2fwhm
self.height.value = float(height)
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.height.value /= axis.scale
if axis.is_uniform:
self.height.value /= axis.scale
else:
self.height.value /= np.gradient(axis.axis)[axis.value2index(centre)]
return True
else:
if self.height.map is None:
self._create_arrays()
self.height.map['values'][:] = height
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.height.map['values'][:] /= axis.scale
if axis.is_uniform:
self.height.map['values'][:] /= axis.scale
else:
self.height.map['values'][:] /= np.gradient(axis.axis)[axis.value2index(centre)]
self.height.map['is_set'][:] = True
self.fwhm.map['values'][:] = sigma * sigma2fwhm
self.fwhm.map['is_set'][:] = True
Expand Down
17 changes: 10 additions & 7 deletions hyperspy/_components/lorentzian.py
Original file line number Diff line number Diff line change
Expand Up @@ -162,28 +162,31 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):

super(Lorentzian, self)._estimate_parameters(signal)
axis = signal.axes_manager.signal_axes[0]
if not axis.is_uniform and self.binned:
raise NotImplementedError(
"This operation is not implemented for non-uniform axes.")
centre, height, gamma = _estimate_lorentzian_parameters(signal, x1, x2,
only_current)
if only_current is True:
self.centre.value = centre
self.gamma.value = gamma
self.A.value = height * gamma * np.pi
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.value /= axis.scale
if axis.is_uniform:
self.A.value /= axis.scale
else:
self.A.value /= np.gradient(axis.axis)[axis.value2index(centre)]
return True
else:
if self.A.map is None:
self._create_arrays()
self.A.map['values'][:] = height * gamma * np.pi
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.map['values'] /= axis.scale
if axis.is_uniform:
self.A.map['values'] /= axis.scale
else:
self.A.map['values'] /= np.gradient(axis.axis)[axis.value2index(centre)]
self.A.map['is_set'][:] = True
self.gamma.map['values'][:] = gamma
self.gamma.map['is_set'][:] = True
Expand Down
17 changes: 10 additions & 7 deletions hyperspy/_components/offset.py
Original file line number Diff line number Diff line change
Expand Up @@ -88,17 +88,17 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
"""
super(Offset, self)._estimate_parameters(signal)
axis = signal.axes_manager.signal_axes[0]
if not axis.is_uniform and self.binned:
raise NotImplementedError(
"This operation is not implemented for non-uniform axes.")
i1, i2 = axis.value_range_to_indices(x1, x2)

if only_current is True:
self.offset.value = signal()[i1:i2].mean()
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.offset.value /= axis.scale
if axis.is_uniform:
self.offset.value /= axis.scale
else:
self.offset.value /= np.gradient(axis.axis)[(i1 + i2) // 2]
return True
else:
if self.offset.map is None:
Expand All @@ -108,10 +108,13 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
gi[axis.index_in_array] = slice(i1, i2)
self.offset.map['values'][:] = dc[tuple(
gi)].mean(axis.index_in_array)
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.offset.map['values'] /= axis.scale
if axis.is_uniform:
self.offset.map['values'] /= axis.scale
else:
self.offset.map['values'] /= np.gradient(axis.axis)[(i1 + i2) // 2]
self.offset.map['is_set'][:] = True
self.fetch_stored_values()
return True
Expand Down
14 changes: 10 additions & 4 deletions hyperspy/_components/pes_voigt.py
Original file line number Diff line number Diff line change
Expand Up @@ -301,19 +301,25 @@ def estimate_parameters(self, signal, E1, E2, only_current=False):
self.centre.value = centre
self.FWHM.value = sigma * sigma2fwhm
self.area.value = height * sigma * sqrt2pi
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.area.value /= axis.scale
if axis.is_uniform:
self.area.value /= axis.scale
else:
self.area.value /= np.gradient(axis.axis)[axis.value2index(centre)]
return True
else:
if self.area.map is None:
self._create_arrays()
self.area.map['values'][:] = height * sigma * sqrt2pi
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.area.map['values'][:] /= axis.scale
if axis.is_uniform:
self.area.map['values'][:] /= axis.scale
else:
self.area.map['values'][:] /= np.gradient(axis.axis)[axis.value2index(centre)]
self.area.map['is_set'][:] = True
self.FWHM.map['values'][:] = sigma * sigma2fwhm
self.FWHM.map['is_set'][:] = True
Expand Down
18 changes: 10 additions & 8 deletions hyperspy/_components/polynomial.py
Original file line number Diff line number Diff line change
Expand Up @@ -90,21 +90,20 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):

"""
super()._estimate_parameters(signal)

axis = signal.axes_manager.signal_axes[0]
if not axis.is_uniform and self.binned:
raise NotImplementedError(
"This operation is not implemented for non-uniform axes.")
i1, i2 = axis.value_range_to_indices(x1, x2)
if only_current is True:
estimation = np.polyfit(axis.axis[i1:i2],
signal()[i1:i2],
self.get_polynomial_order())
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
for para, estim in zip(self.parameters[::-1], estimation):
para.value = estim / axis.scale
if axis.is_uniform:
para.value = estim / axis.scale
else:
para.value = estim / np.gradient(axis.axis)[i1 + i2 // 2]
else:
for para, estim in zip(self.parameters[::-1], estimation):
para.value = estim
Expand All @@ -127,11 +126,14 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
cmap_shape = nav_shape + (self.get_polynomial_order() + 1, )
fit = fit.reshape(cmap_shape)

if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
for i, para in enumerate(self.parameters[::-1]):
para.map['values'][:] = fit[..., i] / axis.scale
if axis.is_uniform:
para.map['values'][:] = fit[..., i] / axis.scale
else:
para.map['values'][:] = fit[..., i] / np.gradient(axis.axis)[i1 + i2 // 2]
para.map['is_set'][:] = True
else:
for i, para in enumerate(self.parameters[::-1]):
Expand Down
17 changes: 10 additions & 7 deletions hyperspy/_components/polynomial_deprecated.py
Original file line number Diff line number Diff line change
Expand Up @@ -128,18 +128,18 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
"""
super(Polynomial, self)._estimate_parameters(signal)
axis = signal.axes_manager.signal_axes[0]
if not axis.is_uniform and self.binned:
raise NotImplementedError(
"This operation is not implemented for non-uniform axes.")
i1, i2 = axis.value_range_to_indices(x1, x2)
if only_current is True:
estimation = np.polyfit(axis.axis[i1:i2],
signal()[i1:i2],
self.get_polynomial_order())
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.coefficients.value = estimation / axis.scale
if axis.is_uniform:
self.coefficients.value = estimation / axis.scale
else:
self.coefficients.value = estimation / np.gradient(axis.axis)[i1 + i2 // 2]
else:
self.coefficients.value = estimation
return True
Expand All @@ -159,10 +159,13 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):
# Shape needed to fit coefficients.map:
cmap_shape = nav_shape + (self.get_polynomial_order() + 1, )
self.coefficients.map['values'][:] = cmaps.reshape(cmap_shape)
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.coefficients.map["values"] /= axis.scale
if axis.is_uniform:
self.coefficients.map["values"] /= axis.scale
else:
self.coefficients.map["values"] /= np.gradient(axis.axis)[i1 + i2 // 2]
self.coefficients.map['is_set'][:] = True
self.fetch_stored_values()
return True
Expand Down
9 changes: 6 additions & 3 deletions hyperspy/_components/scalable_fixed_pattern.py
Original file line number Diff line number Diff line change
Expand Up @@ -135,10 +135,13 @@ def _function(self, x, xscale, yscale, shift):
result = yscale * self.f(x * xscale - shift)
else:
result = yscale * self.signal.data
if is_binned(self.signal) is True:
if is_binned(self.signal):
# in v2 replace by
#if self.signal.axes_manager.signal_axes[0].is_binned is True:
return result / self.signal.axes_manager.signal_axes[0].scale
#if self.signal.axes_manager.signal_axes[0].is_binned:
if self.signal.axes_manager.signal_axes[0].is_uniform:
return result / self.signal.axes_manager.signal_axes[0].scale
else:
return result / np.gradient(self.signal.axes_manager.signal_axes[0].axis)
else:
return result

Expand Down
17 changes: 10 additions & 7 deletions hyperspy/_components/skew_normal.py
Original file line number Diff line number Diff line change
Expand Up @@ -207,30 +207,33 @@ def estimate_parameters(self, signal, x1, x2, only_current=False):

super(SkewNormal, self)._estimate_parameters(signal)
axis = signal.axes_manager.signal_axes[0]
if not axis.is_uniform and self.binned:
raise NotImplementedError(
"This operation is not implemented for non-uniform axes.")
x0, height, scale, shape = _estimate_skewnormal_parameters(signal, x1,
x2, only_current)
if only_current is True:
self.x0.value = x0
self.A.value = height * sqrt2pi
self.scale.value = scale
self.shape.value = shape
if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.value /= axis.scale
if axis.is_uniform:
self.A.value /= axis.scale
else:
self.A.value /= np.gradient(axis.axis)[axis.value2index(x0)]
return True
else:
if self.A.map is None:
self._create_arrays()
self.A.map['values'][:] = height * sqrt2pi

if is_binned(signal) is True:
if is_binned(signal):
# in v2 replace by
#if axis.is_binned:
self.A.map['values'] /= axis.scale
if axis.is_uniform:
self.A.map['values'] /= axis.scale
else:
self.A.map['values'] /= np.gradient(axis.axis)[axis.value2index(x0)]
self.A.map['is_set'][:] = True
self.x0.map['values'][:] = x0
self.x0.map['is_set'][:] = True
Expand Down