class EELSConfig(t.HasTraits): eels_gos_files_path = t.Directory(guess_gos_path(), label = 'GOS directory', desc = 'The GOS files are required to create the EELS edge components') fine_structure_width = t.CFloat(30, label = 'Fine structure lenght', desc = 'The default lenght of the fine structure from the edge onset') fine_structure_active = t.CBool(False, label = 'Enable fine structure', desc = "If enabled, the regions of the EELS spectrum defined as fine " "structure will be fitted with a spline. Please note that it " "enabling this feature only makes sense when the model is " "convolved to account for multiple scattering") fine_structure_smoothing = t.Range(0., 1., value = 0.3, label = 'Fine structure smoothing factor', desc = 'The lower the value the smoother the fine structure spline fit') synchronize_cl_with_ll = t.CBool(False) preedge_safe_window_width = t.CFloat(2, label = 'Pre-onset region (in eV)', desc = 'Some functions needs to define the regions between two ' 'ionisation edges. Due to limited energy resolution or chemical ' 'shift, the region is limited on its higher energy side by ' 'the next ionisation edge onset minus an offset defined by this ' 'parameters') min_distance_between_edges_for_fine_structure = t.CFloat(0, label = 'Minimum distance between edges', desc = 'When automatically setting the fine structure energy regions, ' 'the fine structure of an EELS edge component is automatically ' 'disable if the next ionisation edge onset distance to the ' 'higher energy side of the fine structure region is lower that ' 'the value of this parameter')
class PlotConfig(t.HasTraits): saturated_pixels = t.CFloat( 0., label='Saturated pixels (deprecated)', desc='Warning: this is deprecated and will be removed in HyperSpy v2.0' ) # Don't use t.Enum to list all possible matplotlib colormap to # avoid importing matplotlib and building the list of colormap # when importing hyperpsy cmap_navigator = t.Str( 'gray', label='Color map navigator', desc='Set the default color map for the navigator.', ) cmap_signal = t.Str( 'gray', label='Color map signal', desc='Set the default color map for the signal plot.', ) dims_024_increase = t.Str('right', label='Navigate right') dims_024_decrease = t.Str( 'left', label='Navigate left', ) dims_135_increase = t.Str( 'down', label='Navigate down', ) dims_135_decrease = t.Str( 'up', label='Navigate up', ) modifier_dims_01 = t.Enum( [ 'ctrl', 'alt', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift' ], label='Modifier key for 1st and 2nd dimensions') # 0 elem is default modifier_dims_23 = t.Enum( [ 'shift', 'alt', 'ctrl', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift' ], label='Modifier key for 3rd and 4th dimensions') # 0 elem is default modifier_dims_45 = t.Enum( [ 'alt', 'ctrl', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift' ], label='Modifier key for 5th and 6th dimensions') # 0 elem is default pick_tolerance = t.CFloat( 7.5, label='Pick tolerance', desc='The pick tolerance of ROIs in screen pixels.')
class PlotConfig(t.HasTraits): saturated_pixels = t.CFloat(0.05, label='Saturated pixels', desc='Set the default saturated pixels value ' 'for plotting images.' ) cmap_navigator = t.Enum(list(cmap_d.keys()), label='Color map navigator', desc='Set the default color map for the navigator.', ) cmap_signal = t.Enum(list(cmap_d.keys()), label='Color map signal', desc='Set the default color map for the signal plot.', ) dims_024_increase = t.Str('right', label='Navigate right' ) dims_024_decrease = t.Str('left', label='Navigate left', ) dims_135_increase = t.Str('down', label='Navigate down', ) dims_135_decrease = t.Str('up', label='Navigate up', ) modifier_dims_01 = t.Enum(['ctrl', 'alt', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift'], label='Modifier key for 1st and 2nd dimensions') # 0 elem is default modifier_dims_23 = t.Enum(['shift', 'alt', 'ctrl', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift'], label='Modifier key for 3rd and 4th dimensions') # 0 elem is default modifier_dims_45 = t.Enum(['alt', 'ctrl', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift'], label='Modifier key for 5th and 6th dimensions') # 0 elem is default
class EDSConfig(t.HasTraits): eds_mn_ka = t.CFloat(130., label = 'Energy resolution at Mn Ka (eV)', desc = 'default value for FWHM of the Mn Ka peak in eV,' 'This value is used as a first approximation' 'of the energy resolution of the detector.') eds_tilt_stage = t.CFloat(0., label = 'Stage tilt', desc = 'default value for the stage tilt in degree.') eds_detector_azimuth = t.CFloat(0., label = 'Azimuth angle', desc = 'default value for the azimuth angle in degree. If the azimuth' ' is zero, the detector is perpendicular to the tilt axis.') eds_detector_elevation = t.CFloat(35., label = 'Elevation angle', desc = 'default value for the elevation angle in degree.')
class Point2DROI(BasePointROI): """Selects a single point in a 2D space. The coordinates of the point in the 2D space are stored in the traits 'x' and 'y'. `Point2DROI` can be used in place of a tuple containing the coordinates of the point `(x, y)`. Example ------- >>> roi = hs.roi.Point2DROI(3, 5) >>> x, y = roi >>> print(x, y) 3 5 """ x, y = (t.CFloat(t.Undefined), ) * 2 _ndim = 2 def __init__(self, x, y): super(Point2DROI, self).__init__() self.x, self.y = x, y def __getitem__(self, *args, **kwargs): _tuple = (self.x, self.y) return _tuple.__getitem__(*args, **kwargs) def is_valid(self): return t.Undefined not in (self.x, self.y) def _x_changed(self, old, new): self.update() def _y_changed(self, old, new): self.update() def _get_ranges(self): ranges = ( (self.x, ), (self.y, ), ) return ranges def _set_from_widget(self, widget): self.x, self.y = widget.position def _apply_roi2widget(self, widget): widget.position = (self.x, self.y) def _get_widget_type(self, axes, signal): return widgets.SquareWidget def __repr__(self): return "%s(x=%g, y=%g)" % (self.__class__.__name__, self.x, self.y)
class Point1DROI(BasePointROI): """Selects a single point in a 1D space. The coordinate of the point in the 1D space is stored in the 'value' trait. `Point1DROI` can be used in place of a tuple containing the value of `value`. Example ------- >>> roi = hs.roi.Point1DROI(0.5) >>> value, = roi >>> print(value) 0.5 """ value = t.CFloat(t.Undefined) _ndim = 1 def __init__(self, value): super(Point1DROI, self).__init__() self.value = value def __getitem__(self, *args, **kwargs): _tuple = (self.value, ) return _tuple.__getitem__(*args, **kwargs) def is_valid(self): return self.value != t.Undefined def _value_changed(self, old, new): self.update() def _get_ranges(self): ranges = ((self.value, ), ) return ranges def _set_from_widget(self, widget): self.value = widget.position[0] def _apply_roi2widget(self, widget): widget.position = (self.value, ) def _get_widget_type(self, axes, signal): direction = guess_vertical_or_horizontal(axes=axes, signal=signal) if direction == "vertical": return widgets.VerticalLineWidget elif direction == "horizontal": return widgets.HorizontalLineWidget else: raise ValueError("direction must be either horizontal or vertical") def __repr__(self): return "%s(value=%g)" % (self.__class__.__name__, self.value)
class Point1DROI(BasePointROI): """Selects a single point in a 1D space. The coordinate of the point in the 1D space is stored in the 'value' trait. """ value = t.CFloat(t.Undefined) _ndim = 1 def __init__(self, value): super(Point1DROI, self).__init__() self.value = value def is_valid(self): return self.value != t.Undefined def _value_changed(self, old, new): self.update() def _get_ranges(self): ranges = ((self.value,),) return ranges def _set_from_widget(self, widget): self.value = widget.position[0] def _apply_roi2widget(self, widget): widget.position = (self.value,) def _get_widget_type(self, axes, signal): # Figure out whether to use horizontal or veritcal line: if axes[0].navigate: plotdim = len(signal._plot.navigator_data_function().shape) axdim = signal.axes_manager.navigation_dimension idx = signal.axes_manager.navigation_axes.index(axes[0]) else: plotdim = len(signal._plot.signal_data_function().shape) axdim = signal.axes_manager.signal_dimension idx = signal.axes_manager.signal_axes.index(axes[0]) if plotdim == 2: # Plot is an image # axdim == 1 and plotdim == 2 indicates "spectrum stack" if idx == 0 and axdim != 1: # Axis is horizontal return widgets.VerticalLineWidget else: # Axis is vertical return widgets.HorizontalLineWidget elif plotdim == 1: # It is a spectrum return widgets.VerticalLineWidget else: raise ValueError("Could not find valid widget type") def __repr__(self): return "%s(value=%g)" % ( self.__class__.__name__, self.value)
class SpanROI(BaseInteractiveROI): """Selects a range in a 1D space. The coordinates of the range in the 1D space are stored in the traits 'left' and 'right'. """ left, right = (t.CFloat(t.Undefined), ) * 2 _ndim = 1 def __init__(self, left, right): super(SpanROI, self).__init__() self._bounds_check = True # Use reponsibly! self.left, self.right = left, right def is_valid(self): return (t.Undefined not in (self.left, self.right) and self.right >= self.left) def _right_changed(self, old, new): if self._bounds_check and \ self.left is not t.Undefined and new <= self.left: self.right = old else: self.update() def _left_changed(self, old, new): if self._bounds_check and \ self.right is not t.Undefined and new >= self.right: self.left = old else: self.update() def _get_ranges(self): ranges = ((self.left, self.right), ) return ranges def _set_from_widget(self, widget): value = (widget.position[0], widget.position[0] + widget.size[0]) self.left, self.right = value def _apply_roi2widget(self, widget): widget.set_bounds(left=self.left, right=self.right) def _get_widget_type(self, axes, signal): direction = guess_vertical_or_horizontal(axes=axes, signal=signal) if direction == "vertical": return partial(widgets.RangeWidget, direction="horizontal") elif direction == "horizontal": return partial(widgets.RangeWidget, direction="vertical") else: raise ValueError("direction must be either horizontal or vertical") def __repr__(self): return "%s(left=%g, right=%g)" % (self.__class__.__name__, self.left, self.right)
class OdinEmbeddedMeta(Schema): """OdinEmbeddedMeta info that can be stored in a schema bundle.""" #: Subject code subject = traits.CBytes(desc='subject code', maxlen=16) #: Time of creation timestamp = traits.CFloat(desc='unix timestamp') #: Number of embedded channels num_channels = traits.CInt(desc='number of channels') #: Number of classifiers num_classifiers = traits.CInt(desc='number of classifiers')
class PlotConfig(t.HasTraits): saturated_pixels = t.CFloat( 0., label='Saturated pixels (deprecated)', desc='Warning: this is deprecated and will be removed in HyperSpy v2.0' ) cmap_navigator = t.Enum( plt.colormaps(), label='Color map navigator', desc='Set the default color map for the navigator.', ) cmap_signal = t.Enum( plt.colormaps(), label='Color map signal', desc='Set the default color map for the signal plot.', ) dims_024_increase = t.Str('right', label='Navigate right') dims_024_decrease = t.Str( 'left', label='Navigate left', ) dims_135_increase = t.Str( 'down', label='Navigate down', ) dims_135_decrease = t.Str( 'up', label='Navigate up', ) modifier_dims_01 = t.Enum( [ 'ctrl', 'alt', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift' ], label='Modifier key for 1st and 2nd dimensions') # 0 elem is default modifier_dims_23 = t.Enum( [ 'shift', 'alt', 'ctrl', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift' ], label='Modifier key for 3rd and 4th dimensions') # 0 elem is default modifier_dims_45 = t.Enum( [ 'alt', 'ctrl', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift' ], label='Modifier key for 5th and 6th dimensions') # 0 elem is default
class Point2DROI(BasePointROI): """Selects a single point in a 2D space. The coordinates of the point in the 2D space are stored in the traits 'x' and 'y'. """ x, y = (t.CFloat(t.Undefined), ) * 2 _ndim = 2 def __init__(self, x, y): super(Point2DROI, self).__init__() self.x, self.y = x, y def is_valid(self): return t.Undefined not in (self.x, self.y) def _x_changed(self, old, new): self.update() def _y_changed(self, old, new): self.update() def _get_ranges(self): ranges = ( (self.x, ), (self.y, ), ) return ranges def _set_from_widget(self, widget): self.x, self.y = widget.position def _apply_roi2widget(self, widget): widget.position = (self.x, self.y) def _get_widget_type(self, axes, signal): return widgets.SquareWidget def __repr__(self): return "%s(x=%g, y=%g)" % (self.__class__.__name__, self.x, self.y)
class Point1DROI(BasePointROI): """Selects a single point in a 1D space. The coordinate of the point in the 1D space is stored in the 'value' trait. """ value = t.CFloat(t.Undefined) _ndim = 1 def __init__(self, value): super(Point1DROI, self).__init__() self.value = value def is_valid(self): return self.value != t.Undefined def _value_changed(self, old, new): self.update() def _get_ranges(self): ranges = ((self.value, ), ) return ranges def _set_from_widget(self, widget): self.value = widget.position[0] def _apply_roi2widget(self, widget): widget.position = (self.value, ) def _get_widget_type(self, axes, signal): direction = guess_vertical_or_horizontal(axes=axes, signal=signal) if direction == "vertical": return widgets.VerticalLineWidget elif direction == "horizontal": return widgets.HorizontalLineWidget else: raise ValueError("direction must be either horizontal or vertical") def __repr__(self): return "%s(value=%g)" % (self.__class__.__name__, self.value)
class PlotConfig(t.HasTraits): saturated_pixels = t.CFloat(0.05, label='Saturated pixels', desc='Set the default saturated_pixels for ' 'plotting images.' ) dims_024_increase = t.Str('right', label='Navigate right' ) dims_024_decrease = t.Str('left', label='Navigate left', ) dims_135_increase = t.Str('down', label='Navigate down', ) dims_135_decrease = t.Str('up', label='Navigate up', ) modifier_dims_01 = t.Enum(['ctrl', 'alt', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift'], label='Modifier key for 1st and 2nd dimensions') # 0 elem is default modifier_dims_23 = t.Enum(['shift', 'alt', 'ctrl', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift'], label='Modifier key for 3rd and 4th dimensions') # 0 elem is default modifier_dims_45 = t.Enum(['alt', 'ctrl', 'shift', 'ctrl+alt', 'ctrl+shift', 'alt+shift', 'ctrl+alt+shift'], label='Modifier key for 5th and 6th dimensions') # 0 elem is default
class Line2DROI(BaseInteractiveROI): x1, y1, x2, y2, linewidth = (t.CFloat(t.Undefined), ) * 5 _ndim = 2 def __init__(self, x1, y1, x2, y2, linewidth): super(Line2DROI, self).__init__() self.x1, self.y1, self.x2, self.y2 = x1, y1, x2, y2 self.linewidth = linewidth def is_valid(self): return t.Undefined not in (self.x1, self.y1, self.x2, self.y2) def _x1_changed(self, old, new): self.update() def _x2_changed(self, old, new): self.update() def _y1_changed(self, old, new): self.update() def _y2_changed(self, old, new): self.update() def _linewidth_changed(self, old, new): self.update() def _set_from_widget(self, widget): """Sets the internal representation of the ROI from the passed widget, without doing anything to events. """ c = widget.position s = widget.size[0] (self.x1, self.y1), (self.x2, self.y2) = c self.linewidth = s def _apply_roi2widget(self, widget): widget.position = (self.x1, self.y1), (self.x2, self.y2) widget.size = np.array([self.linewidth]) def _get_widget_type(self, axes, signal): return widgets.Line2DWidget @staticmethod def _line_profile_coordinates(src, dst, linewidth=1): """Return the coordinates of the profile of an image along a scan line. Parameters ---------- src : 2-tuple of numeric scalar (float or int) The start point of the scan line. dst : 2-tuple of numeric scalar (float or int) The end point of the scan line. linewidth : int, optional Width of the scan, perpendicular to the line Returns ------- coords : array, shape (2, N, C), float The coordinates of the profile along the scan line. The length of the profile is the ceil of the computed length of the scan line. Notes ----- This is a utility method meant to be used internally by skimage functions. The destination point is included in the profile, in contrast to standard numpy indexing. """ src_row, src_col = src = np.asarray(src, dtype=float) dst_row, dst_col = dst = np.asarray(dst, dtype=float) d_row, d_col = dst - src theta = np.arctan2(d_row, d_col) length = np.ceil(np.hypot(d_row, d_col) + 1).astype(int) # we add one above because we include the last point in the profile # (in contrast to standard numpy indexing) line_col = np.linspace(src_col, dst_col, length) line_row = np.linspace(src_row, dst_row, length) data = np.zeros((2, length, int(linewidth))) data[0, :, :] = np.tile(line_col, [linewidth, 1]).T data[1, :, :] = np.tile(line_row, [linewidth, 1]).T if linewidth != 1: # we subtract 1 from linewidth to change from pixel-counting # (make this line 3 pixels wide) to point distances (the # distance between pixel centers) col_width = (linewidth - 1) * np.sin(-theta) / 2 row_width = (linewidth - 1) * np.cos(theta) / 2 row_off = np.linspace(-row_width, row_width, linewidth) col_off = np.linspace(-col_width, col_width, linewidth) data[0, :, :] += np.tile(col_off, [length, 1]) data[1, :, :] += np.tile(row_off, [length, 1]) return data @property def length(self): p0 = np.array((self.x1, self.y1), dtype=np.float) p1 = np.array((self.x2, self.y2), dtype=np.float) d_row, d_col = p1 - p0 return np.hypot(d_row, d_col) @staticmethod def profile_line(img, src, dst, axes, linewidth=1, order=1, mode='constant', cval=0.0): """Return the intensity profile of an image measured along a scan line. Parameters ---------- img : numeric array, shape (M, N[, C]) The image, either grayscale (2D array) or multichannel (3D array, where the final axis contains the channel information). src : 2-tuple of numeric scalar (float or int) The start point of the scan line. dst : 2-tuple of numeric scalar (float or int) The end point of the scan line. linewidth : int, optional Width of the scan, perpendicular to the line order : int in {0, 1, 2, 3, 4, 5}, optional The order of the spline interpolation to compute image values at non-integer coordinates. 0 means nearest-neighbor interpolation. mode : string, one of {'constant', 'nearest', 'reflect', 'wrap'}, optional How to compute any values falling outside of the image. cval : float, optional If `mode` is 'constant', what constant value to use outside the image. Returns ------- return_value : array The intensity profile along the scan line. The length of the profile is the ceil of the computed length of the scan line. Examples -------- >>> x = np.array([[1, 1, 1, 2, 2, 2]]) >>> img = np.vstack([np.zeros_like(x), x, x, x, np.zeros_like(x)]) >>> img array([[0, 0, 0, 0, 0, 0], [1, 1, 1, 2, 2, 2], [1, 1, 1, 2, 2, 2], [1, 1, 1, 2, 2, 2], [0, 0, 0, 0, 0, 0]]) >>> profile_line(img, (2, 1), (2, 4)) array([ 1., 1., 2., 2.]) Notes ----- The destination point is included in the profile, in contrast to standard numpy indexing. """ import scipy.ndimage as nd p0 = ((src[0] - axes[0].offset) / axes[0].scale, (src[1] - axes[1].offset) / axes[1].scale) p1 = ((dst[0] - axes[0].offset) / axes[0].scale, (dst[1] - axes[1].offset) / axes[1].scale) perp_lines = Line2DROI._line_profile_coordinates(p0, p1, linewidth=linewidth) if img.ndim > 2: img = np.rollaxis(img, axes[0].index_in_array, 0) img = np.rollaxis(img, axes[1].index_in_array, 1) orig_shape = img.shape img = np.reshape(img, orig_shape[0:2] + (np.product(orig_shape[2:]), )) pixels = [ nd.map_coordinates(img[..., i], perp_lines, order=order, mode=mode, cval=cval) for i in xrange(img.shape[2]) ] i0 = min(axes[0].index_in_array, axes[1].index_in_array) pixels = np.transpose(np.asarray(pixels), (1, 2, 0)) intensities = pixels.mean(axis=1) intensities = np.rollaxis( np.reshape(intensities, intensities.shape[0:1] + orig_shape[2:]), 0, i0) else: pixels = nd.map_coordinates(img, perp_lines, order=order, mode=mode, cval=cval) intensities = pixels.mean(axis=1) return intensities def __call__(self, signal, axes=None, order=0): """Slice the signal according to the ROI, and return it. Arguments --------- signal : Signal The signal to slice with the ROI. axes : specification of axes to use, default = None The axes argument specifies which axes the ROI will be applied on. The items in the collection can be either of the following: * a tuple of: - DataAxis. These will not be checked with signal.axes_manager. - anything that will index signal.axes_manager * For any other value, it will check whether the navigation space can fit the right number of axis, and use that if it fits. If not, it will try the signal space. """ if axes is None and signal in self.signal_map: axes = self.signal_map[signal][1] else: axes = self._parse_axes(axes, signal.axes_manager) linewidth = self.linewidth / np.min([ax.scale for ax in axes]) profile = Line2DROI.profile_line(signal.data, (self.x1, self.y1), (self.x2, self.y2), axes=axes, linewidth=linewidth, order=order) length = np.linalg.norm(np.diff(np.array( ((self.x1, self.y1), (self.x2, self.y2))), axis=0), axis=1)[0] axm = signal.axes_manager.deepcopy() idx = [] for ax in axes: idx.append(ax.index_in_axes_manager) for i in reversed(sorted(idx)): # Remove in reversed order axm.remove(i) axis = DataAxis(len(profile), scale=length / len(profile), units=axes[0].units, navigate=axes[0].navigate) axis.axes_manager = axm i0 = min(axes[0].index_in_array, axes[1].index_in_array) axm._axes.insert(i0, axis) from hyperspy.signals import Signal roi = Signal(profile, axes=axm._get_axes_dicts(), metadata=signal.metadata.deepcopy().as_dictionary(), original_metadata=signal.original_metadata.deepcopy(). as_dictionary()) return roi def __repr__(self): return "%s(x1=%g, y1=%g, x2=%g, y2=%g, linewidth=%g)" % ( self.__class__.__name__, self.x1, self.y1, self.x2, self.y2, self.linewidth)
class Parameter(t.HasTraits): """Model parameter Attributes ---------- value : float or array The value of the parameter for the current location. The value for other locations is stored in map. bmin, bmax: float Lower and upper bounds of the parameter value. twin : {None, Parameter} If it is not None, the value of the current parameter is a function of the given Parameter. The function is by default the identity function, but it can be defined by twin_function twin_function : function Function that, if selt.twin is not None, takes self.twin.value as its only argument and returns a float or array that is returned when getting Parameter.value twin_inverse_function : function The inverse of twin_function. If it is None then it is not possible to set the value of the parameter twin by setting the value of the current parameter. ext_force_positive : bool If True, the parameter value is set to be the absolute value of the input value i.e. if we set Parameter.value = -3, the value stored is 3 instead. This is useful to bound a value to be positive in an optimization without actually using an optimizer that supports bounding. ext_bounded : bool Similar to ext_force_positive, but in this case the bounds are defined by bmin and bmax. It is a better idea to use an optimizer that supports bounding though. Methods ------- as_signal(field = 'values') Get a parameter map as a signal object plot() Plots the value of the Parameter at all locations. export(folder=None, name=None, format=None, save_std=False) Saves the value of the parameter map to the specified format connect, disconnect(function) Call the functions connected when the value attribute changes. """ __number_of_elements = 1 __value = 0 __free = True _bounds = (None, None) __twin = None _axes_manager = None __ext_bounded = False __ext_force_positive = False # traitsui bugs out trying to make an editor for this, so always specify! # (it bugs out, because both editor shares the object, and Array editors # don't like non-sequence objects). TextEditor() works well, so does # RangeEditor() as it works with bmin/bmax. value = t.Property(t.Either([t.CFloat(0), Array()])) units = t.Str('') free = t.Property(t.CBool(True)) bmin = t.Property(NoneFloat(), label="Lower bounds") bmax = t.Property(NoneFloat(), label="Upper bounds") def __init__(self): self._twins = set() self.connected_functions = list() self.twin_function = lambda x: x self.twin_inverse_function = lambda x: x self.std = None self.component = None self.grad = None self.name = '' self.map = None self.model = None def __repr__(self): text = '' text += 'Parameter %s' % self.name if self.component is not None: text += ' of %s' % self.component._get_short_description() text = '<' + text + '>' return text.encode('utf8') def __len__(self): return self._number_of_elements def connect(self, f): if f not in self.connected_functions: self.connected_functions.append(f) if self.twin: self.twin.connect(f) def disconnect(self, f): if f in self.connected_functions: self.connected_functions.remove(f) if self.twin: self.twin.disconnect(f) def _get_value(self): if self.twin is None: return self.__value else: return self.twin_function(self.twin.value) def _set_value(self, arg): try: # Use try/except instead of hasattr("__len__") because a numpy # memmap has a __len__ wrapper even for numbers that raises a # TypeError when calling. See issue #349. if len(arg) != self._number_of_elements: raise ValueError("The length of the parameter must be ", self._number_of_elements) else: if not isinstance(arg, tuple): arg = tuple(arg) except TypeError: if self._number_of_elements != 1: raise ValueError("The length of the parameter must be ", self._number_of_elements) old_value = self.__value if self.twin is not None: if self.twin_inverse_function is not None: self.twin.value = self.twin_inverse_function(arg) return if self.ext_bounded is False: self.__value = arg else: if self.ext_force_positive is True: arg = np.abs(arg) if self._number_of_elements == 1: if self.bmin is not None and arg <= self.bmin: self.__value = self.bmin elif self.bmax is not None and arg >= self.bmax: self.__value = self.bmax else: self.__value = arg else: bmin = (self.bmin if self.bmin is not None else -np.inf) bmax = (self.bmax if self.bmin is not None else np.inf) self.__value = np.clip(arg, bmin, bmax) if (self._number_of_elements != 1 and not isinstance(self.__value, tuple)): self.__value = tuple(self.__value) if old_value != self.__value: for f in self.connected_functions: try: f() except: self.disconnect(f) self.trait_property_changed('value', old_value, self.__value) # Fix the parameter when coupled def _get_free(self): if self.twin is None: return self.__free else: return False def _set_free(self, arg): old_value = self.__free self.__free = arg if self.component is not None: self.component._update_free_parameters() self.trait_property_changed('free', old_value, self.__free) def _set_twin(self, arg): if arg is None: if self.twin is not None: # Store the value of the twin in order to set the # value of the parameter when it is uncoupled twin_value = self.value if self in self.twin._twins: self.twin._twins.remove(self) for f in self.connected_functions: self.twin.disconnect(f) self.__twin = arg self.value = twin_value else: if self not in arg._twins: arg._twins.add(self) for f in self.connected_functions: arg.connect(f) self.__twin = arg if self.component is not None: self.component._update_free_parameters() def _get_twin(self): return self.__twin twin = property(_get_twin, _set_twin) def _get_bmin(self): if self._number_of_elements == 1: return self._bounds[0] else: return self._bounds[0][0] def _set_bmin(self, arg): old_value = self.bmin if self._number_of_elements == 1: self._bounds = (arg, self.bmax) else: self._bounds = ((arg, self.bmax), ) * self._number_of_elements # Update the value to take into account the new bounds self.value = self.value self.trait_property_changed('bmin', old_value, arg) def _get_bmax(self): if self._number_of_elements == 1: return self._bounds[1] else: return self._bounds[0][1] def _set_bmax(self, arg): old_value = self.bmax if self._number_of_elements == 1: self._bounds = (self.bmin, arg) else: self._bounds = ((self.bmin, arg), ) * self._number_of_elements # Update the value to take into account the new bounds self.value = self.value self.trait_property_changed('bmax', old_value, arg) @property def _number_of_elements(self): return self.__number_of_elements @_number_of_elements.setter def _number_of_elements(self, arg): # Do nothing if the number of arguments stays the same if self.__number_of_elements == arg: return if arg <= 1: raise ValueError("Please provide an integer number equal " "or greater to 1") self._bounds = ((self.bmin, self.bmax), ) * arg self.__number_of_elements = arg if arg == 1: self._Parameter__value = 0 else: self._Parameter__value = (0, ) * arg if self.component is not None: self.component.update_number_parameters() @property def ext_bounded(self): return self.__ext_bounded @ext_bounded.setter def ext_bounded(self, arg): if arg is not self.__ext_bounded: self.__ext_bounded = arg # Update the value to take into account the new bounds self.value = self.value @property def ext_force_positive(self): return self.__ext_force_positive @ext_force_positive.setter def ext_force_positive(self, arg): if arg is not self.__ext_force_positive: self.__ext_force_positive = arg # Update the value to take into account the new bounds self.value = self.value def store_current_value_in_array(self): """Store the value and std attributes. See also -------- fetch, assign_current_value_to_all """ indices = self._axes_manager.indices[::-1] # If it is a single spectrum indices is () if not indices: indices = (0, ) self.map['values'][indices] = self.value self.map['is_set'][indices] = True if self.std is not None: self.map['std'][indices] = self.std def fetch(self): """Fetch the stored value and std attributes. See Also -------- store_current_value_in_array, assign_current_value_to_all """ indices = self._axes_manager.indices[::-1] # If it is a single spectrum indices is () if not indices: indices = (0, ) if self.map['is_set'][indices]: self.value = self.map['values'][indices] self.std = self.map['std'][indices] def assign_current_value_to_all(self, mask=None): '''Assign the current value attribute to all the indices Parameters ---------- mask: {None, boolean numpy array} Set only the indices that are not masked i.e. where mask is False. See Also -------- store_current_value_in_array, fetch ''' if mask is None: mask = np.zeros(self.map.shape, dtype='bool') self.map['values'][mask == False] = self.value self.map['is_set'][mask == False] = True def _create_array(self): """Create the map array to store the information in multidimensional datasets. """ shape = self._axes_manager._navigation_shape_in_array if not shape: shape = [ 1, ] dtype_ = np.dtype([('values', 'float', self._number_of_elements), ('std', 'float', self._number_of_elements), ('is_set', 'bool', 1)]) if (self.map is None or self.map.shape != shape or self.map.dtype != dtype_): self.map = np.zeros(shape, dtype_) self.map['std'].fill(np.nan) # TODO: in the future this class should have access to # axes manager and should be able to fetch its own # values. Until then, the next line is necessary to avoid # erros when self.std is defined and the shape is different # from the newly defined arrays self.std = None def as_signal(self, field='values'): """Get a parameter map as a signal object. Please note that this method only works when the navigation dimension is greater than 0. Parameters ---------- field : {'values', 'std', 'is_set'} Raises ------ NavigationDimensionError : if the navigation dimension is 0 """ from hyperspy.signal import Signal if self._axes_manager.navigation_dimension == 0: raise NavigationDimensionError(0, '>0') s = Signal(data=self.map[field], axes=self._axes_manager._get_navigation_axes_dicts()) if self.component.active_is_multidimensional: s.data[np.logical_not(self.component._active_array)] = np.nan s.metadata.General.title = ("%s parameter" % self.name if self.component is None else "%s parameter of %s component" % (self.name, self.component.name)) for axis in s.axes_manager._axes: axis.navigate = False if self._number_of_elements > 1: s.axes_manager.append_axis(size=self._number_of_elements, name=self.name, navigate=True) return s def plot(self): self.as_signal().plot() def export(self, folder=None, name=None, format=None, save_std=False): '''Save the data to a file. All the arguments are optional. Parameters ---------- folder : str or None The path to the folder where the file will be saved. If `None` the current folder is used by default. name : str or None The name of the file. If `None` the Components name followed by the Parameter `name` attributes will be used by default. If a file with the same name exists the name will be modified by appending a number to the file path. save_std : bool If True, also the standard deviation will be saved ''' if format is None: format = preferences.General.default_export_format if name is None: name = self.component.name + '_' + self.name filename = incremental_filename(slugify(name) + '.' + format) if folder is not None: filename = os.path.join(folder, filename) self.as_signal().save(filename) if save_std is True: self.as_signal(field='std').save(append2pathname(filename, '_std')) def default_traits_view(self): # As mentioned above, the default editor for # value = t.Property(t.Either([t.CFloat(0), Array()])) # gives a ValueError. We therefore implement default_traits_view so # that configure/edit_traits will still work straight out of the box. # A whitelist controls which traits to include in this view. from traitsui.api import RangeEditor, View, Item whitelist = ['bmax', 'bmin', 'free', 'name', 'std', 'units', 'value'] editable_traits = [ trait for trait in self.editable_traits() if trait in whitelist ] if 'value' in editable_traits: i = editable_traits.index('value') v = editable_traits.pop(i) editable_traits.insert( i, Item(v, editor=RangeEditor(low_name='bmin', high_name='bmax'))) view = View(editable_traits, buttons=['OK', 'Cancel']) return view
class CircleROI(BaseInteractiveROI): cx, cy, r, r_inner = (t.CFloat(t.Undefined), ) * 4 _ndim = 2 def __init__(self, cx, cy, r, r_inner=None): super(CircleROI, self).__init__() self._bounds_check = True # Use reponsibly! self.cx, self.cy, self.r = cx, cy, r if r_inner: self.r_inner = r_inner def is_valid(self): return (t.Undefined not in ( self.cx, self.cy, self.r, ) and self.r_inner == t.Undefined or self.r >= self.r_inner) def _cx_changed(self, old, new): self.update() def _cy_changed(self, old, new): self.update() def _r_changed(self, old, new): if self._bounds_check and \ self.r_inner is not t.Undefined and new < self.r_inner: self.r = old else: self.update() def _r_inner_changed(self, old, new): if self._bounds_check and \ self.r is not t.Undefined and new >= self.r: self.r_inner = old else: self.update() def _set_from_widget(self, widget): """Sets the internal representation of the ROI from the passed widget, without doing anything to events. """ self.cx, self.cy = widget.position self.r, self.r_inner = widget.size def _apply_roi2widget(self, widget): widget.position = (self.cx, self.cy) inner = self.r_inner if self.r_inner != t.Undefined else 0.0 widget.size = (self.r, inner) def _get_widget_type(self, axes, signal): return widgets.CircleWidget def navigate(self, signal): raise NotImplementedError("CircleROI does not support navigation.") def __call__(self, signal, axes=None): """Slice the signal according to the ROI, and return it. Arguments --------- signal : Signal The signal to slice with the ROI. axes : specification of axes to use, default = None The axes argument specifies which axes the ROI will be applied on. The items in the collection can be either of the following: * a tuple of: - DataAxis. These will not be checked with signal.axes_manager. - anything that will index signal.axes_manager * For any other value, it will check whether the navigation space can fit the right number of axis, and use that if it fits. If not, it will try the signal space. """ if axes is None and signal in self.signal_map: axes = self.signal_map[signal][1] else: axes = self._parse_axes(axes, signal.axes_manager) natax = signal.axes_manager._get_axes_in_natural_order() # Slice original data with a circumscribed rectangle cx = self.cx + 0.5 * axes[0].scale cy = self.cy + 0.5 * axes[1].scale ranges = [[cx - self.r, cx + self.r], [cy - self.r, cy + self.r]] slices = self._make_slices(natax, axes, ranges) ir = [slices[natax.index(axes[0])], slices[natax.index(axes[1])]] vx = axes[0].axis[ir[0]] - cx vy = axes[1].axis[ir[1]] - cy gx, gy = np.meshgrid(vx, vy) gr = gx**2 + gy**2 mask = gr > self.r**2 if self.r_inner != t.Undefined: mask |= gr < self.r_inner**2 tiles = [] shape = [] for i in xrange(len(slices)): if i == natax.index(axes[0]): tiles.append(1) shape.append(mask.shape[0]) elif i == natax.index(axes[1]): tiles.append(1) shape.append(mask.shape[1]) else: tiles.append(signal.axes_manager.shape[i]) shape.append(1) mask = mask.reshape(shape) mask = np.tile(mask, tiles) if axes[0].navigate: if len(axes) == 2 and not axes[1].navigate: # Special case, since we can no longer slice axes in different # spaces together. roi = signal.inav[slices[0]].isig[slices[1]] else: slicer = signal.inav.__getitem__ slices = slices[0:signal.axes_manager.navigation_dimension] roi = slicer(slices) else: slicer = signal.isig.__getitem__ slices = slices[signal.axes_manager.navigation_dimension:] roi = slicer(slices) roi.data = np.ma.masked_array(roi.data, mask, hard_mask=True) return roi def __repr__(self): if self.r_inner == t.Undefined: return "%s(cx=%g, cy=%g, r=%g" % (self.__class__.__name__, self.cx, self.cy, self.r) else: return "%s(cx=%g, cy=%g, r=%g, r_inner=%g)" % ( self.__class__.__name__, self.cx, self.cy, self.r, self.r_inner)
class Line2DROI(BaseInteractiveROI): x1, y1, x2, y2, linewidth = (t.CFloat(t.Undefined), ) * 5 _ndim = 2 def __init__(self, x1, y1, x2, y2, linewidth=0): super(Line2DROI, self).__init__() self.x1, self.y1, self.x2, self.y2 = x1, y1, x2, y2 self.linewidth = linewidth def is_valid(self): return t.Undefined not in (self.x1, self.y1, self.x2, self.y2) def _x1_changed(self, old, new): self.update() def _x2_changed(self, old, new): self.update() def _y1_changed(self, old, new): self.update() def _y2_changed(self, old, new): self.update() def _linewidth_changed(self, old, new): self.update() def _set_from_widget(self, widget): """Sets the internal representation of the ROI from the passed widget, without doing anything to events. """ c = widget.position s = widget.size[0] (self.x1, self.y1), (self.x2, self.y2) = c self.linewidth = s def _apply_roi2widget(self, widget): widget.position = (self.x1, self.y1), (self.x2, self.y2) widget.size = np.array([self.linewidth]) def _get_widget_type(self, axes, signal): return widgets.Line2DWidget @staticmethod def _line_profile_coordinates(src, dst, linewidth=1): """Return the coordinates of the profile of an image along a scan line. Parameters ---------- src : 2-tuple of numeric scalar (float or int) The start point of the scan line. dst : 2-tuple of numeric scalar (float or int) The end point of the scan line. linewidth : int, optional Width of the scan, perpendicular to the line Returns ------- coords : array, shape (2, N, C), float The coordinates of the profile along the scan line. The length of the profile is the ceil of the computed length of the scan line. Notes ----- This is a utility method meant to be used internally by skimage functions. The destination point is included in the profile, in contrast to standard numpy indexing. """ src_row, src_col = src = np.asarray(src, dtype=float) dst_row, dst_col = dst = np.asarray(dst, dtype=float) d_row, d_col = dst - src theta = np.arctan2(d_row, d_col) length = np.ceil(np.hypot(d_row, d_col) + 1).astype(int) # we add one above because we include the last point in the profile # (in contrast to standard numpy indexing) line_col = np.linspace(src_col, dst_col, length) line_row = np.linspace(src_row, dst_row, length) data = np.zeros((2, length, linewidth)) data[0, :, :] = np.tile(line_col, [linewidth, 1]).T data[1, :, :] = np.tile(line_row, [linewidth, 1]).T if linewidth != 1: # we subtract 1 from linewidth to change from pixel-counting # (make this line 3 pixels wide) to point distances (the # distance between pixel centers) col_width = (linewidth - 1) * np.sin(-theta) / 2 row_width = (linewidth - 1) * np.cos(theta) / 2 row_off = np.linspace(-row_width, row_width, linewidth) col_off = np.linspace(-col_width, col_width, linewidth) data[0, :, :] += np.tile(col_off, [length, 1]) data[1, :, :] += np.tile(row_off, [length, 1]) return data @property def length(self): p0 = np.array((self.x1, self.y1), dtype=np.float) p1 = np.array((self.x2, self.y2), dtype=np.float) d_row, d_col = p1 - p0 return np.hypot(d_row, d_col) def angle(self, axis='horizontal', units='degrees'): """"Angle between ROI line and selected axis Parameters ---------- axis : str, {'horizontal', 'vertical'}, optional Select axis against which the angle of the ROI line is measured. 'x' is alias to 'horizontal' and 'y' is 'vertical' (Default: 'horizontal') units : str, {'degrees', 'radians'} The angle units of the output (Default: 'degrees') Returns ------- angle : float Examples -------- >>> import hyperspy.api as hs >>> hs.roi.Line2DROI(0., 0., 1., 2., 1) >>> r.angle() 63.43494882292201 """ x = self.x2 - self.x1 y = self.y2 - self.y1 if units == 'degrees': conversation = 180. / np.pi elif units == 'radians': conversation = 1. else: raise ValueError( "Units are not recognized. Use either 'degrees' or 'radians'." ) if axis == 'horizontal': return np.arctan2(y, x) * conversation elif axis == 'vertical': return np.arctan2(x, y) * conversation else: raise ValueError("Axis is not recognized. " "Use either 'horizontal' or 'vertical'.") @staticmethod def profile_line(img, src, dst, axes, linewidth=1, order=1, mode='constant', cval=0.0): """Return the intensity profile of an image measured along a scan line. Parameters ---------- img : numeric array, shape (M, N[, C]) The image, either grayscale (2D array) or multichannel (3D array, where the final axis contains the channel information). src : 2-tuple of numeric scalar (float or int) The start point of the scan line. dst : 2-tuple of numeric scalar (float or int) The end point of the scan line. linewidth : int, optional Width of the scan, perpendicular to the line order : int in {0, 1, 2, 3, 4, 5}, optional The order of the spline interpolation to compute image values at non-integer coordinates. 0 means nearest-neighbor interpolation. mode : string, one of {'constant', 'nearest', 'reflect', 'wrap'}, optional How to compute any values falling outside of the image. cval : float, optional If `mode` is 'constant', what constant value to use outside the image. Returns ------- return_value : array The intensity profile along the scan line. The length of the profile is the ceil of the computed length of the scan line. Examples -------- >>> x = np.array([[1, 1, 1, 2, 2, 2]]) >>> img = np.vstack([np.zeros_like(x), x, x, x, np.zeros_like(x)]) >>> img array([[0, 0, 0, 0, 0, 0], [1, 1, 1, 2, 2, 2], [1, 1, 1, 2, 2, 2], [1, 1, 1, 2, 2, 2], [0, 0, 0, 0, 0, 0]]) >>> profile_line(img, (2, 1), (2, 4)) array([ 1., 1., 2., 2.]) Notes ----- The destination point is included in the profile, in contrast to standard numpy indexing. """ import scipy.ndimage as nd # Convert points coordinates from axes units to pixels p0 = ((src[0] - axes[0].offset) / axes[0].scale, (src[1] - axes[1].offset) / axes[1].scale) p1 = ((dst[0] - axes[0].offset) / axes[0].scale, (dst[1] - axes[1].offset) / axes[1].scale) if linewidth < 0: raise ValueError("linewidth must be positive number") linewidth_px = linewidth / np.min([ax.scale for ax in axes]) linewidth_px = int(round(linewidth_px)) # Minimum size 1 pixel linewidth_px = linewidth_px if linewidth_px >= 1 else 1 perp_lines = Line2DROI._line_profile_coordinates( p0, p1, linewidth=linewidth_px) if img.ndim > 2: idx = [ax.index_in_array for ax in axes] if idx[0] < idx[1]: img = np.rollaxis(img, idx[0], 0) img = np.rollaxis(img, idx[1], 1) else: img = np.rollaxis(img, idx[1], 0) img = np.rollaxis(img, idx[0], 0) orig_shape = img.shape img = np.reshape(img, orig_shape[0:2] + (np.product(orig_shape[2:]), )) pixels = [ nd.map_coordinates(img[..., i].T, perp_lines, order=order, mode=mode, cval=cval) for i in range(img.shape[2]) ] i0 = min(axes[0].index_in_array, axes[1].index_in_array) pixels = np.transpose(np.asarray(pixels), (1, 2, 0)) intensities = pixels.mean(axis=1) intensities = np.rollaxis( np.reshape(intensities, intensities.shape[0:1] + orig_shape[2:]), 0, i0 + 1) else: pixels = nd.map_coordinates(img, perp_lines, order=order, mode=mode, cval=cval) intensities = pixels.mean(axis=1) return intensities def __call__(self, signal, out=None, axes=None, order=0): """Slice the signal according to the ROI, and return it. Arguments --------- signal : Signal The signal to slice with the ROI. out : Signal, default = None If the 'out' argument is supplied, the sliced output will be put into this instead of returning a Signal. See Signal.__getitem__() for more details on 'out'. axes : specification of axes to use, default = None The axes argument specifies which axes the ROI will be applied on. The items in the collection can be either of the following: * a tuple of: - DataAxis. These will not be checked with signal.axes_manager. - anything that will index signal.axes_manager * For any other value, it will check whether the navigation space can fit the right number of axis, and use that if it fits. If not, it will try the signal space. order : The spline interpolation order to use when extracting the line profile. 0 means nearest-neighbor interpolation, and is both the default and the fastest. """ if axes is None and signal in self.signal_map: axes = self.signal_map[signal][1] else: axes = self._parse_axes(axes, signal.axes_manager) profile = Line2DROI.profile_line(signal.data, (self.x1, self.y1), (self.x2, self.y2), axes=axes, linewidth=self.linewidth, order=order) length = np.linalg.norm(np.diff(np.array( ((self.x1, self.y1), (self.x2, self.y2))), axis=0), axis=1)[0] if out is None: axm = signal.axes_manager.deepcopy() i0 = min(axes[0].index_in_array, axes[1].index_in_array) axm.remove([ax.index_in_array + 3j for ax in axes]) axis = DataAxis(profile.shape[i0], scale=length / profile.shape[i0], units=axes[0].units, navigate=axes[0].navigate) axis.axes_manager = axm axm._axes.insert(i0, axis) from hyperspy.signals import BaseSignal roi = BaseSignal( profile, axes=axm._get_axes_dicts(), metadata=signal.metadata.deepcopy().as_dictionary(), original_metadata=signal.original_metadata.deepcopy( ).as_dictionary()) return roi else: out.data = profile i0 = min(axes[0].index_in_array, axes[1].index_in_array) ax = out.axes_manager._axes[i0] size = len(profile) scale = length / len(profile) axchange = size != ax.size or scale != ax.scale if axchange: ax.size = len(profile) ax.scale = length / len(profile) out.events.data_changed.trigger(out) def __repr__(self): return "%s(x1=%g, y1=%g, x2=%g, y2=%g, linewidth=%g)" % ( self.__class__.__name__, self.x1, self.y1, self.x2, self.y2, self.linewidth)
class RectangularROI(BaseInteractiveROI): """Selects a range in a 2D space. The coordinates of the range in the 2D space are stored in the traits 'left', 'right', 'top' and 'bottom'. Convenience properties 'x', 'y', 'width' and 'height' are also available, but cannot be used for initialization. """ top, bottom, left, right = (t.CFloat(t.Undefined), ) * 4 _ndim = 2 def __init__(self, left, top, right, bottom): super(RectangularROI, self).__init__() self._bounds_check = True # Use reponsibly! self.top, self.bottom, self.left, self.right = top, bottom, left, right def is_valid(self): return (t.Undefined not in (self.top, self.bottom, self.left, self.right) and self.right >= self.left and self.bottom >= self.top) def _top_changed(self, old, new): if self._bounds_check and \ self.bottom is not t.Undefined and new >= self.bottom: self.top = old else: self.update() @property def width(self): """Returns / sets the width of the ROI""" return self.right - self.left @width.setter def width(self, value): if value == self.width: return self.right -= self.width - value @property def height(self): """Returns / sets the height of the ROI""" return self.bottom - self.top @height.setter def height(self, value): if value == self.height: return self.bottom -= self.height - value @property def x(self): """Returns / sets the x coordinate of the ROI without changing its width""" return self.left @x.setter def x(self, value): if value != self.x: diff = value - self.x try: self._applying_widget_change = True self._bounds_check = False with self.events.changed.suppress(): self.right += diff self.left += diff finally: self._applying_widget_change = False self._bounds_check = True self.update() @property def y(self): """Returns / sets the y coordinate of the ROI without changing its height""" return self.top @y.setter def y(self, value): if value != self.y: diff = value - self.y try: self._applying_widget_change = True self._bounds_check = False with self.events.changed.suppress(): self.top += diff self.bottom += diff finally: self._applying_widget_change = False self._bounds_check = True self.update() def _bottom_changed(self, old, new): if self._bounds_check and \ self.top is not t.Undefined and new <= self.top: self.bottom = old else: self.update() def _right_changed(self, old, new): if self._bounds_check and \ self.left is not t.Undefined and new <= self.left: self.right = old else: self.update() def _left_changed(self, old, new): if self._bounds_check and \ self.right is not t.Undefined and new >= self.right: self.left = old else: self.update() def _get_ranges(self): ranges = ( (self.left, self.right), (self.top, self.bottom), ) return ranges def _set_from_widget(self, widget): p = np.array(widget.position) s = np.array(widget.size) (self.left, self.top), (self.right, self.bottom) = (p, p + s) def _apply_roi2widget(self, widget): widget.set_bounds(left=self.left, bottom=self.bottom, right=self.right, top=self.top) def _get_widget_type(self, axes, signal): return widgets.RectangleWidget def __repr__(self): return "%s(left=%g, top=%g, right=%g, bottom=%g)" % ( self.__class__.__name__, self.left, self.top, self.right, self.bottom)
class CircleROI(BaseInteractiveROI): cx, cy, r, r_inner = (t.CFloat(t.Undefined), ) * 4 _ndim = 2 def __init__(self, cx, cy, r, r_inner=None): super(CircleROI, self).__init__() self._bounds_check = True # Use reponsibly! self.cx, self.cy, self.r = cx, cy, r if r_inner: self.r_inner = r_inner def is_valid(self): return (t.Undefined not in ( self.cx, self.cy, self.r, ) and (self.r_inner is t.Undefined or t.Undefined not in (self.r, self.r_inner) and self.r >= self.r_inner)) def _cx_changed(self, old, new): self.update() def _cy_changed(self, old, new): self.update() def _r_changed(self, old, new): if self._bounds_check and \ self.r_inner is not t.Undefined and new < self.r_inner: self.r = old else: self.update() def _r_inner_changed(self, old, new): if self._bounds_check and \ self.r is not t.Undefined and new >= self.r: self.r_inner = old else: self.update() def _set_from_widget(self, widget): """Sets the internal representation of the ROI from the passed widget, without doing anything to events. """ self.cx, self.cy = widget.position self.r, self.r_inner = widget.size def _apply_roi2widget(self, widget): widget.position = (self.cx, self.cy) inner = self.r_inner if self.r_inner != t.Undefined else 0.0 widget.size = (self.r, inner) def _get_widget_type(self, axes, signal): return widgets.CircleWidget def __call__(self, signal, out=None, axes=None): """Slice the signal according to the ROI, and return it. Arguments --------- signal : Signal The signal to slice with the ROI. out : Signal, default = None If the 'out' argument is supplied, the sliced output will be put into this instead of returning a Signal. See Signal.__getitem__() for more details on 'out'. axes : specification of axes to use, default = None The axes argument specifies which axes the ROI will be applied on. The items in the collection can be either of the following: * a tuple of: - DataAxis. These will not be checked with signal.axes_manager. - anything that will index signal.axes_manager * For any other value, it will check whether the navigation space can fit the right number of axis, and use that if it fits. If not, it will try the signal space. """ if axes is None and signal in self.signal_map: axes = self.signal_map[signal][1] else: axes = self._parse_axes(axes, signal.axes_manager) natax = signal.axes_manager._get_axes_in_natural_order() # Slice original data with a circumscribed rectangle cx = self.cx + 0.5001 * axes[0].scale cy = self.cy + 0.5001 * axes[1].scale ranges = [[cx - self.r, cx + self.r], [cy - self.r, cy + self.r]] slices = self._make_slices(natax, axes, ranges) ir = [slices[natax.index(axes[0])], slices[natax.index(axes[1])]] vx = axes[0].axis[ir[0]] - cx vy = axes[1].axis[ir[1]] - cy gx, gy = np.meshgrid(vx, vy) gr = gx**2 + gy**2 mask = gr > self.r**2 if self.r_inner != t.Undefined: mask |= gr < self.r_inner**2 tiles = [] shape = [] chunks = [] for i in range(len(slices)): if signal._lazy: chunks.append(signal.data.chunks[i][0]) if i == natax.index(axes[0]): thisshape = mask.shape[0] tiles.append(thisshape) shape.append(thisshape) elif i == natax.index(axes[1]): thisshape = mask.shape[1] tiles.append(thisshape) shape.append(thisshape) else: tiles.append(signal.axes_manager._axes[i].size) shape.append(1) mask = mask.reshape(shape) nav_axes = [ax.navigate for ax in axes] nav_dim = signal.axes_manager.navigation_dimension if True in nav_axes: if False in nav_axes: slicer = signal.inav[slices[:nav_dim]].isig.__getitem__ slices = slices[nav_dim:] else: slicer = signal.inav.__getitem__ slices = slices[0:nav_dim] else: slicer = signal.isig.__getitem__ slices = slices[nav_dim:] roi = slicer(slices, out=out) roi = out or roi if roi._lazy: import dask.array as da mask = da.from_array(mask, chunks=chunks) mask = da.broadcast_to(mask, tiles) # By default promotes dtype to float if required roi.data = da.where(mask, np.nan, roi.data) else: mask = np.broadcast_to(mask, tiles) roi.data = np.ma.masked_array(roi.data, mask, hard_mask=True) if out is None: return roi else: out.events.data_changed.trigger(out) def __repr__(self): if self.r_inner == t.Undefined: return "%s(cx=%g, cy=%g, r=%g)" % (self.__class__.__name__, self.cx, self.cy, self.r) else: return "%s(cx=%g, cy=%g, r=%g, r_inner=%g)" % ( self.__class__.__name__, self.cx, self.cy, self.r, self.r_inner)
class Parameter(t.HasTraits): """Model parameter Attributes ---------- value : float or array The value of the parameter for the current location. The value for other locations is stored in map. bmin, bmax: float Lower and upper bounds of the parameter value. twin : {None, Parameter} If it is not None, the value of the current parameter is a function of the given Parameter. The function is by default the identity function, but it can be defined by twin_function twin_function : function Function that, if selt.twin is not None, takes self.twin.value as its only argument and returns a float or array that is returned when getting Parameter.value twin_inverse_function : function The inverse of twin_function. If it is None then it is not possible to set the value of the parameter twin by setting the value of the current parameter. ext_force_positive : bool If True, the parameter value is set to be the absolute value of the input value i.e. if we set Parameter.value = -3, the value stored is 3 instead. This is useful to bound a value to be positive in an optimization without actually using an optimizer that supports bounding. ext_bounded : bool Similar to ext_force_positive, but in this case the bounds are defined by bmin and bmax. It is a better idea to use an optimizer that supports bounding though. Methods ------- as_signal(field = 'values') Get a parameter map as a signal object plot() Plots the value of the Parameter at all locations. export(folder=None, name=None, format=None, save_std=False) Saves the value of the parameter map to the specified format connect, disconnect(function) Call the functions connected when the value attribute changes. """ __number_of_elements = 1 __value = 0 __free = True _bounds = (None, None) __twin = None _axes_manager = None __ext_bounded = False __ext_force_positive = False # traitsui bugs out trying to make an editor for this, so always specify! # (it bugs out, because both editor shares the object, and Array editors # don't like non-sequence objects). TextEditor() works well, so does # RangeEditor() as it works with bmin/bmax. value = t.Property(t.Either([t.CFloat(0), Array()])) units = t.Str('') free = t.Property(t.CBool(True)) bmin = t.Property(NoneFloat(), label="Lower bounds") bmax = t.Property(NoneFloat(), label="Upper bounds") def __init__(self): self._twins = set() self.events = Events() self.events.value_changed = Event(""" Event that triggers when the `Parameter.value` changes. The event triggers after the internal state of the `Parameter` has been updated. Arguments --------- obj : Parameter The `Parameter` that the event belongs to value : {float | array} The new value of the parameter """, arguments=["obj", 'value']) self.twin_function = lambda x: x self.twin_inverse_function = lambda x: x self.std = None self.component = None self.grad = None self.name = '' self.units = '' self.map = None self.model = None self._whitelist = { '_id_name': None, 'value': None, 'std': None, 'free': None, 'units': None, 'map': None, '_bounds': None, 'ext_bounded': None, 'name': None, 'ext_force_positive': None, 'self': ('id', None), 'twin_function': ('fn', None), 'twin_inverse_function': ('fn', None), } self._slicing_whitelist = {'map': 'inav'} def _load_dictionary(self, dictionary): """Load data from dictionary Parameters ---------- dict : dictionary A dictionary containing at least the following items: _id_name : string _id_name of the original parameter, used to create the dictionary. Has to match with the self._id_name _whitelist : dictionary a dictionary, which keys are used as keywords to match with the parameter attributes. For more information see :meth:`hyperspy.misc.export_dictionary.load_from_dictionary` * any field from _whitelist.keys() * Returns ------- id_value : int the ID value of the original parameter, to be later used for setting up the correct twins """ if dictionary['_id_name'] == self._id_name: load_from_dictionary(self, dictionary) return dictionary['self'] else: raise ValueError( "_id_name of parameter and dictionary do not match, \nparameter._id_name = %s\ \ndictionary['_id_name'] = %s" % (self._id_name, dictionary['_id_name'])) def __repr__(self): text = '' text += 'Parameter %s' % self.name if self.component is not None: text += ' of %s' % self.component._get_short_description() text = '<' + text + '>' return text def __len__(self): return self._number_of_elements def _get_value(self): if self.twin is None: return self.__value else: return self.twin_function(self.twin.value) def _set_value(self, value): try: # Use try/except instead of hasattr("__len__") because a numpy # memmap has a __len__ wrapper even for numbers that raises a # TypeError when calling. See issue #349. if len(value) != self._number_of_elements: raise ValueError("The length of the parameter must be ", self._number_of_elements) else: if not isinstance(value, tuple): value = tuple(value) except TypeError: if self._number_of_elements != 1: raise ValueError("The length of the parameter must be ", self._number_of_elements) old_value = self.__value if self.twin is not None: if self.twin_inverse_function is not None: self.twin.value = self.twin_inverse_function(value) return if self.ext_bounded is False: self.__value = value else: if self.ext_force_positive is True: value = np.abs(value) if self._number_of_elements == 1: if self.bmin is not None and value <= self.bmin: self.__value = self.bmin elif self.bmax is not None and value >= self.bmax: self.__value = self.bmax else: self.__value = value else: bmin = (self.bmin if self.bmin is not None else -np.inf) bmax = (self.bmax if self.bmin is not None else np.inf) self.__value = np.clip(value, bmin, bmax) if (self._number_of_elements != 1 and not isinstance(self.__value, tuple)): self.__value = tuple(self.__value) if old_value != self.__value: self.events.value_changed.trigger(value=self.__value, obj=self) self.trait_property_changed('value', old_value, self.__value) # Fix the parameter when coupled def _get_free(self): if self.twin is None: return self.__free else: return False def _set_free(self, arg): old_value = self.__free self.__free = arg if self.component is not None: self.component._update_free_parameters() self.trait_property_changed('free', old_value, self.__free) def _on_twin_update(self, value, twin=None): if (twin is not None and hasattr(twin, 'events') and hasattr(twin.events, 'value_changed')): with twin.events.value_changed.suppress_callback( self._on_twin_update): self.events.value_changed.trigger(value=value, obj=self) else: self.events.value_changed.trigger(value=value, obj=self) def _set_twin(self, arg): if arg is None: if self.twin is not None: # Store the value of the twin in order to set the # value of the parameter when it is uncoupled twin_value = self.value if self in self.twin._twins: self.twin._twins.remove(self) self.twin.events.value_changed.disconnect( self._on_twin_update) self.__twin = arg self.value = twin_value else: if self not in arg._twins: arg._twins.add(self) arg.events.value_changed.connect(self._on_twin_update, ["value"]) self.__twin = arg if self.component is not None: self.component._update_free_parameters() def _get_twin(self): return self.__twin twin = property(_get_twin, _set_twin) def _get_bmin(self): if self._number_of_elements == 1: return self._bounds[0] else: return self._bounds[0][0] def _set_bmin(self, arg): old_value = self.bmin if self._number_of_elements == 1: self._bounds = (arg, self.bmax) else: self._bounds = ((arg, self.bmax), ) * self._number_of_elements # Update the value to take into account the new bounds self.value = self.value self.trait_property_changed('bmin', old_value, arg) def _get_bmax(self): if self._number_of_elements == 1: return self._bounds[1] else: return self._bounds[0][1] def _set_bmax(self, arg): old_value = self.bmax if self._number_of_elements == 1: self._bounds = (self.bmin, arg) else: self._bounds = ((self.bmin, arg), ) * self._number_of_elements # Update the value to take into account the new bounds self.value = self.value self.trait_property_changed('bmax', old_value, arg) @property def _number_of_elements(self): return self.__number_of_elements @_number_of_elements.setter def _number_of_elements(self, arg): # Do nothing if the number of arguments stays the same if self.__number_of_elements == arg: return if arg <= 1: raise ValueError("Please provide an integer number equal " "or greater to 1") self._bounds = ((self.bmin, self.bmax), ) * arg self.__number_of_elements = arg if arg == 1: self._Parameter__value = 0 else: self._Parameter__value = (0, ) * arg if self.component is not None: self.component.update_number_parameters() @property def ext_bounded(self): return self.__ext_bounded @ext_bounded.setter def ext_bounded(self, arg): if arg is not self.__ext_bounded: self.__ext_bounded = arg # Update the value to take into account the new bounds self.value = self.value @property def ext_force_positive(self): return self.__ext_force_positive @ext_force_positive.setter def ext_force_positive(self, arg): if arg is not self.__ext_force_positive: self.__ext_force_positive = arg # Update the value to take into account the new bounds self.value = self.value def store_current_value_in_array(self): """Store the value and std attributes. See also -------- fetch, assign_current_value_to_all """ indices = self._axes_manager.indices[::-1] # If it is a single spectrum indices is () if not indices: indices = (0, ) self.map['values'][indices] = self.value self.map['is_set'][indices] = True if self.std is not None: self.map['std'][indices] = self.std def fetch(self): """Fetch the stored value and std attributes. See Also -------- store_current_value_in_array, assign_current_value_to_all """ indices = self._axes_manager.indices[::-1] # If it is a single spectrum indices is () if not indices: indices = (0, ) if self.map['is_set'][indices]: self.value = self.map['values'][indices] self.std = self.map['std'][indices] def assign_current_value_to_all(self, mask=None): """Assign the current value attribute to all the indices Parameters ---------- mask: {None, boolean numpy array} Set only the indices that are not masked i.e. where mask is False. See Also -------- store_current_value_in_array, fetch """ if mask is None: mask = np.zeros(self.map.shape, dtype='bool') self.map['values'][mask == False] = self.value self.map['is_set'][mask == False] = True def _create_array(self): """Create the map array to store the information in multidimensional datasets. """ shape = self._axes_manager._navigation_shape_in_array if not shape: shape = [ 1, ] dtype_ = np.dtype([('values', 'float', self._number_of_elements), ('std', 'float', self._number_of_elements), ('is_set', 'bool', 1)]) if (self.map is None or self.map.shape != shape or self.map.dtype != dtype_): self.map = np.zeros(shape, dtype_) self.map['std'].fill(np.nan) # TODO: in the future this class should have access to # axes manager and should be able to fetch its own # values. Until then, the next line is necessary to avoid # erros when self.std is defined and the shape is different # from the newly defined arrays self.std = None def as_signal(self, field='values'): """Get a parameter map as a signal object. Please note that this method only works when the navigation dimension is greater than 0. Parameters ---------- field : {'values', 'std', 'is_set'} Raises ------ NavigationDimensionError : if the navigation dimension is 0 """ from hyperspy.signal import BaseSignal s = BaseSignal(data=self.map[field], axes=self._axes_manager._get_navigation_axes_dicts()) if self.component is not None and \ self.component.active_is_multidimensional: s.data[np.logical_not(self.component._active_array)] = np.nan s.metadata.General.title = ("%s parameter" % self.name if self.component is None else "%s parameter of %s component" % (self.name, self.component.name)) for axis in s.axes_manager._axes: axis.navigate = False if self._number_of_elements > 1: s.axes_manager._append_axis(size=self._number_of_elements, name=self.name, navigate=True) s._assign_subclass() if field == "values": # Add the variance if available std = self.as_signal(field="std") if not np.isnan(std.data).all(): std.data = std.data**2 std.metadata.General.title = "Variance" s.metadata.set_item("Signal.Noise_properties.variance", std) return s def plot(self, **kwargs): """Plot parameter signal. Parameters ---------- **kwargs Any extra keyword arguments are passed to the signal plot. Example ------- >>> parameter.plot() Set the minimum and maximum displayed values >>> parameter.plot(vmin=0, vmax=1) """ self.as_signal().plot(**kwargs) def export(self, folder=None, name=None, format=None, save_std=False): """Save the data to a file. All the arguments are optional. Parameters ---------- folder : str or None The path to the folder where the file will be saved. If `None` the current folder is used by default. name : str or None The name of the file. If `None` the Components name followed by the Parameter `name` attributes will be used by default. If a file with the same name exists the name will be modified by appending a number to the file path. save_std : bool If True, also the standard deviation will be saved """ if format is None: format = preferences.General.default_export_format if name is None: name = self.component.name + '_' + self.name filename = incremental_filename(slugify(name) + '.' + format) if folder is not None: filename = os.path.join(folder, filename) self.as_signal().save(filename) if save_std is True: self.as_signal(field='std').save(append2pathname(filename, '_std')) def as_dictionary(self, fullcopy=True): """Returns parameter as a dictionary, saving all attributes from self._whitelist.keys() For more information see :meth:`hyperspy.misc.export_dictionary.export_to_dictionary` Parameters ---------- fullcopy : Bool (optional, False) Copies of objects are stored, not references. If any found, functions will be pickled and signals converted to dictionaries Returns ------- dic : dictionary with the following keys: _id_name : string _id_name of the original parameter, used to create the dictionary. Has to match with the self._id_name _twins : list a list of ids of the twins of the parameter _whitelist : dictionary a dictionary, which keys are used as keywords to match with the parameter attributes. For more information see :meth:`hyperspy.misc.export_dictionary.export_to_dictionary` * any field from _whitelist.keys() * """ dic = {'_twins': [id(t) for t in self._twins]} export_to_dictionary(self, self._whitelist, dic, fullcopy) return dic def default_traits_view(self): # As mentioned above, the default editor for # value = t.Property(t.Either([t.CFloat(0), Array()])) # gives a ValueError. We therefore implement default_traits_view so # that configure/edit_traits will still work straight out of the box. # A whitelist controls which traits to include in this view. from traitsui.api import RangeEditor, View, Item whitelist = ['bmax', 'bmin', 'free', 'name', 'std', 'units', 'value'] editable_traits = [ trait for trait in self.editable_traits() if trait in whitelist ] if 'value' in editable_traits: i = editable_traits.index('value') v = editable_traits.pop(i) editable_traits.insert( i, Item(v, editor=RangeEditor(low_name='bmin', high_name='bmax'))) view = View(editable_traits, buttons=['OK', 'Cancel']) return view def _interactive_slider_bounds(self, index=None): """Guesstimates the bounds for the slider. They will probably have to be changed later by the user. """ fraction = 10. _min, _max, step = None, None, None value = self.value if index is None else self.value[index] if self.bmin is not None: _min = self.bmin if self.bmax is not None: _max = self.bmax if _max is None and _min is not None: _max = value + fraction * (value - _min) if _min is None and _max is not None: _min = value - fraction * (_max - value) if _min is None and _max is None: if self is self.component._position: axis = self._axes_manager.signal_axes[-1] _min = axis.axis.min() _max = axis.axis.max() step = np.abs(axis.scale) else: _max = value + np.abs(value * fraction) _min = value - np.abs(value * fraction) if step is None: step = (_max - _min) * 0.001 return {'min': _min, 'max': _max, 'step': step} def _interactive_update(self, value=None, index=None): """Callback function for the widgets, to update the value """ if value is not None: if index is None: self.value = value['new'] else: self.value = self.value[:index] + (value['new'],) +\ self.value[index + 1:] def notebook_interaction(self, display=True): """Creates interactive notebook widgets for the parameter, if available. Requires `ipywidgets` to be installed. Parameters ---------- display : bool if True (default), attempts to display the parameter widget. Otherwise returns the formatted widget object. """ from ipywidgets import VBox from traitlets import TraitError as TraitletError from IPython.display import display as ip_display try: if self._number_of_elements == 1: container = self._create_notebook_widget() else: children = [ self._create_notebook_widget(index=i) for i in range(self._number_of_elements) ] container = VBox(children) if not display: return container ip_display(container) except TraitletError: if display: _logger.info('This function is only avialable when running in' ' a notebook') else: raise def _create_notebook_widget(self, index=None): from ipywidgets import (FloatSlider, FloatText, Layout, HBox) widget_bounds = self._interactive_slider_bounds(index=index) thismin = FloatText( value=widget_bounds['min'], description='min', layout=Layout(flex='0 1 auto', width='auto'), ) thismax = FloatText( value=widget_bounds['max'], description='max', layout=Layout(flex='0 1 auto', width='auto'), ) current_value = self.value if index is None else self.value[index] current_name = self.name if index is not None: current_name += '_{}'.format(index) widget = FloatSlider(value=current_value, min=thismin.value, max=thismax.value, step=widget_bounds['step'], description=current_name, layout=Layout(flex='1 1 auto', width='auto')) def on_min_change(change): if widget.max > change['new']: widget.min = change['new'] widget.step = np.abs(widget.max - widget.min) * 0.001 def on_max_change(change): if widget.min < change['new']: widget.max = change['new'] widget.step = np.abs(widget.max - widget.min) * 0.001 thismin.observe(on_min_change, names='value') thismax.observe(on_max_change, names='value') this_observed = functools.partial(self._interactive_update, index=index) widget.observe(this_observed, names='value') container = HBox((thismin, widget, thismax)) return container
class Parameter(t.HasTraits): """Model parameter Attributes ---------- value : float or array The value of the parameter for the current location. The value for other locations is stored in map. bmin, bmax: float Lower and upper bounds of the parameter value. twin : {None, Parameter} If it is not None, the value of the current parameter is a function of the given Parameter. The function is by default the identity function, but it can be defined by twin_function twin_function_expr: str Expression of the ``twin_function`` that enables setting a functional relationship between the parameter and its twin. If ``twin`` is not ``None``, the parameter value is calculated as the output of calling the twin function with the value of the twin parameter. The string is parsed using sympy, so permitted values are any valid sympy expressions of one variable. If the function is invertible the twin inverse function is set automatically. twin_inverse_function : str Expression of the ``twin_inverse_function`` that enables setting the value of the twin parameter. If ``twin`` is not ``None``, its value is set to the output of calling the twin inverse function with the value provided. The string is parsed using sympy, so permitted values are any valid sympy expressions of one variable. twin_function : function **Setting this attribute manually is deprecated in HyperSpy newer than 1.1.2. It will become private in HyperSpy 2.0. Please use ``twin_function_expr`` instead.** twin_inverse_function : function **Setting this attribute manually is deprecated in HyperSpy newer than 1.1.2. It will become private in HyperSpy 2.0. Please use ``twin_inverse_function_expr`` instead.** ext_force_positive : bool If True, the parameter value is set to be the absolute value of the input value i.e. if we set Parameter.value = -3, the value stored is 3 instead. This is useful to bound a value to be positive in an optimization without actually using an optimizer that supports bounding. ext_bounded : bool Similar to ext_force_positive, but in this case the bounds are defined by bmin and bmax. It is a better idea to use an optimizer that supports bounding though. Methods ------- as_signal(field = 'values') Get a parameter map as a signal object plot() Plots the value of the Parameter at all locations. export(folder=None, name=None, format=None, save_std=False) Saves the value of the parameter map to the specified format connect, disconnect(function) Call the functions connected when the value attribute changes. """ __number_of_elements = 1 __value = 0 __free = True _bounds = (None, None) __twin = None _axes_manager = None __ext_bounded = False __ext_force_positive = False # traitsui bugs out trying to make an editor for this, so always specify! # (it bugs out, because both editor shares the object, and Array editors # don't like non-sequence objects). TextEditor() works well, so does # RangeEditor() as it works with bmin/bmax. value = t.Property(t.Either([t.CFloat(0), Array()])) units = t.Str('') free = t.Property(t.CBool(True)) bmin = t.Property(NoneFloat(), label="Lower bounds") bmax = t.Property(NoneFloat(), label="Upper bounds") _twin_function_expr = "" _twin_inverse_function_expr = "" twin_function = None _twin_inverse_function = None _twin_inverse_sympy = None def __init__(self): self._twins = set() self.events = Events() self.events.value_changed = Event(""" Event that triggers when the `Parameter.value` changes. The event triggers after the internal state of the `Parameter` has been updated. Arguments --------- obj : Parameter The `Parameter` that the event belongs to value : {float | array} The new value of the parameter """, arguments=["obj", 'value']) self.std = None self.component = None self.grad = None self.name = '' self.units = '' self.map = None self.model = None self._whitelist = { '_id_name': None, 'value': None, 'std': None, 'free': None, 'units': None, 'map': None, '_bounds': None, 'ext_bounded': None, 'name': None, 'ext_force_positive': None, 'twin_function_expr': None, 'twin_inverse_function_expr': None, 'self': ('id', None), } self._slicing_whitelist = {'map': 'inav'} def _load_dictionary(self, dictionary): """Load data from dictionary Parameters ---------- dict : dictionary A dictionary containing at least the following items: _id_name : string _id_name of the original parameter, used to create the dictionary. Has to match with the self._id_name _whitelist : dictionary a dictionary, which keys are used as keywords to match with the parameter attributes. For more information see :meth:`hyperspy.misc.export_dictionary.load_from_dictionary` * any field from _whitelist.keys() * Returns ------- id_value : int the ID value of the original parameter, to be later used for setting up the correct twins """ if dictionary['_id_name'] == self._id_name: load_from_dictionary(self, dictionary) return dictionary['self'] else: raise ValueError( "_id_name of parameter and dictionary do not match, \nparameter._id_name = %s\ \ndictionary['_id_name'] = %s" % (self._id_name, dictionary['_id_name'])) def __repr__(self): text = '' text += 'Parameter %s' % self.name if self.component is not None: text += ' of %s' % self.component._get_short_description() text = '<' + text + '>' return text def __len__(self): return self._number_of_elements @property def twin_function_expr(self): return self._twin_function_expr @twin_function_expr.setter def twin_function_expr(self, value): if not value: self.twin_function = None self.twin_inverse_function = None self._twin_function_expr = "" self._twin_inverse_sympy = None return expr = sympy.sympify(value) if len(expr.free_symbols) > 1: raise ValueError("The expression must contain only one variable.") elif len(expr.free_symbols) == 0: raise ValueError("The expression must contain one variable, " "it contains none.") x = tuple(expr.free_symbols)[0] self.twin_function = lambdify(x, expr.evalf()) self._twin_function_expr = value if not self.twin_inverse_function: y = sympy.Symbol(x.name + "2") try: inv = sympy.solveset(sympy.Eq(y, expr), x) self._twin_inverse_sympy = lambdify(y, inv) self._twin_inverse_function = None except BaseException: # Not all may have a suitable solution. self._twin_inverse_function = None self._twin_inverse_sympy = None _logger.warning( "The function {} is not invertible. Setting the value of " "{} will raise an AttributeError unless you set manually " "``twin_inverse_function_expr``. Otherwise, set the " "value of its twin parameter instead.".format(value, self)) @property def twin_inverse_function_expr(self): if self.twin: return self._twin_inverse_function_expr else: return "" @twin_inverse_function_expr.setter def twin_inverse_function_expr(self, value): if not value: self.twin_inverse_function = None self._twin_inverse_function_expr = "" return expr = sympy.sympify(value) if len(expr.free_symbols) > 1: raise ValueError("The expression must contain only one variable.") elif len(expr.free_symbols) == 0: raise ValueError("The expression must contain one variable, " "it contains none.") x = tuple(expr.free_symbols)[0] self._twin_inverse_function = lambdify(x, expr.evalf()) self._twin_inverse_function_expr = value @property def twin_inverse_function(self): if (not self.twin_inverse_function_expr and self.twin_function_expr and self._twin_inverse_sympy): return lambda x: self._twin_inverse_sympy(x).pop() else: return self._twin_inverse_function @twin_inverse_function.setter def twin_inverse_function(self, value): self._twin_inverse_function = value def _get_value(self): if self.twin is None: return self.__value else: if self.twin_function: return self.twin_function(self.twin.value) else: return self.twin.value def _set_value(self, value): try: # Use try/except instead of hasattr("__len__") because a numpy # memmap has a __len__ wrapper even for numbers that raises a # TypeError when calling. See issue #349. if len(value) != self._number_of_elements: raise ValueError("The length of the parameter must be ", self._number_of_elements) else: if not isinstance(value, tuple): value = tuple(value) except TypeError: if self._number_of_elements != 1: raise ValueError("The length of the parameter must be ", self._number_of_elements) old_value = self.__value if self.twin is not None: if self.twin_function is not None: if self.twin_inverse_function is not None: self.twin.value = self.twin_inverse_function(value) return else: raise AttributeError( "This parameter has a ``twin_function`` but" "its ``twin_inverse_function`` is not defined.") else: self.twin.value = value return if self.ext_bounded is False: self.__value = value else: if self.ext_force_positive is True: value = np.abs(value) if self._number_of_elements == 1: if self.bmin is not None and value <= self.bmin: self.__value = self.bmin elif self.bmax is not None and value >= self.bmax: self.__value = self.bmax else: self.__value = value else: bmin = (self.bmin if self.bmin is not None else -np.inf) bmax = (self.bmax if self.bmin is not None else np.inf) self.__value = np.clip(value, bmin, bmax) if (self._number_of_elements != 1 and not isinstance(self.__value, tuple)): self.__value = tuple(self.__value) if old_value != self.__value: self.events.value_changed.trigger(value=self.__value, obj=self) self.trait_property_changed('value', old_value, self.__value) # Fix the parameter when coupled def _get_free(self): if self.twin is None: return self.__free else: return False def _set_free(self, arg): old_value = self.__free self.__free = arg if self.component is not None: self.component._update_free_parameters() self.trait_property_changed('free', old_value, self.__free) def _on_twin_update(self, value, twin=None): if (twin is not None and hasattr(twin, 'events') and hasattr(twin.events, 'value_changed')): with twin.events.value_changed.suppress_callback( self._on_twin_update): self.events.value_changed.trigger(value=value, obj=self) else: self.events.value_changed.trigger(value=value, obj=self) def _set_twin(self, arg): if arg is None: if self.twin is not None: # Store the value of the twin in order to set the # value of the parameter when it is uncoupled twin_value = self.value if self in self.twin._twins: self.twin._twins.remove(self) self.twin.events.value_changed.disconnect( self._on_twin_update) self.__twin = arg self.value = twin_value else: if self not in arg._twins: arg._twins.add(self) arg.events.value_changed.connect(self._on_twin_update, ["value"]) self.__twin = arg if self.component is not None: self.component._update_free_parameters() def _get_twin(self): return self.__twin twin = property(_get_twin, _set_twin) def _get_bmin(self): if self._number_of_elements == 1: return self._bounds[0] else: return self._bounds[0][0] def _set_bmin(self, arg): old_value = self.bmin if self._number_of_elements == 1: self._bounds = (arg, self.bmax) else: self._bounds = ((arg, self.bmax), ) * self._number_of_elements # Update the value to take into account the new bounds self.value = self.value self.trait_property_changed('bmin', old_value, arg) def _get_bmax(self): if self._number_of_elements == 1: return self._bounds[1] else: return self._bounds[0][1] def _set_bmax(self, arg): old_value = self.bmax if self._number_of_elements == 1: self._bounds = (self.bmin, arg) else: self._bounds = ((self.bmin, arg), ) * self._number_of_elements # Update the value to take into account the new bounds self.value = self.value self.trait_property_changed('bmax', old_value, arg) @property def _number_of_elements(self): return self.__number_of_elements @_number_of_elements.setter def _number_of_elements(self, arg): # Do nothing if the number of arguments stays the same if self.__number_of_elements == arg: return if arg <= 1: raise ValueError("Please provide an integer number equal " "or greater to 1") self._bounds = ((self.bmin, self.bmax), ) * arg self.__number_of_elements = arg if arg == 1: self._Parameter__value = 0 else: self._Parameter__value = (0, ) * arg if self.component is not None: self.component.update_number_parameters() @property def ext_bounded(self): return self.__ext_bounded @ext_bounded.setter def ext_bounded(self, arg): if arg is not self.__ext_bounded: self.__ext_bounded = arg # Update the value to take into account the new bounds self.value = self.value @property def ext_force_positive(self): return self.__ext_force_positive @ext_force_positive.setter def ext_force_positive(self, arg): if arg is not self.__ext_force_positive: self.__ext_force_positive = arg # Update the value to take into account the new bounds self.value = self.value def store_current_value_in_array(self): """Store the value and std attributes. See also -------- fetch, assign_current_value_to_all """ indices = self._axes_manager.indices[::-1] # If it is a single spectrum indices is () if not indices: indices = (0, ) self.map['values'][indices] = self.value self.map['is_set'][indices] = True if self.std is not None: self.map['std'][indices] = self.std def fetch(self): """Fetch the stored value and std attributes. See Also -------- store_current_value_in_array, assign_current_value_to_all """ indices = self._axes_manager.indices[::-1] # If it is a single spectrum indices is () if not indices: indices = (0, ) if self.map['is_set'][indices]: value = self.map['values'][indices] std = self.map['std'][indices] if isinstance(value, dArray): value = value.compute() if isinstance(std, dArray): std = std.compute() self.value = value self.std = std def assign_current_value_to_all(self, mask=None): """Assign the current value attribute to all the indices Parameters ---------- mask: {None, boolean numpy array} Set only the indices that are not masked i.e. where mask is False. See Also -------- store_current_value_in_array, fetch """ if mask is None: mask = np.zeros(self.map.shape, dtype='bool') self.map['values'][mask == False] = self.value self.map['is_set'][mask == False] = True def _create_array(self): """Create the map array to store the information in multidimensional datasets. """ shape = self._axes_manager._navigation_shape_in_array if not shape: shape = [ 1, ] # Shape-1 fields in dtypes won’t be collapsed to scalars in a future # numpy version (see release notes numpy 1.17.0) if self._number_of_elements > 1: dtype_ = np.dtype([('values', 'float', self._number_of_elements), ('std', 'float', self._number_of_elements), ('is_set', 'bool')]) else: dtype_ = np.dtype([('values', 'float'), ('std', 'float'), ('is_set', 'bool')]) if (self.map is None or self.map.shape != shape or self.map.dtype != dtype_): self.map = np.zeros(shape, dtype_) self.map['std'].fill(np.nan) # TODO: in the future this class should have access to # axes manager and should be able to fetch its own # values. Until then, the next line is necessary to avoid # erros when self.std is defined and the shape is different # from the newly defined arrays self.std = None def as_signal(self, field='values'): """Get a parameter map as a signal object. Please note that this method only works when the navigation dimension is greater than 0. Parameters ---------- field : {'values', 'std', 'is_set'} Raises ------ NavigationDimensionError : if the navigation dimension is 0 """ from hyperspy.signal import BaseSignal s = BaseSignal(data=self.map[field], axes=self._axes_manager._get_navigation_axes_dicts()) if self.component is not None and \ self.component.active_is_multidimensional: s.data[np.logical_not(self.component._active_array)] = np.nan s.metadata.General.title = ("%s parameter" % self.name if self.component is None else "%s parameter of %s component" % (self.name, self.component.name)) for axis in s.axes_manager._axes: axis.navigate = False if self._number_of_elements > 1: s.axes_manager._append_axis(size=self._number_of_elements, name=self.name, navigate=True) s._assign_subclass() if field == "values": # Add the variance if available std = self.as_signal(field="std") if not np.isnan(std.data).all(): std.data = std.data**2 std.metadata.General.title = "Variance" s.metadata.set_item("Signal.Noise_properties.variance", std) return s def plot(self, **kwargs): """Plot parameter signal. Parameters ---------- **kwargs Any extra keyword arguments are passed to the signal plot. Example ------- >>> parameter.plot() #doctest: +SKIP Set the minimum and maximum displayed values >>> parameter.plot(vmin=0, vmax=1) #doctest: +SKIP """ self.as_signal().plot(**kwargs) def export(self, folder=None, name=None, format="hspy", save_std=False): """Save the data to a file. All the arguments are optional. Parameters ---------- folder : str or None The path to the folder where the file will be saved. If `None` the current folder is used by default. name : str or None The name of the file. If `None` the Components name followed by the Parameter `name` attributes will be used by default. If a file with the same name exists the name will be modified by appending a number to the file path. save_std : bool If True, also the standard deviation will be saved format: str The extension of any file format supported by HyperSpy, default hspy """ if format is None: format = "hspy" if name is None: name = self.component.name + '_' + self.name filename = incremental_filename(slugify(name) + '.' + format) if folder is not None: filename = os.path.join(folder, filename) self.as_signal().save(filename) if save_std is True: self.as_signal(field='std').save(append2pathname(filename, '_std')) def as_dictionary(self, fullcopy=True): """Returns parameter as a dictionary, saving all attributes from self._whitelist.keys() For more information see :meth:`hyperspy.misc.export_dictionary.export_to_dictionary` Parameters ---------- fullcopy : Bool (optional, False) Copies of objects are stored, not references. If any found, functions will be pickled and signals converted to dictionaries Returns ------- dic : dictionary with the following keys: _id_name : string _id_name of the original parameter, used to create the dictionary. Has to match with the self._id_name _twins : list a list of ids of the twins of the parameter _whitelist : dictionary a dictionary, which keys are used as keywords to match with the parameter attributes. For more information see :meth:`hyperspy.misc.export_dictionary.export_to_dictionary` * any field from _whitelist.keys() * """ dic = {'_twins': [id(t) for t in self._twins]} export_to_dictionary(self, self._whitelist, dic, fullcopy) return dic def default_traits_view(self): # As mentioned above, the default editor for # value = t.Property(t.Either([t.CFloat(0), Array()])) # gives a ValueError. We therefore implement default_traits_view so # that configure/edit_traits will still work straight out of the box. # A whitelist controls which traits to include in this view. from traitsui.api import RangeEditor, View, Item whitelist = ['bmax', 'bmin', 'free', 'name', 'std', 'units', 'value'] editable_traits = [ trait for trait in self.editable_traits() if trait in whitelist ] if 'value' in editable_traits: i = editable_traits.index('value') v = editable_traits.pop(i) editable_traits.insert( i, Item(v, editor=RangeEditor(low_name='bmin', high_name='bmax'))) view = View(editable_traits, buttons=['OK', 'Cancel']) return view
class RectangularROI(BaseInteractiveROI): """Selects a range in a 2D space. The coordinates of the range in the 2D space are stored in the traits 'left', 'right', 'top' and 'bottom'. """ top, bottom, left, right = (t.CFloat(t.Undefined), ) * 4 _ndim = 2 def __init__(self, left, top, right, bottom): super(RectangularROI, self).__init__() self._bounds_check = True # Use reponsibly! self.top, self.bottom, self.left, self.right = top, bottom, left, right def is_valid(self): return (t.Undefined not in (self.top, self.bottom, self.left, self.right) and self.right >= self.left and self.bottom >= self.top) def _top_changed(self, old, new): if self._bounds_check and \ self.bottom is not t.Undefined and new >= self.bottom: self.top = old else: self.update() def _bottom_changed(self, old, new): if self._bounds_check and \ self.top is not t.Undefined and new <= self.top: self.bottom = old else: self.update() def _right_changed(self, old, new): if self._bounds_check and \ self.left is not t.Undefined and new <= self.left: self.right = old else: self.update() def _left_changed(self, old, new): if self._bounds_check and \ self.right is not t.Undefined and new >= self.right: self.left = old else: self.update() def _get_ranges(self): ranges = ( (self.left, self.right), (self.top, self.bottom), ) return ranges def _set_from_widget(self, widget): p = np.array(widget.position) s = np.array(widget.size) (self.left, self.top), (self.right, self.bottom) = (p, p + s) def _apply_roi2widget(self, widget): widget.set_bounds(left=self.left, bottom=self.bottom, right=self.right, top=self.top) def _get_widget_type(self, axes, signal): return widgets.RectangleWidget def __repr__(self): return "%s(left=%g, top=%g, right=%g, bottom=%g)" % ( self.__class__.__name__, self.left, self.top, self.right, self.bottom)