mne.viz.plot_topomap¶
- mne.viz.plot_topomap(data, pos, vmin=None, vmax=None, cmap=None, sensors=True, res=64, axes=None, names=None, show_names=False, mask=None, mask_params=None, outlines='head', contours=6, image_interp='bilinear', show=True, onselect=None, extrapolate='auto', sphere=None, border='mean', ch_type='eeg', cnorm=None)[source]¶
Plot a topographic map as image.
- Parameters
- data
array
, shape (n_chan,) The data values to plot.
- pos
array
, shape (n_chan, 2) | instance ofInfo
Location information for the data points(/channels). If an array, for each data point, the x and y coordinates. If an Info object, it must contain only one data type and exactly
len(data)
data channels, and the x/y coordinates will be inferred from this Info object.- vmin
float
|callable()
|None
The value specifying the lower bound of the color range. If None, and vmax is None, -vmax is used. Else np.min(data). If callable, the output equals vmin(data). Defaults to None.
- vmax
float
|callable()
|None
The value specifying the upper bound of the color range. If None, the maximum absolute value is used. If callable, the output equals vmax(data). Defaults to None.
- cmapmatplotlib colormap |
None
Colormap to use. If None, ‘Reds’ is used for all positive data, otherwise defaults to ‘RdBu_r’.
- sensorsbool |
str
Add markers for sensor locations to the plot. Accepts matplotlib plot format string (e.g., ‘r+’ for red plusses). If True (default), circles will be used.
- res
int
The resolution of the topomap image (n pixels along each side).
- axesinstance of
Axes
|None
The axes to plot to. If None, the current axes will be used.
- names
list
|None
List of channel names. If None, channel names are not plotted.
- show_namesbool |
callable()
If True, show channel names on top of the map. If a callable is passed, channel names will be formatted using the callable; e.g., to delete the prefix ‘MEG ‘ from all channel names, pass the function
lambda x: x.replace('MEG ', '')
. Ifmask
is not None, only significant sensors will be shown. IfTrue
, a list of names must be provided (seenames
keyword).- mask
ndarray
of bool, shape (n_channels,) |None
Array indicating channel(s) to highlight with a distinct plotting style. Array elements set to
True
will be plotted with the parameters given inmask_params
. Defaults toNone
, equivalent to an array of allFalse
elements.- mask_params
dict
|None
Additional plotting parameters for plotting significant sensors. Default (None) equals:
dict(marker='o', markerfacecolor='w', markeredgecolor='k', linewidth=0, markersize=4)
- outlines‘head’ | ‘skirt’ |
dict
|None
The outlines to be drawn. If ‘head’, the default head scheme will be drawn. If ‘skirt’ the head scheme will be drawn, but sensors are allowed to be plotted outside of the head circle. If dict, each key refers to a tuple of x and y positions, the values in ‘mask_pos’ will serve as image mask. Alternatively, a matplotlib patch object can be passed for advanced masking options, either directly or as a function that returns patches (required for multi-axis plots). If None, nothing will be drawn. Defaults to ‘head’.
- contours
int
|array
offloat
The number of contour lines to draw. If 0, no contours will be drawn. If an array, the values represent the levels for the contours. The values are in µV for EEG, fT for magnetometers and fT/m for gradiometers. Defaults to 6.
- image_interp
str
The image interpolation to be used. All matplotlib options are accepted.
- showbool
Show figure if True.
- onselect
callable()
|None
Handle for a function that is called when the user selects a set of channels by rectangle selection (matplotlib
RectangleSelector
). If None interactive selection is disabled. Defaults to None.- extrapolate
str
Options:
'box'
Extrapolate to four points placed to form a square encompassing all data points, where each side of the square is three times the range of the data in the respective dimension.
'local'
(default)Extrapolate only to nearby points (approximately to points closer than median inter-electrode distance). This will also set the mask to be polygonal based on the convex hull of the sensors.
'head'
Extrapolate out to the edges of the clipping circle. This will be on the head circle when the sensors are contained within the head circle, but it can extend beyond the head when sensors are plotted outside the head circle.
Changed in version 0.21:
The default was changed to
'local'
'local'
was changed to use a convex hull mask'head'
was changed to extrapolate out to the clipping circle.
New in version 0.18.
- sphere
float
| array_like | instance ofConductorModel
The sphere parameters to use for the cartoon head. Can be array-like of shape (4,) to give the X/Y/Z origin and radius in meters, or a single float to give the radius (origin assumed 0, 0, 0). Can also be a spherical ConductorModel, which will use the origin and radius. Can also be None (default) which is an alias for 0.095. Currently the head radius does not affect plotting.
New in version 0.20.
- border
float
| ‘mean’ Value to extrapolate to on the topomap borders. If
'mean'
(default), then each extrapolated point has the average value of its neighbours.New in version 0.20.
- ch_type
str
The channel type being plotted. Determines the
'auto'
extrapolation mode.New in version 0.21.
- cnorm
matplotlib.colors.Normalize
|None
Colormap normalization, default None means linear normalization. If not None,
vmin
andvmax
arguments are ignored. See Notes for more details.New in version 0.24.
- data
- Returns
- im
matplotlib.image.AxesImage
The interpolated data.
- cn
matplotlib.contour.ContourSet
The fieldlines.
- im
Notes
The
cnorm
parameter can be used to implement custom colormap normalization. By default, a linear mapping from vmin to vmax is used, which correspond to the first and last colors in the colormap. This might be undesired when vmin and vmax are not symmetrical around zero (or a value that can be interpreted as some midpoint). For example, assume we want to use the RdBu colormap (red to white to blue) for values ranging from -1 to 3, and 0 should be white. However, white corresponds to the midpoint in the data by default, i.e. 1. Therefore, we use the following colormap normalizationcnorm
and pass it as the thecnorm
argument:from matplotlib.colors import TwoSlopeNorm cnorm = TwoSlopeNorm(vmin=-1, vcenter=0, vmax=3)
Note that because we define
vmin
andvmax
in the normalization, argumentsvmin
andvmax
toplot_topomap
will be ignored if a normalization is provided. See the matplotlib docs for more details on colormap normalization.