xarray.DataArray.plot.imshow

DataArray.plot.imshow(x, y, **kwargs)[source]

Image plot of 2d DataArray using matplotlib.pyplot

Wraps matplotlib.pyplot.imshow()

While other plot methods require the DataArray to be strictly two-dimensional, imshow also accepts a 3D array where some dimension can be interpreted as RGB or RGBA color channels and allows this dimension to be specified via the kwarg rgb=.

Unlike matplotlib, Xarray can apply vmin and vmax to RGB or RGBA data, by applying a single scaling factor and offset to all bands. Passing robust=True infers vmin and vmax in the usual way.

Note

This function needs uniformly spaced coordinates to properly label the axes. Call DataArray.plot() to check.

The pixels are centered on the coordinates values. Ie, if the coordinate value is 3.2 then the pixels for those coordinates will be centered on 3.2.

Parameters
  • darray (DataArray) – Must be 2 dimensional, unless creating faceted plots

  • x (string, optional) – Coordinate for x axis. If None use darray.dims[1]

  • y (string, optional) – Coordinate for y axis. If None use darray.dims[0]

  • figsize (tuple, optional) – A tuple (width, height) of the figure in inches. Mutually exclusive with size and ax.

  • aspect (scalar, optional) – Aspect ratio of plot, so that aspect * size gives the width in inches. Only used if a size is provided.

  • size (scalar, optional) – If provided, create a new figure for the plot with the given size. Height (in inches) of each plot. See also: aspect.

  • ax (matplotlib axes object, optional) – Axis on which to plot this figure. By default, use the current axis. Mutually exclusive with size and figsize.

  • row (string, optional) – If passed, make row faceted plots on this dimension name

  • col (string, optional) – If passed, make column faceted plots on this dimension name

  • col_wrap (int, optional) – Use together with col to wrap faceted plots

  • xscale, yscale ('linear', 'symlog', 'log', 'logit', optional) – Specifies scaling for the x- and y-axes respectively

  • xticks, yticks (Specify tick locations for x- and y-axes)

  • xlim, ylim (Specify x- and y-axes limits)

  • xincrease (None, True, or False, optional) – Should the values on the x axes be increasing from left to right? if None, use the default for the matplotlib function.

  • yincrease (None, True, or False, optional) – Should the values on the y axes be increasing from top to bottom? if None, use the default for the matplotlib function.

  • add_colorbar (bool, optional) – Adds colorbar to axis

  • add_labels (bool, optional) – Use xarray metadata to label axes

  • norm (matplotlib.colors.Normalize instance, optional) – If the norm has vmin or vmax specified, the corresponding kwarg must be None.

  • vmin, vmax (floats, optional) – Values to anchor the colormap, otherwise they are inferred from the data and other keyword arguments. When a diverging dataset is inferred, setting one of these values will fix the other by symmetry around center. Setting both values prevents use of a diverging colormap. If discrete levels are provided as an explicit list, both of these values are ignored.

  • cmap (:doc:matplotlib colormap name or object, optional) – The mapping from data values to color space. If not provided, this will be either be viridis (if the function infers a sequential dataset) or RdBu_r (if the function infers a diverging dataset). When Seaborn is installed, cmap may also be a seaborn color palette. If cmap is seaborn color palette and the plot type is not contour or contourf, levels must also be specified.

  • colors (discrete colors to plot, optional) – A single color or a list of colors. If the plot type is not contour or contourf, the levels argument is required.

  • center (float, optional) – The value at which to center the colormap. Passing this value implies use of a diverging colormap. Setting it to False prevents use of a diverging colormap.

  • robust (bool, optional) – If True and vmin or vmax are absent, the colormap range is computed with 2nd and 98th percentiles instead of the extreme values.

  • extend ({"neither", "both", "min", "max"}, optional) – How to draw arrows extending the colorbar beyond its limits. If not provided, extend is inferred from vmin, vmax and the data limits.

  • levels (int or list-like object, optional) – Split the colormap (cmap) into discrete color intervals. If an integer is provided, “nice” levels are chosen based on the data range: this can imply that the final number of levels is not exactly the expected one. Setting vmin and/or vmax with levels=N is equivalent to setting levels=np.linspace(vmin, vmax, N).

  • infer_intervals (bool, optional) – Only applies to pcolormesh. If True, the coordinate intervals are passed to pcolormesh. If False, the original coordinates are used (this can be useful for certain map projections). The default is to always infer intervals, unless the mesh is irregular and plotted on a map projection.

  • subplot_kws (dict, optional) – Dictionary of keyword arguments for matplotlib subplots. Only used for 2D and FacetGrid plots.

  • cbar_ax (matplotlib Axes, optional) – Axes in which to draw the colorbar.

  • cbar_kwargs (dict, optional) – Dictionary of keyword arguments to pass to the colorbar.

  • **kwargs (optional) – Additional arguments to wrapped matplotlib function

Returns

artist – The same type of primitive artist that the wrapped matplotlib function returns