Note

This page is a reference documentation. It only explains the function signature, and not how to use it. Please refer to the user guide for the big picture.

8.10.6. nilearn.plotting.plot_img

nilearn.plotting.plot_img(img, cut_coords=None, output_file=None, display_mode='ortho', figure=None, axes=None, title=None, threshold=None, annotate=True, draw_cross=True, black_bg=False, colorbar=False, resampling_interpolation='continuous', bg_img=None, vmin=None, vmax=None, **kwargs)

Plot cuts of a given image (by default Frontal, Axial, and Lateral)

Parameters:

img: Niimg-like object

cut_coords: None, a tuple of floats, or an integer

The MNI coordinates of the point where the cut is performed If display_mode is ‘ortho’ or ‘tiled’, this should be a 3-tuple: (x, y, z) For display_mode == ‘x’, ‘y’, or ‘z’, then these are the coordinates of each cut in the corresponding direction. If None is given, the cuts is calculated automaticaly. If display_mode is ‘x’, ‘y’ or ‘z’, cut_coords can be an integer, in which case it specifies the number of cuts to perform

output_file: string, or None, optional

The name of an image file to export the plot to. Valid extensions are .png, .pdf, .svg. If output_file is not None, the plot is saved to a file, and the display is closed.

display_mode : {‘ortho’, ‘tiled’, ‘x’, ‘y’, ‘z’, ‘yx’, ‘xz’, ‘yz’}

Choose the direction of the cuts: ‘x’ - sagittal, ‘y’ - coronal, ‘z’ - axial, ‘ortho’ - three cuts are performed in orthogonal directions, ‘tiled’ - three cuts are performed and arranged in a 2x2 grid.

figure : integer or matplotlib figure, optional

Matplotlib figure used or its number. If None is given, a new figure is created.

axes : matplotlib axes or 4 tuple of float: (xmin, ymin, width, height), optional

The axes, or the coordinates, in matplotlib figure space, of the axes used to display the plot. If None, the complete figure is used.

title : string, optional

The title displayed on the figure.

threshold : a number, None, or ‘auto’

If None is given, the image is not thresholded. If a number is given, it is used to threshold the image: values below the threshold (in absolute value) are plotted as transparent. If auto is given, the threshold is determined magically by analysis of the image.

annotate: boolean, optional

If annotate is True, positions and left/right annotation are added to the plot.

decimals: integer, optional

Number of decimal places on slice position annotation. If False (default), the slice position is integer without decimal point.

draw_cross: boolean, optional

If draw_cross is True, a cross is drawn on the plot to indicate the cut plosition.

black_bg: boolean, optional

If True, the background of the image is set to be black. If you wish to save figures with a black background, you will need to pass “facecolor=’k’, edgecolor=’k’” to matplotlib.pyplot.savefig.

colorbar: boolean, optional

If True, display a colorbar on the right of the plots.

resampling_interpolation : str

Interpolation to use when resampling the image to the destination space. Can be “continuous” (default) to use 3rd-order spline interpolation, or “nearest” to use nearest-neighbor mapping. “nearest” is faster but can be noisier in some cases.

bg_img : Niimg-like object, optional

See http://nilearn.github.io/manipulating_images/input_output.html The background image that the ROI/mask will be plotted on top of. If nothing is specified, no background image is plotted.

vmin : float, optional

lower bound of the colormap. If None, the min of the image is used.

vmax : float, optional

upper bound of the colormap. If None, the max of the image is used.

kwargs: extra keyword arguments, optional

Extra keyword arguments passed to matplotlib.pyplot.imshow