Skip to content

Instantly share code, notes, and snippets.

@alexrockhill
Created February 2, 2023 23:07
Show Gist options
  • Star 0 You must be signed in to star a gist
  • Fork 0 You must be signed in to fork a gist
  • Save alexrockhill/152022ff81ae852e72b76a344753d85a to your computer and use it in GitHub Desktop.
Save alexrockhill/152022ff81ae852e72b76a344753d85a to your computer and use it in GitHub Desktop.
Pial surface, inflated brain, flat map video visualization
import os
import os.path as op
import numpy as np
import mne
import imageio
misc_path = mne.datasets.misc.data_path()
sample_path = mne.datasets.sample.data_path()
subjects_dir = sample_path / 'subjects'
subject = 'fsaverage'
raw = mne.io.read_raw(sample_path / 'MEG' / 'sample' / \
'sample_audvis_filt-0-40_raw.fif')
trans = mne.coreg.estimate_head_mri_t(subject, subjects_dir)
view_kwargs = dict(azimuth=120, elevation=100, distance=600,
focalpoint=(0, 0, -15))
surf_data = dict(lh=dict(), rh=dict())
x_dir = np.array([1., 0., 0.])
for hemi in ('lh', 'rh'):
for surf in ('pial', 'inflated', 'curv', 'cortex.patch.flat'):
for img in ('', '.T1', '.T2', ''):
surf_fname = op.join(subjects_dir, subject, 'surf',
f'{hemi}.{surf}')
if op.isfile(surf_fname):
break
if surf == 'curv':
surf_data[hemi]['curv'] = np.array(mne.surface.read_curvature(
surf_fname, binary=False) > 0, np.int64)
else:
if surf.split('.')[-1] == 'flat':
surf = 'flat'
coords, faces, orig_faces = mne.surface._read_patch(surf_fname)
# rotate 90 degrees to get to a more standard orientation
# where X determines the distance between the hemis
coords = coords[:, [1, 0, 2]]
coords[:, 1] *= -1
else:
coords, faces = mne.surface.read_surface(surf_fname)
if surf in ('inflated', 'flat'):
x_ = coords @ x_dir
coords -= (np.max(x_) if hemi == 'lh' else np.min(x_)) * x_dir
surface = dict(rr=coords, tris=faces)
mne.surface.complete_surface_info(
surface, copy=False, verbose=False, do_neighbor_tri=False)
surf_data[hemi][surf] = surface['rr'], surface['tris'], surface['nn']
for hemi in ('lh', 'rh'):
surf_data[hemi]['vectors'] = \
surf_data[hemi]['inflated'][0] - surf_data[hemi]['pial'][0]
surf_data[hemi]['normal_vectors'] = \
surf_data[hemi]['inflated'][2] - surf_data[hemi]['pial'][2]
surf_data[hemi]['vectors2'] = \
surf_data[hemi]['flat'][0] - surf_data[hemi]['inflated'][0]
surf_data[hemi]['normal_vectors2'] = \
surf_data[hemi]['flat'][2] - surf_data[hemi]['inflated'][2]
images = list()
view_kwargs = dict(azimuth=120, elevation=90)
brain = mne.viz.Brain(subject, subjects_dir=subjects_dir, surf='flat',
cortex='low_contrast', alpha=1, background='white')
brain._renderer.plotter.camera.focal_point = (0, 0, 0)
# brain.add_annotation('aparc.a2009s', borders=False, alpha=0.5)
images += [brain.screenshot()] * 10
elevation_delta = 20
azimuth_delta = 20
n_steps = 201
for t in np.linspace(0, 1, n_steps):
for hemi in ('lh', 'rh'):
coords, faces, nn = surf_data[hemi]['flat']
coords = coords.copy()
coords -= surf_data[hemi]['vectors2'] * t
nn = nn.copy()
nn -= surf_data[hemi]['normal_vectors2'] * t
brain._renderer.plotter.update_coordinates(
coords, brain._layered_meshes[hemi]._polydata, render=False)
brain._layered_meshes[hemi]._polydata.point_data.active_normals = nn
brain._renderer.plotter.camera.zoom(1 + 1 / n_steps)
brain._renderer.plotter.camera.elevation = elevation_delta * t
brain._renderer.plotter.camera.azimuth = azimuth_delta * t
brain._renderer.plotter.update()
images.append(brain.screenshot())
for i in range(5):
images.append(images[-1])
n_steps = 51
for t in np.linspace(0, 1, n_steps):
for hemi in ('lh', 'rh'):
coords, faces, nn = surf_data[hemi]['inflated']
coords = coords.copy()
coords -= surf_data[hemi]['vectors'] * t
nn = nn.copy()
nn -= surf_data[hemi]['normal_vectors'] * t
brain._renderer.plotter.update_coordinates(
coords, brain._layered_meshes[hemi]._polydata, render=False)
brain._layered_meshes[hemi]._polydata.point_data.active_normals = nn
brain._layered_meshes[hemi].update_overlay('curv', opacity=1 - t * 0.6)
brain._renderer._update()
images.append(brain.screenshot())
for i in range(5):
images.append(images[-1])
brain.close()
imageio.mimwrite('flat.mp4', images, fps=24)
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment