# VTK to Matplotlib using Numpy

I want to extract some data (e.g. scalars) from a VTK file along with their coordinates on the grid then process it in Matplotlib. The problem is I dont know how to grab the point/cell data from the VTK file (by giving the name of the scalar, for instance) and load them into a numpy array using vtk_to_numpy

My code should look like:

``````import matplotlib.pyplot as plt
from scipy.interpolate import griddata
import numpy as np
from vtk import *
from vtk.util.numpy_support import vtk_to_numpy

(...missing steps)

# VTK to Numpy
my_numpy_array = vtk_to_numpy(...arguments ?)

#Numpy to Matplotlib (after converting my_numpy_array to x,y and z)
CS = plt.contour(x,y,z,NbLevels)
...
``````

PS:I know that Paraview could do the task, but I am trying post process some data without having to open Paraview. Any help is appreciated

Edit 1

I found this pdf tutorial to be very useful to learn the basics of handling VTK files

• What does the documentation of `vtk_to_numpy` have to say about this? Apr 17, 2014 at 17:09

I finally figured a way (maybe not the optimal) that does the job. The example here is contour plotting a temperature field extracted from a vtk file:

``````import matplotlib.pyplot as plt
import matplotlib.cm as cm
from scipy.interpolate import griddata
import numpy as np
import vtk
from vtk.util.numpy_support import vtk_to_numpy

# load a vtk file as input

# Get the coordinates of nodes in the mesh

#The "Temperature" field is the third scalar in my vtk file

#Get the coordinates of the nodes and their temperatures
nodes_nummpy_array = vtk_to_numpy(nodes_vtk_array)
x,y,z= nodes_nummpy_array[:,0] , nodes_nummpy_array[:,1] , nodes_nummpy_array[:,2]

temperature_numpy_array = vtk_to_numpy(temperature_vtk_array)
T = temperature_numpy_array

#Draw contours
npts = 100
xmin, xmax = min(x), max(x)
ymin, ymax = min(y), max(y)

# define grid
xi = np.linspace(xmin, xmax, npts)
yi = np.linspace(ymin, ymax, npts)
# grid the data
Ti = griddata((x, y), T, (xi[None,:], yi[:,None]), method='cubic')

## CONTOUR: draws the boundaries of the isosurfaces
CS = plt.contour(xi,yi,Ti,10,linewidths=3,cmap=cm.jet)

## CONTOUR ANNOTATION: puts a value label
plt.clabel(CS, inline=1,inline_spacing= 3, fontsize=12, colors='k', use_clabeltext=1)

plt.colorbar()
plt.show()
`````` • I get `NameError: name 'cm' is not defined` Sep 5, 2018 at 13:29
• @sigvaldm there was a missing import line, I updated the answer adding `import matplotlib.cm as cm`
Nov 28, 2018 at 15:09
• Ah, I see. At some point I must've figured it out, because I made some plots a while ago inspired by this post. Thanks! Nov 28, 2018 at 20:12
• Matplotlib has an API which interpolates unstructured data onto a triangular grid. Feb 14, 2020 at 12:51

I don't know what's you dataset looks like, so here is only some method that you can get the point locations and scalars values:

``````from vtk import *
from vtk.util.numpy_support import vtk_to_numpy

points = ug.GetPoints()
print vtk_to_numpy(points.GetData())
print vtk_to_numpy(ug.GetPointData().GetScalars())
``````

it will be a little easy if you can use `tvtk`:

``````from tvtk.api import tvtk
if you want to do `contour` plot in matplotib, I think you need a grid, you may need use some VTK class to convert the dataset to a grid, such as `vtkProbeFilter`.