I have my own triangulation algorithm that creates a triangulation based on both Delaunay's condition and the gradient such that the triangles align with the gradient.
The above description is not relevant to the question but is necessary for the context.
Now I want to use my triangulation with
scipy.interpolate.LinearNDInterpolator to do an interpolation.
With scipy's Delaunay I would do the following
import numpy as np import scipy.interpolate import scipy.spatial points = np.random.rand(100, 2) values = np.random.rand(100) delaunay = scipy.spatial.Delaunay(points) ip = scipy.interpolate.LinearNDInterpolator(delaunay, values)
delaunay object has
delaunay.simplices that form the triangulation. I have the exact same information with my own triangulation, but
scipy.interpolate.LinearNDInterpolator requires a
I think I would need to subclass
scipy.spatial.Delaunay and implement the relevant methods. However, I don't know which ones I need in order to get there.