I was inspired by this answer by @James to see how griddata
and map_coordinates
might be used. In the examples below I'm showing 2D data, but my interest is in 3D. I noticed that griddata
only provides splines for 1D and 2D, and is limited to linear interpolation for 3D and higher (probably for very good reasons). However, map_coordinates seems to be fine with 3D using higher order (smoother than piece-wise linear) interpolation.
My primary question: if I have random, unstructured data (where I can not use map_coordinates) in 3D, is there some way to get smoother than piece-wise linear interpolation within the NumPy SciPy universe, or at least nearby?
My secondary question: is spline for 3D not available in griddata
because it is difficult or tedious to implement, or is there a fundamental difficulty?
The images and horrible python below show my current understanding of how griddata and map_coordinates can or can't be used. Interpolation is done along the thick black line.
STRUCTURED DATA:
UNSTRUCTURED DATA:
Horrible python:
import numpy as np
import matplotlib.pyplot as plt
def g(x, y):
return np.exp(-((x-1.0)**2 + (y-1.0)**2))
def findit(x, X): # or could use some 1D interpolation
fraction = (x - X[0]) / (X[-1]-X[0])
return fraction * float(X.shape[0]-1)
nth, nr = 12, 11
theta_min, theta_max = 0.2, 1.3
r_min, r_max = 0.7, 2.0
theta = np.linspace(theta_min, theta_max, nth)
r = np.linspace(r_min, r_max, nr)
R, TH = np.meshgrid(r, theta)
Xp, Yp = R*np.cos(TH), R*np.sin(TH)
array = g(Xp, Yp)
x, y = np.linspace(0.0, 2.0, 200), np.linspace(0.0, 2.0, 200)
X, Y = np.meshgrid(x, y)
blob = g(X, Y)
xtest = np.linspace(0.25, 1.75, 40)
ytest = np.zeros_like(xtest) + 0.75
rtest = np.sqrt(xtest**2 + ytest**2)
thetatest = np.arctan2(xtest, ytest)
ir = findit(rtest, r)
it = findit(thetatest, theta)
plt.figure()
plt.subplot(2,1,1)
plt.scatter(100.0*Xp.flatten(), 100.0*Yp.flatten())
plt.plot(100.0*xtest, 100.0*ytest, '-k', linewidth=3)
plt.hold
plt.imshow(blob, origin='lower', cmap='gray')
plt.text(5, 5, "don't use jet!", color='white')
exact = g(xtest, ytest)
import scipy.ndimage.interpolation as spndint
ndint0 = spndint.map_coordinates(array, [it, ir], order=0)
ndint1 = spndint.map_coordinates(array, [it, ir], order=1)
ndint2 = spndint.map_coordinates(array, [it, ir], order=2)
import scipy.interpolate as spint
points = np.vstack((Xp.flatten(), Yp.flatten())).T # could use np.array(zip(...))
grid_x = xtest
grid_y = np.array([0.75])
g0 = spint.griddata(points, array.flatten(), (grid_x, grid_y), method='nearest')
g1 = spint.griddata(points, array.flatten(), (grid_x, grid_y), method='linear')
g2 = spint.griddata(points, array.flatten(), (grid_x, grid_y), method='cubic')
plt.subplot(4,2,5)
plt.plot(exact, 'or')
#plt.plot(ndint0)
plt.plot(ndint1)
plt.plot(ndint2)
plt.title("map_coordinates")
plt.subplot(4,2,6)
plt.plot(exact, 'or')
#plt.plot(g0)
plt.plot(g1)
plt.plot(g2)
plt.title("griddata")
plt.subplot(4,2,7)
#plt.plot(ndint0 - exact)
plt.plot(ndint1 - exact)
plt.plot(ndint2 - exact)
plt.title("error map_coordinates")
plt.subplot(4,2,8)
#plt.plot(g0 - exact)
plt.plot(g1 - exact)
plt.plot(g2 - exact)
plt.title("error griddata")
plt.show()
seed_points_rand = 2.0 * np.random.random((400, 2))
rr = np.sqrt((seed_points_rand**2).sum(axis=-1))
thth = np.arctan2(seed_points_rand[...,1], seed_points_rand[...,0])
isinside = (rr>r_min) * (rr<r_max) * (thth>theta_min) * (thth<theta_max)
points_rand = seed_points_rand[isinside]
Xprand, Yprand = points_rand.T # unpack
array_rand = g(Xprand, Yprand)
grid_x = xtest
grid_y = np.array([0.75])
plt.figure()
plt.subplot(2,1,1)
plt.scatter(100.0*Xprand.flatten(), 100.0*Yprand.flatten())
plt.plot(100.0*xtest, 100.0*ytest, '-k', linewidth=3)
plt.hold
plt.imshow(blob, origin='lower', cmap='gray')
plt.text(5, 5, "don't use jet!", color='white')
g0rand = spint.griddata(points_rand, array_rand.flatten(), (grid_x, grid_y), method='nearest')
g1rand = spint.griddata(points_rand, array_rand.flatten(), (grid_x, grid_y), method='linear')
g2rand = spint.griddata(points_rand, array_rand.flatten(), (grid_x, grid_y), method='cubic')
plt.subplot(4,2,6)
plt.plot(exact, 'or')
#plt.plot(g0rand)
plt.plot(g1rand)
plt.plot(g2rand)
plt.title("griddata")
plt.subplot(4,2,8)
#plt.plot(g0rand - exact)
plt.plot(g1rand - exact)
plt.plot(g2rand - exact)
plt.title("error griddata")
plt.show()
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