In my application, the data data is sampled on a distorted grid, and I would like to resample it to a nondistorted grid. In order to test this, I wrote this program with examplary distortions and a simple function as data:
from __future__ import division import numpy as np import scipy.interpolate as intp import pylab as plt # Defining some variables: quadratic = -3/128 linear = 1/16 pn = np.poly1d([quadratic, linear,0]) pixels_x = 50 pixels_y = 30 frame = np.zeros((pixels_x,pixels_y)) x_width= np.concatenate((np.linspace(8,7.8,57) , np.linspace(7.8,8,pixels_y-57))) def data(x,y): z = y*(np.exp(-(x-5)**2/3) + np.exp(-(x)**2/5) + np.exp(-(x+5)**2)) return(z) # Generating grid coordinates yt = np.arange(380,380+pixels_y*4,4) xt = np.linspace(-7.8,7.8,pixels_x) X, Y = np.meshgrid(xt,yt) Y=Y.T X=X.T Y_m = np.zeros((pixels_x,pixels_y)) X_m = np.zeros((pixels_x,pixels_y)) # generating distorted grid coordinates: for i in range(pixels_y): Y_m[:,i] = Y[:,i] - pn(xt) X_m[:,i] = np.linspace(-x_width[i],x_width[i],pixels_x) # Sample data: for i in range(pixels_y): for j in range(pixels_x): frame[j,i] = data(X_m[j,i],Y_m[j,i]) Y_m = Y_m.flatten() X_m = X_m.flatten() frame = frame.flatten() ## Y = Y.flatten() X = X.flatten() ipf = intp.interp2d(X_m,Y_m,frame) interpolated_frame = ipf(xt,yt)
At this point, I have to questions:
The code works, but I get the the following warning:
Warning: No more knots can be added because the number of B-spline coefficients already exceeds the number of data points m. Probably causes: either s or m too small. (fp>s) kx,ky=1,1 nx,ny=54,31 m=1500 fp=0.000006 s=0.000000
Also, some interpolation artifacts appear, and I assume that they are related to the warning - Do you guys know what I am doing wrong?
- For my actual applications, the frames need to be around 500*100, but when doing this, I get a MemoryError - Is there something I can do to help that, apart from splitting the frame into several parts?