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I've written a python code to take a 2D signal and FFT it, and now I want to extract the frequencies associated with the FFT. The np.fft.fftfreq fails, giving me the error

File "/usr/lib64/python2.7/site-packages/numpy/fft/helper.py", line 153, in fftfreq
    assert isinstance(n,types.IntType) or isinstance(n, integer)
AssertionError

My code is :

import numpy as np
import scipy as sp
import pylab
import sys
import math

filename = sys.argv[1]  # Get name of file to open 

ifp = open(filename, "r")
ifp.seek(0)

nrows = 0
ncols = 0

nrows = sum(1 for line in ifp) # Sum over all the lines in the file ptr

ifp.seek(0) # Set the fptr back to beginning of file
for line in ifp:
   ncols = len(line.split()) #Split and count number of words in a line
   if ncols > 0:
      break

OrigData = np.zeros([nrows, ncols], dtype=np.float32) #Allocate numpy array
FFTData = np.zeros([nrows, ncols], dtype=complex)
IFFTData = np.zeros([nrows, ncols], dtype=complex)
FreqComp = np.zeros([nrows, ncols], dtype=np.float32)

ii = 0
jj = 0
ifp.seek(0)
for line in ifp:
   linedata = line.split()
   jj = 0
   for el in linedata:
      OrigData[ii,jj] = float(el)
      jj+=1
   ii+=1
ifp.close()

FFTData = np.fft.fft2(OrigData)
FreqComp = np.fft.fftfreq(FFTData, d=2)

#--- Continue with more code ---#

I know that everything else works except the np.fft.fftfreq line, because I added that in last. How does one extract 2 dimensional frequency components?

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1 Answer 1

up vote 4 down vote accepted

You are passing in an invalid parameter: np.fft.fftfreq takes the size of the signal data as first parameter (an integer) and the timestep as the second parameter. You are passing in an array as the first parameter.

You need to perform an np.fft.fft on the signal first though.

Hate to point out the obvious, but read np.fft.fftfreq... the example code is very pretty clear.


Having performed a 2D FFT, you can obtain the sample frequencies along each dimension as follows:

FreqCompRows = np.fft.fftfreq(FFTData.shape[0],d=2)
FreqCompCols = np.fft.fftfreq(FFTData.shape[1],d=2)
share|improve this answer
    
Sorry, I forgot to paste the line where I do the FFT. :P But how will this work for the 2d case? It'll return a 1d array of frequency components, I'm confused about how to interpret that. –  Kitchi Jan 29 '13 at 13:15
    
are you using fft or fft2? ah, sorry, didn't notice your update. –  isedev Jan 29 '13 at 13:23
    
fft2, they're all 2D arrays what I've defined. –  Kitchi Jan 29 '13 at 13:27
    
Thanks! But now I'm confused about how to interpret that... If I have to figure out the frequency of a point on the 2D array, this method will give me two different frequencies, one for row and one for column. Will this be the frequency of the x and y component of the sin wave? –  Kitchi Jan 30 '13 at 12:18
    
You seem to be having the same trouble as me visualising a 2D signal and its corresponding 2D frequency distribution. The best I can come up with at the moment is think of it as two orthogonal waves (like an EM field), so the 2D FFT will be the freq dist of each wave... –  isedev Jan 30 '13 at 13:15

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