I am loading some data from a file, do a transformation and then extract the real part, however, the np.real function does not seem to work. It prints:

[[(0.99023793104890667+0.034016079376604003j) 0.9905214315431583 0.99033818364852688 ..., 0.86609847609098078 0.87048246890045189 None]]

where clearly the first element is complex.

import numpy as np
import scipy.io as sio
import os.path
import PLVHilbertImplementation as pet
import matplotlib.pyplot as plt
import Likelihood_gen as lg

#for the interictal files
for j in range(1, 2, 1):
    filename = '/home/kam/Documents/kaggle/Dog_5/Dog_5_interictal_segment_' + str(j).zfill(4) + '.mat'
    if os.path.isfile(filename):
        #For the files that exist do this
        numchannels, numpoints = data.shape
        for i in range(0, 2, 1):
            for j in range(i+1, 2, 1):

       PLVs.append(np.asarray((pet.PLV(data[i,:],np.transpose(data[j,:]), 1024, 5, 128))))
                print(np.real(PLVs)) #this is where the problem is

       # Metric=np.sum(np.exp(np.real(np.asarray(PLVs)),1))
       # plt.plot(Metric)
       # plt.show

        print('no', filename)

#for the preictal files
for j in range(1, 1, 1):
    filename = 'Dog_1_preictal_segment_' + str(j).zfill(4) + '.mat'
    if os.path.isfile(filename):
        numchannels, numpoints = shape(data)
        print('no', filename)
[[(0.99023793104890667+0.034016079376604003j) 0.9905214315431583
  0.99033818364852688 ..., 0.86609847609098078 0.87048246890045189 None]]

there are several clues that this is not an ordinary array of complex floats, which is what the .real method is meant for.

The complex number is enclosed in ()

Not like:

In [1011]: np.arange(5)+np.arange(2,7)*1j
Out[1011]: array([ 0.+2.j,  1.+3.j,  2.+4.j,  3.+5.j,  4.+6.j])

In [1013]: (np.arange(5)+np.arange(2,7)*1j).real
Out[1013]: array([ 0.,  1.,  2.,  3.,  4.])

And there's a None in the array. nan is a valid float, not None.

I'm guessing the shape is 2d (but you should print that), and that the dtype is object - but you need to show that.

I can create something that prints like this with:

In [1014]: data=np.empty((5,),dtype=object)  # 1d, could be 2

In [1015]: data     # default empty fill None
Out[1015]: array([None, None, None, None, None], dtype=object)

In [1016]: data[0]=1+3.j

In [1017]: data[1:4]=[1.2,3,4.2]

In [1018]: data    # the repr display
Out[1018]: array([(1+3j), 1.2, 3, 4.2, None], dtype=object)

In [1019]: print(data)   # the str display
[(1+3j) 1.2 3 4.2 None]

In [1021]: data.real
Out[1021]: array([(1+3j), 1.2, 3, 4.2, None], dtype=object)

In [1022]: data[0].real
Out[1022]: 1.0

convert to complex (could slice off the None with data[:-1])

In [1027]: data.astype(complex)
Out[1027]: array([ 1.0 +3.j,  1.2 +0.j,  3.0 +0.j,  4.2 +0.j,  nan+nanj])

In [1028]: data.astype(complex).real
Out[1028]: array([ 1. ,  1.2,  3. ,  4.2,  nan])
  • The .astype(complex) was the crucial part without which .real does not work. Great job pointing it out. – atmaere Jul 20 '17 at 6:43

real should be used as numpy array obj function

a = numpy.array([1+2j, 3+4j])
print a.real

array([ 1.,  3.])
  • Thank you galaxyan, but that also doesn't work. – Kamyar Ghofrani Jun 21 '16 at 14:39
  • @KamyarGhofrani what is data before you convert to real? – galaxyan Jun 21 '16 at 14:41
  • I am reading a .mat file, which returns a dictionary. then I read values from the dictionary and put them in a list. I then convert the list to an np array using np.asarray. – Kamyar Ghofrani Jun 21 '16 at 14:44
  • @KamyarGhofrani I mean could you post some sample data before you use real function – galaxyan Jun 21 '16 at 14:50
  • Here is a link to the files, I hope this works. [drive.google.com/… – Kamyar Ghofrani Jun 21 '16 at 15:25

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