0

I have a dataframe with two columns. The first column has the class number (either 1 or 0). The second column holds matrices that are (1999,13). I am trying to figure out how to convert the matrices to (1,13) by getting the mean of each matrix column.

The reason I am doing this is for audio processing. I extracted the MFCCs for each 10 second audio file I have. For each 10 second audio there are 1999 frames, and each frame has 13 cepstral coefficients.

example_df = pd.DataFrame()
example_df['Class'] = [1,0,0]
example_df['MFCCs'] =[np.random.rand(4,2),np.random.rand(4,2),np.random.rand(4,2)]
example_df

when I apply np.mean I am almost always getting the mean of the class as well which is about 0.5, even if I indicate the 'MFCCs' column.

The expected output should be something like

   Class  MFCCs
0  1      [C01,C02]
1  0      [C11,C12]
2  0      [C21,C22]
  • Your 'MFCCs' column is object dtype, that is, it stores each of the (4,2) arrays as an object in the cell. example_df['MFCCs'].to_numpy() will a be an object dtype array. Applying np.stack to that might work and produce a (n,4,2) array. – hpaulj Jun 19 at 18:44
  • @hpaulj I know that np.stack just stacks arrays on top of each other, but I am not sure how this helps me in this situation – Hassan Dbouk Jun 19 at 18:52
0

You can use np.mean and specify the axis across which you want to take the mean, in your case axis=0. For example:

a = np.arange(8).reshape(4,2)
array([[0, 1],
       [2, 3],
       [4, 5],
       [6, 7]])

np.mean(a,axis=0)
array([3., 4.])

For your purpose you can do it on one line :

arrays = [np.random.rand(4,2),np.random.rand(4,2),np.random.rand(4,2)]
example_df['MFCCs'] =[np.mean(a,axis=0) for a in arrays]
  • Yes this works for the example I put above. However, I don't have the 'arrays' attribute. What I am trying to say is the way my df was constructed wasn't as straightforward as the example. However, the df produced in the example resembles my actual df but a much smaller scale of course. I am hoping there is another method – Hassan Dbouk Jun 19 at 19:39
  • I tried doing arrays = df['MFCC'], followed by df['MFCC'] =[np.mean(a,axis=0) for a in arrays] and what happened was there was just one number in the MFCC column for every row rather than an array of 13 numbers – Hassan Dbouk Jun 19 at 19:51
  • If you apply example_df['MFCCs'].values you get a numpy array of the column. Print the shape of the numpy array that you get from example_df['MFCCs'].values, maybe it clarifies – Francesco Zambolin Jun 19 at 19:55
  • Nevermind, for the past 30 mins I have been rerunning the code but added an np.mean before adding each matrix to the dataframe and that worked... Thanks regardless! – Hassan Dbouk Jun 19 at 20:04

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.