# Trying to Use FFT to Analyze Audio Signal in Python

I've been trying to use FFT to get a frequency of a signal, and I'm having a bit of trouble dealing with it. I found a site that talked about using FFT to analyze and plot a signal here:

http://macdevcenter.com/pub/a/python/2001/01/31/numerically.html?page=2

But I've run into an issue implementing it with Python 2.7. EDIT I updated the code with the improved version. This one works, actually, and plots the waveforms (a bit slowly) onto a chart. I'm wondering if this is the correct method for reading frames, though - I read that even numbered array indices are for the left-channel (and so the odd-numbered ones would be for the right, I suppose).

So, I guess that I should read however many frames, but divide it by the sample width, and then sample every other even frame for the left channel if it's stereo, huh?

``````import scipy
import wave
import struct
import numpy
import pylab

fp = wave.open('./music.wav', 'rb')

samplerate = fp.getframerate()
totalsamples = fp.getnframes()
fft_length = 256 # Guess
num_fft = (totalsamples / fft_length) - 2

#print (samplerate)

temp = numpy.zeros((num_fft, fft_length), float)

leftchannel = numpy.zeros((num_fft, fft_length), float)
rightchannel = numpy.zeros((num_fft, fft_length), float)

for i in range(num_fft):

tempb = fp.readframes(fft_length / fp.getnchannels() / fp.getsampwidth());

up = (struct.unpack("%dB"%(fft_length), tempb))

temp[i,:] = numpy.array(up, float) - 128.0

temp = temp * numpy.hamming(fft_length)

temp.shape = (-1, fp.getnchannels())

fftd = numpy.fft.fft(temp)

pylab.plot(abs(fftd[:,1]))

pylab.show()
``````

EDIT: So now, I'm getting the audio file read through reading the frames, and dividing the current number to read by the number of channels and the number of bits per frame. Am I losing any data by doing this? This is the only way that I could get any data at all - otherwise it would be too much data for the file handler to read into the struct.unpack function. Also, I'm trying to separate the left channel from the right channel (get the FFT data for each channel). How would I go about doing this?

-
try implementing a check for `len(tempb)`. According to docs.python.org/library/struct.html#struct.unpack it must be exactly the right length, and `readframes` will read 'up to' `fft_length` bytes. –  bkconrad Mar 13 '12 at 19:18

I have not used scipy's version of numpy/numarray in a long time, but seek out the function `frombuffer`. It is a lot easier to use than trying to shuffle all of the data through `struct.unpack`. An example reading the data using `numpy`:

``````fp = wave.open('./music.wav', 'rb')
assert fp.getnchannels() == 1, "Assumed 1 channel"
assert fp.getsampwidth() == 2, "Assuming int16 data"
I don't know about starting from square one, but it would be good to learn a bit about the APIs you are trying to use and what they do. To handle the error you mentioned, you can perform a slice on the array and then set the `.shape` attribute appropriately. –  Shane Holloway Mar 13 '12 at 20:35
Wave files interleave the channels in order for each frame. The numpy way to separate the channels is to change the shape of the array. Assuming you matched the `getsamplewidth()` to the matching numpy data type, you could set the resulting shape `res.shape = (-1, fp.getnchannels())`. Then you could get channel 0's data with `res[:,0]` and channel 1's data with `res[:,1]`. –  Shane Holloway Mar 14 '12 at 17:07