# Understanding FFT operations in Python code snippet

I came across this snippet of code in a program that does real time FFT graph of audio data:

``````data=scipy.array(struct.unpack("%dB"%(bufferSize*2),data))
ffty=scipy.fftpack.fft(data)
ffty=abs(ffty[0:len(ffty)/2])/1000
ffty1=ffty[:len(ffty)/2]
ffty2=ffty[len(ffty)/2::]+2
ffty2=ffty2[::-1]
ffty=ffty1+ffty2
ffty=scipy.log(ffty)-2
``````

I didn't understand the math behind the part after the `abs()`. It does something like adding the first half of the magnitude array with the second half reversed, and 2 added.

Is this some kind of normalization?

This is the source:

http://www.swharden.com/blog/2010-03-05-realtime-fft-graph-of-audio-wav-file-or-microphone-input-with-python-scipy-and-wckgraph/

-

I don't know Python but it looks like it's just adding the magnitude of the two mirror image complex conjugate halves of the real-to-complex FFT output. You could just as easily take only the magnitude of the first half and multiply by 2.

Finally it computes the log magnitude, presumably to get (scaled) dB values.

-
Thanks. Any idea why `log(ffty) - 2` is done? –  M-V Nov 17 '12 at 15:37
Well the log gets you to scaled dB magnitude, but since dB values are arbitrary without some sort of 0 dB reference I guess the -2 is just to get to the required range for plotting/display. –  Paul R Nov 17 '12 at 17:27
Makes sense - thanks. –  M-V Nov 18 '12 at 8:05
It grabs the non-negative frequencies in the `abs` expression, but it has a one-off error. The non-negative frequency part needs to be length N//2+1. I guess it cuts off the last sample in order to have an even length vector for the next part. For some reason, I have no idea why, it adds two to the upper half of the expression (starting at pi/2 radians/sample), reverses it and adds it to the lower half of the spectrum. –  eryksun Nov 18 '12 at 11:10
Also, one can't simply double all of the non-negative frequency components. That would double the value of 0 and pi radians/sample, which are already at the correct value (i.e. they aren't split into conjugates). Also, a component at pi radians/sample is only present if N is even. –  eryksun Nov 18 '12 at 11:16
My guess is that audio sound comes in stereo file format, and this is a averaging over left/right canal. I'm saying so because of this line : `fftx=fftx[0:len(fftx)/4]` which is a common operation when using stereo signals.