# How exactly do you compute the Fast Fourier Transform?

I've been reading a lot about Fast Fourier Transform and am trying to understand the low-level aspect of it. Unfortunately, Google and Wikipedia are not helping much at all.. and I have like 5 different algorithm books open that aren't helping much either.

I'm trying to find the FFT of something simple like a vector [1,0,0,0]. Sure I could just plug it into Matlab but that won't help me understand what's going on underneath. Also, when I say I want to find the FFT of a vector, is that the same as saying I want to find the DFT of a vector just with a more efficient algorithm?

-
While it may not help in understanding, here is a good implementation: fftw.org. It is fairly well-documented. –  Adam Shiemke Jul 12 '10 at 14:42
Note that this is a two-part question: 1. How can I intuitively imagine or even predict what the Discrete Fourier Transform (as mentioned in the answers, FFT is really an algorithm for performing the DFT) does to my input? and 2. How do I implement FFT? –  Domi Dec 2 '13 at 4:50
So what is it for? The Fourier Transform transforms an input signal into frequency space, which tells you how often different frequencies appear in your signal. This gives you a lot of information about your signal that you can use to find, eliminate or amplify certain frequencies and even other properties of your signal. This is possible because the Fourier Transform has an inverse that allows you to convert your changed frequency space back to signal space. –  Domi Dec 2 '13 at 4:57

You're right, "the" Fast Fourier transform is just a name for any algorithm that computes the discrete Fourier transform in O(n log n) time, and there are several such algorithms.

Here's the simplest explanation of the DFT and FFT as I think of them, and also examples for small N, which may help. (Note that there are alternative interpretations, and other algorithms.)

## Discrete Fourier transform

Given `N` numbers f0, f1, f2, …, fN-1, the DFT gives a different set of `N` numbers.

Specifically: Let ω be a primitive Nth root of 1 (either in the complex numbers or in some finite field), which means that ωN=1 but no smaller power is 1. You can think of the fk's as the coefficients of a polynomial P(x) = ∑fkxk. The N new numbers F0, F1, …, FN-1 that the DFT gives are the results of evaluating the polynomial at powers of ω. That is, for each n from 0 to N-1, the new number Fn is P(ωn) = ∑0≤k≤N-1 fkωnk.

[The reason for choosing ω is that the inverse DFT has a nice form, very similar to the DFT itself.]

Note that finding these F's naively takes O(N2) operations. But we can exploit the special structure that comes from the ω's we chose, and that allows us to do it in O(N log N). Any such algorithm is called the fast Fourier transform.

## Fast Fourier Transform

So here's one way of doing the FFT. I'll replace N with 2N to simplify notation. We have f0, f1, f2, …, f2N-1, and we want to compute P(ω0), P(ω1), … P(ω2N-1) where we can write

P(x) = Q(x) + ωNR(x) with

Q(x) = f0 + f1x + … + fN-1xN-1

R(x) = fN + fN+1x + … + f2N-1x2N-1

Now here's the beauty of the thing. Observe that the value at ωk+N is very simply related to the value at ωk:
P(ωk+N) = ωN(Q(ωk) + ωNR(ωk)) = R(ωk) + ωNQ(ωk). So the evaluations of Q and R at ω0 to ωN-1 are enough.

This means that your original problem — of evaluating the 2N-term polynomial P at 2N points ω0 to ω2N-1 — has been reduced to the two problems of evaluating the N-term polynomials Q and R at the N points ω0 to ωN-1. So the running time T(2N) = 2T(N) + O(N) and all that, which gives T(N) = O(N log N).

## Examples of DFT

Note that other definitions put factors of 1/N or 1/√N.

For N=2, ω=-1, and the Fourier transform of (a,b) is (a+b, a-b).

For N=3, ω is the complex cube root of 1, and the Fourier transform of (a,b,c) is (a+b+c, a+bω+cω2, a+bω2+cω). (Since ω4=ω.)

For N=4 and ω=i, and the Fourier transform of (a,b,c,d) is (a+b+c+d, a+bi-c-di, a-b+c-d, a-bi-c+di). In particular, the example in your question: the DFT on (1,0,0,0) gives (1,1,1,1), not very illuminating perhaps.

-
So much clarity in this answer +1 –  jmishra Mar 9 '13 at 8:18

The FFT is just an efficient implementation of the DFT. The results should be identical for both, but in general the FFT will be much faster. Make sure you understand how the DFT works first, since it is much simpler and much easier to grasp.

When you understand the DFT then move on to the FFT. Note that although the general principle is the same, there are many different implementations and variations of the FFT, e.g. decimation-in-time v decimation-in-frequency, radix 2 v other radices and mixed radix, complex-to-complex v real-to-complex, etc.

A good practical book to read on the subject is Fast Fourier Transform and Its Applications by E. Brigham.

-
+1 for the Brigham reference. It's the best explanation I've ever read. –  andand Jul 13 '10 at 21:48
@andand: thanks, yes, excellent book, even though it's quite old now: the applications chapters are good too, and still relevant. –  Paul R Jul 13 '10 at 21:52

Yes, the FFT is merely an efficient DFT algorithm. Understanding the FFT itself might take some time unless you've already studied complex numbers and the continuous Fourier transform; but it is basically a base change to a base derived from periodic functions.

(If you want to learn more about Fourier analysis, I recommend the book Fourier Analysis and Its Applications by Gerald B. Folland)

-

I'm also new to Fourier transforms and I found this online book very helpful:

The Scientists and Engineer's Guide to Digital Signal Processing

The link takes you to the chapter on the Discrete Fourier Transform. This chapter explains the difference between all the Fourier transforms, as well as where you'd use which one and pseudocode that shows how you go about calculating the Discrete Fourier Transform.

-

If you seek a plain English explanation of DFT and a bit of FFT as well, instead of academic goggledeegoo, then you must read this: http://www.dspdimension.com/admin/dft-a-pied/

I couldn't have explained it better myself.

-
Shame there's no explanation of the actual FFT algorithm. Great link anyway, thanks! –  macbirdie Nov 7 '10 at 21:38