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I am using scipy.fft on a signal, with a moving window to plot the amplitudes of frequencies changing with time (here is an example, time is on X, frequency on Y, and amplitude is the color).

However, only a few frequencies interest me (~3, 4 frequencies only). With FFTs it seems like I can't select only the frequencies I want (cause apparently the range of frequencies is determined by the algorithm), so I calculate a lot of useless stuff, and my program even crashes with a MemoryError if the signal is too long.

What should I do ? Do I have to use a custom Fourier transform - in which case, links of good implementations are welcome - , or is there a scipy way ?


EDIT

After @jfaller answer, I decided to (try to) implement the Goertzel algorithm. I came up with this : https://gist.github.com/4128537 but it doesn't work (frequency 440 doesn't appear, nevermind the peaks, I didn't bother to apply a proper window). Any help !? I am bad with DSP.

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Actually, Short-Time Fourier Transform, see this question stackoverflow.com/questions/2459295/stft-and-istft-in-python might be what I need ... –  sebpiq Nov 21 '12 at 19:08
    
Isn't that what you said you're doing? i.e. a DFT of a sliding window. –  eryksun Nov 21 '12 at 19:10
    
Oh ... True, I am using scipy.fft, and the guy is using the same. So there's the same problem. –  sebpiq Nov 21 '12 at 19:14
    
The signal needs to be approximately stationary over the window. That's an upper limit on the window size. A lower limit is the required frequency resolution. Hopefully they're consistent. –  eryksun Nov 21 '12 at 19:17
1  
In general, calculating the DFT on one frequency naively is an order-N operation. If you want to calculate the DFT coefficients of M frequencies over N points, and M < log(N), then just use the naive formula c_k = sum(x[n] * exp(-j*2*pi*k*n)) for the k's that interest you. –  mtrw Nov 21 '12 at 19:34
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2 Answers

up vote 5 down vote accepted

You're really looking to use the Goertzel Algorithm: http://en.wikipedia.org/wiki/Goertzel_algorithm. Basically, it's an FFT at a single point, and efficient if you only need a limited number of frequencies in a signal. If you have trouble pulling apart the algorithm from Wikipedia, ping back, and I'll help you. Also if you google a few resources, there exist DTMF decoders (touch tone phone decoders) written in python. You could check out how they do it.

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Thanks :) That's indeed exactly what I need !!! –  sebpiq Nov 21 '12 at 19:40
    
Arrr ... I can't say that I didn't try (gist.github.com/4128537). But there's definitely something wrong. I am not so good with DSP :( any hint would be great ! –  sebpiq Nov 21 '12 at 23:32
    
Okay, I'm logging out for the evening, but I'll take a look tonight or tomorrow, and update my comment. In the meantime, the C code linked from Wikipedia's pretty good: netwerkt.wordpress.com/2011/08/25/goertzel-filter –  jfaller Nov 22 '12 at 0:08
    
@sebpiq: Have you looked into using scipy.signal.lfilter and lfiltic? That would be a fast way to apply the cascaded IIR, FIR filter. –  eryksun Nov 22 '12 at 3:10
    
jfaller: this article looks good. I'm taking a look. @eryksun : thanks for the tip, I'll look into that as an optimization. –  sebpiq Nov 22 '12 at 7:41
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With great help from @jfaller, @eryksun, ... I implemented a simple Goertzel algorithm in Python : https://gist.github.com/4128537. I'll re-paste it here. As @eryksun mentioned, it might be possible to optimize it with scipy.signal.lfilter and lfiltic, but for the moment I'll stick with this as I might want to implement it in another language :

import math

def goertzel(samples, sample_rate, *freqs):
    """
    Implementation of the Goertzel algorithm, useful for calculating individual
    terms of a discrete Fourier transform.

    `samples` is a windowed one-dimensional signal originally sampled at `sample_rate`.

    The function returns 2 arrays, one containing the actual frequencies calculated,
    the second the coefficients `(real part, imag part, power)` for each of those frequencies.
    For simple spectral analysis, the power is usually enough.

    Example of usage : 

        # calculating frequencies in ranges [400, 500] and [1000, 1100]
        # of a windowed signal sampled at 44100 Hz

        freqs, results = goertzel(some_samples, 44100, (400, 500), (1000, 1100))
    """
    window_size = len(samples)
    f_step = sample_rate / float(window_size)
    f_step_normalized = 1.0 / window_size

    # Calculate all the DFT bins we have to compute to include frequencies
    # in `freqs`.
    bins = set()
    for f_range in freqs:
        f_start, f_end = f_range
        k_start = int(math.floor(f_start / f_step))
        k_end = int(math.ceil(f_end / f_step))

        if k_end > window_size - 1: raise ValueError('frequency out of range %s' % k_end)
        bins = bins.union(range(k_start, k_end))

    # For all the bins, calculate the DFT term
    n_range = range(0, window_size)
    freqs = []
    results = []
    for k in bins:

        # Bin frequency and coefficients for the computation
        f = k * f_step_normalized
        w_real = 2.0 * math.cos(2.0 * math.pi * f)
        w_imag = math.sin(2.0 * math.pi * f)

        # Doing the calculation on the whole sample
        d1, d2 = 0.0, 0.0
        for n in n_range:
            y  = samples[n] + w_real * d1 - d2
            d2, d1 = d1, y

        # Storing results `(real part, imag part, power)`
        results.append((
            0.5 * w_real * d1 - d2, w_imag * d1,
            d2**2 + d1**2 - w_real * d1 * d2)
        )
        freqs.append(f * sample_rate)
    return freqs, results


if __name__ == '__main__':
    # quick test
    import numpy as np
    import pylab

    # generating test signals
    SAMPLE_RATE = 44100
    WINDOW_SIZE = 1024
    t = np.linspace(0, 1, SAMPLE_RATE)[:WINDOW_SIZE]
    sine_wave = np.sin(2*np.pi*440*t) + np.sin(2*np.pi*1020*t)
    sine_wave = sine_wave * np.hamming(WINDOW_SIZE)
    sine_wave2 = np.sin(2*np.pi*880*t) + np.sin(2*np.pi*1500*t)
    sine_wave2 = sine_wave2 * np.hamming(WINDOW_SIZE)

    # applying Goertzel on those signals, and plotting results
    freqs, results = goertzel(sine_wave, SAMPLE_RATE, (400, 500),  (1000, 1100))

    pylab.subplot(2, 2, 1)
    pylab.title('(1) Sine wave 440Hz + 1020Hz')
    pylab.plot(t, sine_wave)

    pylab.subplot(2, 2, 3)
    pylab.title('(1) Goertzel Algo, freqency ranges : [400, 500] and [1000, 1100]')
    pylab.plot(freqs, np.array(results)[:,2], 'o')
    pylab.ylim([0,100000])

    freqs, results = goertzel(sine_wave2, SAMPLE_RATE, (400, 500),  (1000, 1100))

    pylab.subplot(2, 2, 2)
    pylab.title('(2) Sine wave 660Hz + 1200Hz')
    pylab.plot(t, sine_wave2)

    pylab.subplot(2, 2, 4)
    pylab.title('(2) Goertzel Algo, freqency ranges : [400, 500] and [1000, 1100]')
    pylab.plot(freqs, np.array(results)[:,2], 'o')
    pylab.ylim([0,100000])

    pylab.show()
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