# How do I implement a bandpass filter given by this equation?

I'm messing around with some audio stuff and the algorithm I'm trying to implement calls for a band-pass second-order FIR filter given by the equation

``````H(z) = z - z^(-1)
``````

How do I implement such a bandpass filter in C?

I have raw audio data as well as an FFT on that audio data available to me, but I'm still not sure how to implement this filter, neither am I sure exactly what the equation means.

In the image below, I am trying to implement HF3:

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what is z? a floating point number? do you mean ^ as power? (z to the power -1) –  Donotalo Dec 1 '11 at 9:19
@Donotalo: no - this is a Z-transform, as used in discrete time signal processing - see: en.wikipedia.org/wiki/Z-transform –  Paul R Dec 1 '11 at 9:38
In the algorithm the function is written with ^ as a power (e.g. z minus (z to the power of -1 ). –  ch3rryc0ke Dec 1 '11 at 9:47
The algorithm doesn't seem to say whether it is time domain filtering or not.. the exact words are "The typical frequency filtering techniques are defined as " and then the equation I mention in the question above is given. One additional point-- the equation is actually written as Hf(z), not H(z).. does that mean it is suggesting frequency filtering? –  ch3rryc0ke Dec 1 '11 at 9:51
@ch3rryc0ke: read the link to the Wikipedia article on Z-transforms above - `H(z)` is the Z transform of a discrete time domain filter, i.e. it implements a filter in the frequency domain using a difference equation in the discrete time domain. –  Paul R Dec 1 '11 at 10:13

`z^-1` is a unit (one sample) delay, `z` is one sample into the future. So your filter output at sample `i` depends on input samples at `i-1` and `i+1`. (In general you can think of `z^-n` is an n sample delay.)

If you have time domain samples in an input buffer `x[]`, and you want to filter these samples to an an output buffer `y[]`, then you would implement the given transfer function like this:

``````y[i] = x[i+1] - x[i-1]
``````

E.g. in C you might process a buffer of N samples like this:

``````for (i = 1; i < N - 1; ++i)
{
y[i] = x[i + 1] - x[i - 1];
}
``````

This is a very simple first-order non-recursive high pass filter - it has zeroes at +1 and -1, so the magnitude response is zero at DC (0) and at Nyquist (Fs / 2), and it peaks at Fs / 4. So it's a very broad bandpass filter.

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The more I think about it, I think the equation is describing frequency filtering, since the answer you propose is a high pass filter and the algorithm calls for a bandpass filter.. How would your answer change in that case? –  ch3rryc0ke Dec 1 '11 at 10:06
@Paul R - I think it's a bandpass. If you write it as H(z) = 1-z^-2 (absorbing the shift), it has zeros at +/- 1. Look bandpass-y to me. –  mtrw Dec 1 '11 at 14:26
@mtrw: my bad - yes, I guess you could look at it as a bandpass filter, but it's a very broad one - from 0 to fs / 4 it's pretty much what I said, a differentiator or high pass filter, but the response peaks at fs / 4 and then reduces to 0 at fs / 2. I'll update my answer. –  Paul R Dec 1 '11 at 15:10
Does this image help? It shows the 3 potential filters and their graphs, I am trying to implement HF3 here i43.tinypic.com/29202di.jpg –  ch3rryc0ke Dec 1 '11 at 20:12
@ch3rryc0ke - Paul R's answer above implement HF3. You should be good to go. –  mtrw Dec 1 '11 at 20:29