Revision as of 16:43, 9 November 2008 by Park1 (Talk)

Sampling theorem

Here is a signal, x(t) with X(w) = 0 when |W| > Wm.


With sampling period T, samples of x(t),x(nT), can be obtained , where n = 0 +-1, +-2, ....


The sampling frequency is $ \frac{2\pi}{T} $. It is called Ws.


If Ws is greater than 2Wm, x(t) can be recovered from its samples.


Here, 2Wm is called the "Nyquist rate".


To recover, first we need a filter with amplited T when |W| < Wc.


Wc has to exist between Wm and Ws-Wm.

Here is a diagram.

x(t) ------> multiply ---------> $ x_{p}(t) $

       ^
       |
       |

$ p(t) = \sum^{\infty}_{n=-\infty}\delta(t-nT) $

$ x_{p}(t) = x(t)p(t) = x(t)\sum^{\infty}_{n=-\infty}\delta(t-nT) $

$ = \sum^{\infty}_{n=-\infty}x(t)\delta(t-nT) $

$ = \sum^{\infty}_{n=-\infty}x(nT)\delta(t-nT) $

Above diagram is the sampling process.

Here is a diagram for recovering process.

$ x_{p}(t) ---->Filter, H(w) -----> x(t) $

Here is a whole process from sampling to recovering.

x(t) ------> multiply ---------> $ x_{p}(t) $ ---> Filter, H(w) ----> x(t)

       ^
       |
       |
 $ p(t) $

Here is an important point.

If Ws is not greater than 2Wm, the aliasing will occur.

Then we cannot recover the original signal

Therefore, the sampling period has to be selected well.

Alumni Liaison

Ph.D. 2007, working on developing cool imaging technologies for digital cameras, camera phones, and video surveillance cameras.

Buyue Zhang