(One intermediate revision by the same user not shown) | |||
Line 10: | Line 10: | ||
X(<math>\omega</math>) = 0 for <math>|\omega|>\omega_m</math> | X(<math>\omega</math>) = 0 for <math>|\omega|>\omega_m</math> | ||
− | 3. <math> 2\pi/T = \omega_s > 2\omega_m</math> | + | 3. <math> 2\pi/T = \omega_s > 2\omega_m</math> (Nyquist Condition) |
Then x(t) is uniquely recoverable. | Then x(t) is uniquely recoverable. | ||
Here is a block diagram of sampling and reconstruction using a LPF: | Here is a block diagram of sampling and reconstruction using a LPF: | ||
− | [[File:BlockDSamp.PNG|block diagram of sampling]] | + | |
+ | [[File:BlockDSamp.PNG|frameless|left|block diagram of sampling]] | ||
[[ 2018 Spring ECE 301 Boutin|Back to 2018 Spring ECE 301 Boutin]] | [[ 2018 Spring ECE 301 Boutin|Back to 2018 Spring ECE 301 Boutin]] |
Latest revision as of 14:13, 30 April 2018
Explanation of Sampling Theorem
The sampling theorem:
1. for x(nT) to be equally spaced samples of x(t), while n=0, +1, -1, +2, -2, ...
2. x(t) is band limited. X($ \omega $) = 0 for $ |\omega|>\omega_m $
3. $ 2\pi/T = \omega_s > 2\omega_m $ (Nyquist Condition)
Then x(t) is uniquely recoverable.
Here is a block diagram of sampling and reconstruction using a LPF: