<< Chapter < Page Chapter >> Page >
Description of signal spaces and metric spaces.

Signal spaces

We start the content of our course by defining its main concepts of a signal and a signal space.

Definition 1 A signal is the value of some quantity as a function of time, space, frequency, etc.; each signal is labeled by a lower-case letter x .

Definition 2 A signal space is a set of signals defined by some criterion, labeled by an upper-case letter X (since it is a set).

Some familiar sets of signals are X = R , X = C , and the set of vectors X = R n .

Definition 3 The signal space L 2 [ a , b ] contains all signals x ( t ) such that x ( t ) = 0 for all t < a or t > b and a b | x ( t ) | 2 d t < (i.e., at no time the signal is infinite).

Metric spaces

Definition 4 A metric d : X × X R is a function used to measure distance between pairs of elements of X with the following properties: for all x , y , z X ,

  1. d ( x , y ) = d ( y , x ) (symmetry),
  2. d ( x , y ) 0 (non-negativity),
  3. d ( x , y ) = 0 x = y ,
  4. d ( x , z ) d ( x , y ) + d ( y , z ) (triangle inequality).

If d is a metric on X , the pair ( X , d ) is called a metric space . A set X can have multiple metrics, leading to different metric spaces.

Example 1 The following are some initial examples of metric spaces:

  • X = R with d 0 ( x , y ) = | x - y | for all x , y R : it is easy to check properties (1-4).
  • X = R with d ' ( x , y ) = 1 if x y 0 if x = y for all x , y R : it is easy to check properties (1-3). To verify (4), assume that d ( x , y ) + d ( y , z ) = 0 ; then both d ( x , y ) = 0 and d ( y , z ) = 0 , which means x = y and y = z ; by transitivity, x = z and d ( x , z ) = 0 d ( x , y ) + d ( y , z ) , as desired. Now assume that d ( x , y ) + d ( y , z ) = 1 ; then we immediately get d ( x , z ) d ( x , y ) + d ( y , z ) , as desired.
  • X = R n with metric d 2 n ( x , y ) : = i = 1 n | x i - y i | 2 1 / 2 , known as the Euclidean metric.
  • X = R n with metric d 1 n ( x , y ) : = i = 1 n | x i - y i | .
  • X = L 2 [ a , b ] with metric d 2 ( x , y ) : = a b | x ( t ) - y ( t ) | 2 d t 1 / 2 . Formally, d 2 is a pseudometric on X , since there are signals x y that yield d 2 ( x , y ) = 0 . However, one can define a new signal space where all signals with d ( x , y ) = 0 are equal to each other.
  • X = L 2 [ a , b ] with metric d p ( x , y ) : = a b | x ( t ) - y ( t ) | p d t 1 / p , for 1 p < , an extension of the metric d 2 .
  • X = L 2 [ a , b ] with metric d ( x , y ) : = sup t [ a , b ] | x ( t ) - y ( t ) | ; this metric solves the equivalence problem of d 2 .

Here, sup ( A ) is the supremum of A , i.e., the smallest value x 0 R such that x x 0 x A . Similarly, inf ( A ) is the infimum of A , i.e., the largest value x 0 such that x 0 x x A .

Get Jobilize Job Search Mobile App in your pocket Now!

Get it on Google Play Download on the App Store Now




Source:  OpenStax, Introduction to compressive sensing. OpenStax CNX. Mar 12, 2015 Download for free at http://legacy.cnx.org/content/col11355/1.4
Google Play and the Google Play logo are trademarks of Google Inc.

Notification Switch

Would you like to follow the 'Introduction to compressive sensing' conversation and receive update notifications?

Ask