<< Chapter < Page Chapter >> Page >

Continuing from last time, we have a signal x R N , an n × N measurement matrix Φ , and y = Φ x R n is the information we draw from x .

We consider decoders Δ mapping R n R N . We have been discussing whether there exists a decoder withcertain properties. So for this discussion (about information preservation), we can just think about optimal decoding.

While the previous result on sparse signal recovery is interesting, it is not very robust. What happens if our signal does not have support k ? Can we still obtain meaningful results? The answer is yes. To do so we introduce more general input signal classes K X that allows fully supported signals. For example, we will consider the signal class defined by the unit ball

K = U ( p N ) = { x : x X 1 } .
Given an encoder/decoder pair ( Φ , Δ ) , the worst case error on a set K for that pair will be given by
E ( K , Φ , Δ ) X = sup x K x Δ ( Φ x ) X .
Finally, using min-max principles we will define the minimum error over all encoder/decoder pairs for a signal class and for a fixed number of measurements n to be
E n ( K ) X = inf ( Φ , Δ ) : Φ is n × N E ( K , Φ , Δ ) X .
This measure E n ( K ) X is the best we could do while measuring distortion on the topology of X , using n linear measurements, and using arbitrary decoding.

We will see that these questions are actually equivalent to a classical “ n -width” problem. n -widths have seen a great deal of work over the years by a variety of mathematicians: Kolmogorov, Tikhomirov, Kashin, Gluskin, etc. There are many different flavors of n -widths, but we will study the Gelfand n -width (the least intuitive of the widths).

Gelfand n-width

Let K X be compact. Given n , the Gelfand width (also called the dual width) is given by

d n ( K ) X : = inf Y : codim ( Y ) = n sup { x X : x K Y } .
where by codimension ( Y ) = n we mean that Y has dimension dim ( X ) n .

In other words, we are looking for the subspace Y that slices through the set K so that the norms of the projected signals are as small as possible. We can now state the following theorem about n-widths:

Provided that K has the properties (1) K = - K and (2) K + K = C K , then

d n ( K ) X E n ( K ) X C d n ( K ) X
where C is the same constant listed in property (2).
Clarifying notation: C K = { C x : x K } and K + K = { x 1 + x 2 : x 1 , x 2 K } .

We start with the left-hand inequality. We want to take any encoder/decoder pair and use that to construct a Y . So let Φ , Δ be an encoder/decoder. Then simply let Y = N ( Φ ) . Now consider an η K Y and note that Φ ( η ) = 0 since η Y . Let z = Δ ( 0 ) be the decoding of 0 (practically speaking, z should be zero itself, but we avoid that assumption in this proof). Then

η X max ( η - z X , η + z X ) = max ( η - Δ Φ ( η ) X , - η - Δ Φ ( η ) X ) sup x K x - Δ Φ ( x ) X
where we first employ the triangle inequality, then the fact that multiplying by - 1 does not change the norm, then the fact that K = - K . So then
sup η K Y η X sup x K x - Δ Φ ( x ) X .
Taking the infimum over all Φ , Δ , it follows that
d n ( K ) X E n ( K ) X .
Since Φ is n × N , then dim ( N ( Φ ) ) N - n .

Now we prove the right-hand inequality. Assume we have a good Y . Suppose Y has codimension N - n . Then Y (the orthogonal complement of Y in R N ) has dimension n . Let v 1 , v 2 , , v n R N be a basis for Y . Let Φ be the n × N matrix obtained by stacking the rows v 1 , v 2 , , v n . Then N ( Φ ) = Y . Define Δ ( y ) = any element of K F ( y ) if there is one (otherwise let Δ ( y ) be anything in F ( y ) ). Now look at the performance x - Δ Φ ( x ) X for some x K . Both x and Δ Φ ( x ) = : x ' are elements of K , so x - x ' is in N ( Φ ) and in C K . Therefore x - x ' C K N ( Φ ) . Thus,

x - x ' C X sup z Y K z X ,
and so for any x K ,
x - Δ Φ ( x ) X C sup z Y K z X .
Taking the infimum over all Y , we get that E n ( K ) X C d n ( K ) X .

From the proof of this theorem, we see that there is a matching between the matrices Φ and the spaces Y (via the nullspace of Φ ).

An important result is that d n ( U ( q N ) ) p N is known for all p , q except p = 1 , q = . A precise statement of these widths can be found in the book . A particularly important case is

C 1 log ( N / n ) n d n ( U ( 1 N ) ) 2 N C 2 log ( N / n ) n
for N > 2 n . This result was first proved by Kashin with a worselogarithm in the upper inequality and later brought to the present form by Gluskin. This result solves several important problems infunctional analysis and approximation.

Questions & Answers

what is biology
Hajah Reply
the study of living organisms and their interactions with one another and their environments
AI-Robot
what is biology
Victoria Reply
HOW CAN MAN ORGAN FUNCTION
Alfred Reply
the diagram of the digestive system
Assiatu Reply
allimentary cannel
Ogenrwot
How does twins formed
William Reply
They formed in two ways first when one sperm and one egg are splited by mitosis or two sperm and two eggs join together
Oluwatobi
what is genetics
Josephine Reply
Genetics is the study of heredity
Misack
how does twins formed?
Misack
What is manual
Hassan Reply
discuss biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles
Joseph Reply
what is biology
Yousuf Reply
the study of living organisms and their interactions with one another and their environment.
Wine
discuss the biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles in an essay form
Joseph Reply
what is the blood cells
Shaker Reply
list any five characteristics of the blood cells
Shaker
lack electricity and its more savely than electronic microscope because its naturally by using of light
Abdullahi Reply
advantage of electronic microscope is easily and clearly while disadvantage is dangerous because its electronic. advantage of light microscope is savely and naturally by sun while disadvantage is not easily,means its not sharp and not clear
Abdullahi
cell theory state that every organisms composed of one or more cell,cell is the basic unit of life
Abdullahi
is like gone fail us
DENG
cells is the basic structure and functions of all living things
Ramadan
What is classification
ISCONT Reply
is organisms that are similar into groups called tara
Yamosa
in what situation (s) would be the use of a scanning electron microscope be ideal and why?
Kenna Reply
A scanning electron microscope (SEM) is ideal for situations requiring high-resolution imaging of surfaces. It is commonly used in materials science, biology, and geology to examine the topography and composition of samples at a nanoscale level. SEM is particularly useful for studying fine details,
Hilary
cell is the building block of life.
Condoleezza Reply
Got questions? Join the online conversation and get instant answers!
Jobilize.com Reply

Get Jobilize Job Search Mobile App in your pocket Now!

Get it on Google Play Download on the App Store Now




Source:  OpenStax, Compressive sensing. OpenStax CNX. Sep 21, 2007 Download for free at http://cnx.org/content/col10458/1.1
Google Play and the Google Play logo are trademarks of Google Inc.

Notification Switch

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

Ask