Jump to content
 







Main menu
   


Navigation  



Main page
Contents
Current events
Random article
About Wikipedia
Contact us
Donate
 




Contribute  



Help
Learn to edit
Community portal
Recent changes
Upload file
 








Search  

































Create account

Log in
 









Create account
 Log in
 




Pages for logged out editors learn more  



Contributions
Talk
 



















Contents

   



(Top)
 


1 Definition  





2 Equivalent formulation: convolution/lowpass filter  





3 Convergence  





4 Stationary random processes  





5 See also  





6 References  














WhittakerShannon interpolation formula: Difference between revisions






Español
فارسی
Italiano
Русский
Українська
Tiếng Vit
 

Edit links
 









Article
Talk
 

















Read
Edit
View history
 








Tools
   


Actions  



Read
Edit
View history
 




General  



What links here
Related changes
Upload file
Special pages
Permanent link
Page information
Cite this page
Get shortened URL
Download QR code
Wikidata item
 




Print/export  



Download as PDF
Printable version
 




Print/export  



















Appearance
   

 





Help
 

From Wikipedia, the free encyclopedia
 


Browse history interactively
 Previous editNext edit 
Content deleted Content added
→‎See also: -seealso lnk that is already linked where relevant in article
Line 38: Line 38:

==See also==

==See also==

* [[Aliasing]], [[Anti-aliasing filter]], [[Spatial anti-aliasing]]

* [[Aliasing]], [[Anti-aliasing filter]], [[Spatial anti-aliasing]]

* [[Fourier transform]]

* [[Rectangular function]]

* [[Rectangular function]]

* [[Sampling (signal processing)]]

* [[Sampling (signal processing)]]


Revision as of 17:54, 3 September 2019

The Whittaker–Shannon interpolation formulaorsinc interpolation is a method to construct a continuous-time bandlimited function from a sequence of real numbers. The formula dates back to the works of E. Borel in 1898, and E. T. Whittaker in 1915, and was cited from works of J. M. Whittaker in 1935, and in the formulation of the Nyquist–Shannon sampling theorembyClaude Shannon in 1949. It is also commonly called Shannon's interpolation formula and Whittaker's interpolation formula. E. T. Whittaker, who published it in 1915, called it the Cardinal series.

Definition

Fourier transform of a bandlimited function.

Given a sequence of real numbers, x[n], the continuous function

(where "sinc" denotes the normalized sinc function) has a Fourier transform, X(f), whose non-zero values are confined to the region |f| ≤ 1/(2T).  When parameter T has units of seconds, the bandlimit, 1/(2T), has units of cycles/sec (hertz). When the x[n] sequence represents time samples, at interval T, of a continuous function, the quantity fs = 1/T is known as the sample rate, and fs/2 is the corresponding Nyquist frequency. When the sampled function has a bandlimit, B, less than the Nyquist frequency, x(t) is a perfect reconstruction of the original function. (See Sampling theorem.) Otherwise, the frequency components above the Nyquist frequency "fold" into the sub-Nyquist region of X(f), resulting in distortion. (See Aliasing.)

Equivalent formulation: convolution/lowpass filter

The interpolation formula is derived in the Nyquist–Shannon sampling theorem article, which points out that it can also be expressed as the convolution of an infinite impulse train with a sinc function:

This is equivalent to filtering the impulse train with an ideal (brick-wall) low-pass filter.

Convergence

The interpolation formula always converges absolutely and locally uniformly as long as

By the Hölder inequality this is satisfied if the sequence belongs to any of the spaces with 1 ≤ p < ∞, that is

This condition is sufficient, but not necessary. For example, the sum will generally converge if the sample sequence comes from sampling almost any stationary process, in which case the sample sequence is not square summable, and is not in any space.

Stationary random processes

Ifx[n] is an infinite sequence of samples of a sample function of a wide-sense stationary process, then it is not a member of any orLp space, with probability 1; that is, the infinite sum of samples raised to a power p does not have a finite expected value. Nevertheless, the interpolation formula converges with probability 1. Convergence can readily be shown by computing the variances of truncated terms of the summation, and showing that the variance can be made arbitrarily small by choosing a sufficient number of terms. If the process mean is nonzero, then pairs of terms need to be considered to also show that the expected value of the truncated terms converges to zero.

Since a random process does not have a Fourier transform, the condition under which the sum converges to the original function must also be different. A stationary random process does have an autocorrelation function and hence a spectral density according to the Wiener–Khinchin theorem. A suitable condition for convergence to a sample function from the process is that the spectral density of the process be zero at all frequencies equal to and above half the sample rate.

See also

References


Retrieved from "https://en.wikipedia.org/w/index.php?title=Whittaker–Shannon_interpolation_formula&oldid=913862541"

Categories: 
Digital signal processing
Signal processing
Fourier analysis
Hidden categories: 
Use American English from March 2019
All Wikipedia articles written in American English
Articles with short description
Short description matches Wikidata
Articles needing additional references from March 2013
All articles needing additional references
Use dmy dates from May 2014
 



This page was last edited on 3 September 2019, at 17:54 (UTC).

This version of the page has been revised. Besides normal editing, the reason for revision may have been that this version contains factual inaccuracies, vandalism, or material not compatible with the Creative Commons Attribution-ShareAlike License.



Privacy policy

About Wikipedia

Disclaimers

Contact Wikipedia

Code of Conduct

Developers

Statistics

Cookie statement

Mobile view



Wikimedia Foundation
Powered by MediaWiki