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I am using the interp1 function in MATLAB to interpolate some missing data in a signal and it works like a charm. However, I would like to know how the function works.

I checked the code of the function interp1, which uses the function spline. The code of the function spline is extremely hard for me to understand, so I have googled and wikipedia'd it, and I know (generally) how it works, with degrees of freedom, and how the function uses polynomials (usually 3rd order) to generate the missing part of the curve.

If I have an array of 20 numbers, and 8 - 12 would be missing (zeros):

4 5 2 3 5 4 3 0 0 0 0 0 4 5 2 4 3 5 4 3

How does the function determine what numbers would fit in there? Is it a window of a certain width that moves over the data, like processing [1-5], [2-6], [3-7] etc? Or does it use the 2 or 3 numbers to the left and right of the missing data?

I am not looking for a mathematical explanation, I just want to know how it does its magic :)

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If I understood correctly, you wish to know how the cubic spline "works", rigth? –  ldigas Oct 27 '11 at 12:56
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If I am not mistaken, the spline interpolation is polynomial between two adjacent nodes, with continuity of the first and second derivatives of the polynomials. Maybe this would be better answered at math.stackexchange.com. –  Aabaz Oct 27 '11 at 13:04
    
@Aabaz - Yes, except at the first and the last nodes, where it can take different boundary conditions (doesn't have to be tangential). There are also variations with "breaks" but one can now discuss whether he wants to think of that as two splines or one special kind. –  ldigas Oct 27 '11 at 13:57
    
@Aabaz - As far as math.SE goes, I'm guessing from the OP's last sentence, he doesn't want a mathematical explanation. –  ldigas Oct 27 '11 at 13:57
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1 Answer

up vote 2 down vote accepted

I still do not know if this will answer your question but I will try and see.

I will try to be as clear and understandable as possible so I might intentionnaly leave some (maybe important) details apart for the sake of simplicity.

One sometimes know the value of a function at a set of points without knowing its analytical expression. The task of knowing the value of the function at a point that is not in the set is called interpolation / extrapolation. The basic principle of interpolation is to compute the value of the function at the desired point from its value at the nearest neighbors.

The simplest method you can think of is linear interpolation. The value of your unknown function at a given point is a distance weighted average of the nearest neighboring values. This simply means that if the point of interest is at distance 1 of point A and distance 9 from point B the value of the function at this point will be 10 % B and 90 % A. This is equivalent to drawing straight lines between each points where you know the value of the function.

The problem of this method is that it produces discontinuous estimation of the function. This is annoying when modeling function that describes natural phenomenon because these functions are often continuous.

Amongst other interpolation methods, the cubic spline interpolation can solve this problem. The principle remains identical, excepts that instead of having a line between each point you have a third order polynomial. Some constraints on the polynomial makes it unique: namely its first and second derivatives must be continuous with the neighboring polynomials. This assures the "smoothness" of the interpolated function.

So for me, the "magic" of cubic spline interpolation comes from the assumption of "smoothness" that allows this method to correctly interpolate function describing natural phenomenon.

If this answer is not useful or too simplistic I will delete it.

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Thank you for your time for explaining, I think it's clear now. Where linear interpolation would simply draw a straight line between 2 known points, the spline uses a 3rd order polynomial to fill in the gaps, and to make it a smooth line it uses the deratives of that polynomial to calculate the best fit. Thanks again! –  Whyaken Oct 31 '11 at 8:35
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