Indirect Fourier transform (IFT) is a solution of ill-posed given by Fourier transform of noisy data (as from biological small-angle scattering) proposed by Glatter. IFT is used instead of direct Fourier transform of noisy data, since a direct FT would give large systematic errors.
Contents
- Fourier transformation in small angle scattering
- Distance distribution function pr
- Introduction to indirect fourier transformation
- Applications
- Alternative approaches
- References
Transform is computed by linear fit to a subfamily of functions corresponding to constraints on a reasonable solution. If a result of the transform is distance distribution function, it is common to assume that the function is non-negative, and is zero at P(0) = 0 and P(Dmax)≥;0, where Dmax is a maximum diameter of the particle. It is approximately true, although it disregards inter-particle effects.
IFT is also performed in order to regularize noisy data.
Fourier transformation in small angle scattering
see Lindner et al. for a thorough introduction
The intensity I per unit volume V is expressed as:
where
That is, taking the fourier transformation of the correlation function gives the intensity.
The probability of finding, within a particle, a point
where
Distance distribution function p(r)
See main article on distribution functions.
We introduce the distance distribution function
The
Introduction to indirect fourier transformation
This is an brief outline of the method introduced by Otto Glatter (Glatter, 1977). Another approach is given by Moore (Moore, 1980).
In indirect fourier transformation, a Dmax is defined and an initial distance distribution function
where
Inserting the expression for pi(r) (1) into (2) and using that the transformation from p(r) to I(q) is linear gives:
where
The
where
The larger the oscillations, the higher
Applications
There are recent proposals at automatic determination of constraint parameters using Bayesian reasoning or heuristics.
Alternative approaches
The distance distribution function