Документ взят из кэша поисковой машины. Адрес
оригинального документа
: http://www.stsci.edu/stsci/meetings/irw/proceedings/piker.dir/section3_2.html
Дата изменения: Mon Apr 18 23:55:57 1994 Дата индексирования: Sun Dec 23 19:23:57 2007 Кодировка: Поисковые слова: deep sky |
A quite natural way of discretizing Eq. (1) is as follows:
where and are the image and object, respectively; the are quadrature weights. Eq. (3) can also be written in the form where now is a matrix. It can be diagonalized by the Discrete Fourier Transform (DFT) and becomes
where , , and are the DFT's of , , and , respectively. The matrix is, in general, ill-conditioned and therefore the solution of (3) , as well as the solution of (4), are affected by numerical instability. Then one has to use regularized inversion methods in order to obtain approximate and sensible solutions. The methods we have considered are the following:
All these methods contain a free parameter which is the so-called regularization parameter; in the case of method () this is a smoothing of the higher spatial frequencies; for the methods () - (), it is the number of iterations. In the case of a simulated experiment, the typical behavior of the approximate solutions as a function of the free parameter is the following: if we compute the distance between the approximate solution and the known true solution (for instance the Euclidean norm of their difference) and we consider its behavior as a function of the free parameter, then this distance will exhibit a minimum. The value of the parameter corresponding to this minimum can be considered as the optimum one since it provides the best approximation to the solution of the problem. Obviously, in the case of real data, the solution of the problem is not known and therefore this method can not be used for the estimation of the free parameter. For this reason several criteria have been investigated for its choice (Bertero 1988). However, in general they are not very practical and very often the choice they provide is not satisfactory, so that one has to use some empirical criterion which depends on the problem one is investigating. In the case of simulated data, we will choose the value of the parameter corresponding to the minimum of the distance between the approximate and the true solution.
- ()
- Tikhonov regularization (TIKH),
- ()
- Landweber iteration (LW),
- ()
- Landweber iteration with imposed positivity (LWPOS),
- ()
- Conjugate gradients (CG),
- ()
- Conjugate gradients with imposed positivity (CGPOS), and
- ()
- Richardson-Lucy method (R-L).
For the convenience of the reader we recall that the approximate solution given by method () is
where is the regularization parameter. More explicitly in the case of Eq. (4) we have
In the case of method () the iteration scheme is given by
where is the stationary relaxation parameter and
We point out that this iterative method is equivalent to a filtering since the final result of iterations can be explicitly written and in Fourier space it is given by
This expression cannot be used in method () because the negative part of the reconstruction of obtained from (7) must be zeroed at the end of each iteration stage. Since must be computed in Fourier space at each iteration, two FFTs are required: the first for computing ; the second one for coming back to the physical space in order to impose positivity. On the practical side, for both methods () and () the relaxation parameter can be set as follows:
where .
Finally, the conjugate gradients iteration scheme is
where
with , and the non-stationary relaxation parameter . This iteration scheme can also be easily written in Fourier space.