Recons.zip

Regularized reconstruction algorithms
424 descargas
Actualizado 7 may 2014

Ver licencia

Hello,
Just to be helpful and to obtain some quick preliminary results, I load 3 reconstruction algorithms and a processor script to call on the forward operator and each algorithm, i.e. CGNE, Tikhonov reconstruction and Lagged Diffusivity Fixed Point Iteration.
I just would like to get some feedback from anyone uses the codes. References where more information can be found are available within the codes. Any copyright or licence are not meant to be required as this is not a complete professional toolbox, and not much should be expected as results, but I still need to fill in some boxes to complete this load. Let me brief what's not present in the algorithms here; Algorithms do not really deal with the noise since this must be defined per problem by the users. Regularization parameter choice for the lagged diffusivity algorithm is in our privacy since it is a result of some mathematics.
Furthermore, boundary conditions are to be defined per problem. Attached picture is a result of lagged diffusivity algorithm after applying the code to tomo.m file provided by Per Christian Hansen. I also tested the same code on Emission Tomography of which the forward operator and the measurement are provided by John Bardsley, and I obtained a result with relative error value 0.33. Some graphical results are also available in the folder. You will see very smooth reconstruction of the cartoon images. It was obtained when pseudo inverse was given as initial guess.
I also acknowledge John Bardsley's help for teaching me how to use his complete toolbox. I attended Inverse Problem-3 class by professor Thorsten Hohage at the University of Goettingen, where I'm still phd. Thanks to that class, we learnt how to design regularization algorithms as a combination of CG iteration. For further questions, feel free to contact me per e-mail and as mentioned above every criticism is more than welcomed.

Citar como

Erdem Altuntac (2024). Recons.zip (https://www.mathworks.com/matlabcentral/fileexchange/46516-recons-zip), MATLAB Central File Exchange. Recuperado .

Compatibilidad con la versión de MATLAB
Se creó con R2011b
Compatible con cualquier versión
Compatibilidad con las plataformas
Windows macOS Linux
Categorías
Más información sobre Mathematics and Optimization en Help Center y MATLAB Answers.
Agradecimientos

Inspiración para: 3D_Smoothed_TV functional and its gradient

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
Versión Publicado Notas de la versión
1.0.0.0