Title of article :
Prior Learning and Convex-Concave Regularization of Binary Tomography
Author/Authors :
Weber، نويسنده , , Stefan and Schüle، نويسنده , , Thomas and Schnِrr، نويسنده , , Christoph، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
15
From page :
313
To page :
327
Abstract :
In our previous work, we introduced a convex-concave regularization approach to the reconstruction of binary objects from few projections within a limited range of angles. A convex reconstruction functional, comprising the projections equations and a smoothness prior, was complemented with a concave penalty term enforcing binary solutions. In the present work we investigate alternatives to the smoothness prior in terms of probabilistically learnt priors encoding local object structure. We show that the difference-of-convex-functions DC-programming framework is flexible enough to cope with this more general model class. Numerical results show that reconstruction becomes feasible under conditions where our previous approach fails.
Keywords :
Discrete tomography , Markov random fields , Prior Learning , Convex-Concave Regularization
Journal title :
Electronic Notes in Discrete Mathematics
Serial Year :
2005
Journal title :
Electronic Notes in Discrete Mathematics
Record number :
1453918
Link To Document :
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