The field of computer graphics deals with virtual representations of the real world. These can be obtained either through reconstruction of a model from measurements or by directly modeling a virtual object often on a real-world example. The former is often formalized as a regularized optimization problem in which a data term ensures consistency between model and data and a regularization term promotes solutions that have high a priori probability.In this dissertation different reconstruction problems in computer graphics are shown to be instances of a common class of optimization problems which can be solved using a uniform algorithmic framework. Moreover it is shown that similar optimization methods can also be used to solve data-based modeling problems where the amount of information that can be obtained from measurements is insufficient for accurate reconstruction.As real-world examples of reconstruction problems sparsity and group sparsity methods are presented for radio interferometric image reconstruction in static and time-dependent settings. As a modeling example analogous approaches are investigated to automatically create volumetric models of astronomical nebulae from single images based on symmetry assumptions.
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