Section: Scientific Foundations
Variational approaches
Regularization and functional analysis
The use of variational models for the regularization of inverse problems in
image processing is long-established. Attention in Ariana is focused on the
theoretical study of these models and their associated algorithms, and in
particular on the -convergence of sequences of functionals and on
projection algorithms. Recent research concerns the definition of and
computation in a function space containing oscillatory patterns, a sort of
dual space to BV space, which captures the geometry of the image. These
variational methods are applied to a variety of problems, for example image
decomposition.
Contours and regions
In addition to the regularization of inverse problems, variational methods are much used in the modelling of boundaries in images using contours. In Ariana, attention is focused on the use of such models for image segmentation, in particular texture segmentation; on the theoretical study of the models and their associated algorithms, in particular level set methods; and on the incorporation of prior geometric information concerning the regions sought using higher-order active contour energies.
Wavelets
Wavelets are important to variational approaches in two ways. They enter theoretically, through the study of Besov spaces, and they enter practically, in models of texture for segmentation, and in the denoising of the oscillatory parts of images.