Andrea Herrmann; Eric Knauss; Rüdiger Weißbach; Ralf Fahney; Thomas Gartung; Jörg Glunde; Anne Hoffmann; Uwe Valentini Springer-Verlag Berlin and Heidelberg GmbH & Co. KG (2012) Kovakantinen kirja
Barbara Arndt; Karin Arnold; Volkmar Dietrich; Andreas Eberle; Stephanie Kunze; Uwe Lüttgens; Thomas Neubacher Cornelsen Verlag GmbH (2007) Kovakantinen kirja
Swen Malte John (ed.); Jeanne Duus Johansen (ed.); Thomas Rustemeyer (ed.); Peter Elsner (ed.); Howard I. Maibach (ed.) Springer (2019) Kovakantinen kirja
Inverse problems such as imaging or parameter identification deal with the recovery of unknown quantities from indirect observations, connected via a model describing the underlying context. While traditionally inverse problems are formulated and investigated in a static setting, we observe a significant increase of interest in time-dependence in a growing number of important applications over the last few years. Here, time-dependence affects a) the unknown function to be recovered and / or b) the observed data and / or c) the underlying process. Challenging applications in the field of imaging and parameter identification are techniques such as photoacoustic tomography, elastography, dynamic computerized or emission tomography, dynamic magnetic resonance imaging, super-resolution in image sequences and videos, health monitoring of elastic structures, optical flow problems or magnetic particle imaging to name only a few. Such problems demand for innovation concerning their mathematical description and analysis as well as computational approaches for their solution.