TY - JOUR
T1 - A Generalized Conditional Gradient Method for Dynamic Inverse Problems with Optimal Transport Regularization
AU - Bredies, Kristian
AU - Carioni, Marcello
AU - Fanzon, Silvio
AU - Romero, Francisco
N1 - Funding Information:
KB and SF gratefully acknowledge support by the Christian Doppler Research Association (CDG) and Austrian Science Fund (FWF) through the Partnership in Research project PIR-27 “Mathematical methods for motion-aware medical imaging” and project P 29192 “Regularization graphs for variational imaging”. MC is supported by the Royal Society (Newton International Fellowship NIF 192048). The Institute of Mathematics and Scientific Computing, to which KB, SF, FR are affiliated, is a member of NAWI Graz (http://www.nawigraz.at/). The authors KB, SF, FR are further members of/associated with BioTechMed Graz (https://biotechmedgraz.at/).
Funding Information:
KB and SF gratefully acknowledge support by the Christian Doppler Research Association (CDG) and Austrian Science Fund (FWF) through the Partnership in Research project PIR-27 “Mathematical methods for motion-aware medical imaging” and project P 29192 “Regularization graphs for variational imaging”. MC is supported by the Royal Society (Newton International Fellowship NIF R1 192048). The Institute of Mathematics and Scientific Computing, to which KB, SF, FR are affiliated, is a member of NAWI Graz ( http://www.nawigraz.at/ ). The authors KB, SF, FR are further members of/associated with BioTechMed Graz ( https://biotechmedgraz.at/ ).
Publisher Copyright:
© 2022, The Author(s).
PY - 2023/6/1
Y1 - 2023/6/1
N2 - We develop a dynamic generalized conditional gradient method (DGCG) for dynamic inverse problems with optimal transport regularization. We consider the framework introduced in Bredies and Fanzon (ESAIM: M2AN 54:2351–2382, 2020), where the objective functional is comprised of a fidelity term, penalizing the pointwise in time discrepancy between the observation and the unknown in time-varying Hilbert spaces, and a regularizer keeping track of the dynamics, given by the Benamou–Brenier energy constrained via the homogeneous continuity equation. Employing the characterization of the extremal points of the Benamou–Brenier energy (Bredies et al. in Bull Lond Math Soc 53(5):1436–1452, 2021), we define the atoms of the problem as measures concentrated on absolutely continuous curves in the domain. We propose a dynamic generalization of a conditional gradient method that consists of iteratively adding suitably chosen atoms to the current sparse iterate, and subsequently optimizing the coefficients in the resulting linear combination. We prove that the method converges with a sublinear rate to a minimizer of the objective functional. Additionally, we propose heuristic strategies and acceleration steps that allow to implement the algorithm efficiently. Finally, we provide numerical examples that demonstrate the effectiveness of our algorithm and model in reconstructing heavily undersampled dynamic data, together with the presence of noise.
AB - We develop a dynamic generalized conditional gradient method (DGCG) for dynamic inverse problems with optimal transport regularization. We consider the framework introduced in Bredies and Fanzon (ESAIM: M2AN 54:2351–2382, 2020), where the objective functional is comprised of a fidelity term, penalizing the pointwise in time discrepancy between the observation and the unknown in time-varying Hilbert spaces, and a regularizer keeping track of the dynamics, given by the Benamou–Brenier energy constrained via the homogeneous continuity equation. Employing the characterization of the extremal points of the Benamou–Brenier energy (Bredies et al. in Bull Lond Math Soc 53(5):1436–1452, 2021), we define the atoms of the problem as measures concentrated on absolutely continuous curves in the domain. We propose a dynamic generalization of a conditional gradient method that consists of iteratively adding suitably chosen atoms to the current sparse iterate, and subsequently optimizing the coefficients in the resulting linear combination. We prove that the method converges with a sublinear rate to a minimizer of the objective functional. Additionally, we propose heuristic strategies and acceleration steps that allow to implement the algorithm efficiently. Finally, we provide numerical examples that demonstrate the effectiveness of our algorithm and model in reconstructing heavily undersampled dynamic data, together with the presence of noise.
KW - Benamou–Brenier energy
KW - Conditional gradient method
KW - Continuity equation
KW - Dynamic inverse problems
KW - Optimal transport regularization
UR - http://www.scopus.com/inward/record.url?scp=85127417608&partnerID=8YFLogxK
U2 - 10.1007/s10208-022-09561-z
DO - 10.1007/s10208-022-09561-z
M3 - Article
AN - SCOPUS:85127417608
SN - 1615-3375
VL - 23
SP - 833
EP - 898
JO - Foundations of Computational Mathematics
JF - Foundations of Computational Mathematics
IS - 3
ER -