Birs- 19w5092: Reconstruction Methods for Inverse Problems
-
Title: Detecting presence of emission sources with low SNR. "Analysis" vs deep learning
Speaker:
Link:
-
Title: A multiscale approach for inverse problems
Speaker:
Link:
-
Title: Two nonlinear harmonic analysis results: a Plancherel theorem for a nonlinear Fourier transform arising in the Inverse Conductivity Problem and multiscale decomposition of diffeomorphisms in Image Registration.
Speaker:
Link:
-
Title: Stable determination of polygonal and polyhedral interfaces from boundary measurements
Speaker:
Link:
-
Title: Infinite-dimensional inverse problems with finite measurements
Speaker:
Link:
-
Title: Quantitative PAT-OCT Elastography for Biomechanical Parameter Imaging
Speaker:
Link:
-
Title: Regularization of Inverse Problems via Time Discrete Geodesics in Image Spaces
Speaker:
Link:
-
Title: Discrete processes and their continuous limits
Speaker:
Link:
-
Title: Total variation based Lavrentiev regularisation
Speaker:
Link:
-
Title: Analysis of a model of elastic dislocation in geophysics
Speaker:
Link:
-
Title: Regularization of backwards diffusion by fractional time derivatives
Speaker:
Link:
-
Title: The impact of conditional stability estimates on variational regularization and the distinguished case of oversmoothing penalties
Speaker:
Link:
-
Title: A convex analysis approach to iterative regularization methods
Speaker:
Link:
-
Title: Deep Neural Networks motivated by PDEs
Speaker:
Link:
-
Title: Combining learned and model based approaches for inverse problems
Speaker:
Link:
-
Title: Combining the Runge approximation and the Whitney embedding theorem in hybrid imaging
Speaker:
Link:
-
Title: Conservative architectures for deep neural networks
Speaker:
Link:
-
Title: New results on a variational inequality formulation of Lavrentiev regularization for nonlinear monotone ill-posed problems
Speaker:
Link:
-
Title: A stable Bayesian layer stripping algorithm for electrical impedance tomography
Speaker:
Link:
-
Title: Reconstruction via Bayesian hierarchical models: convexity, sparsity and model reduction
Speaker:
Link: