We investigate several iterative numerical schemes for nonlinear variational image smoothing and segmentation implemented in parallel. A general iterative framework subsuming these schemes is suggested for which global convergence irrespective of the starting point can be shown. We characterize various edge-preserving regulafization methods from the recent image processing literature involving auxiliary variables as special cases of this general framework. As a by-product, global convergence can be proven under conditions slightly weaker than those stated in the literature. Efficient Krylov subspace solvers for the linear parts of these schemes have been implemented on a multi-processor machine. The performance of these parallel implementat...
Fast and scalable software modules for image segmentation are needed for modern high-throughput scre...
Abstract In this paper, we propose a new convex variational model for segmentation of vector valued ...
In this paper, an edge-preserving nonlinear iterative regularization-based image resampling method f...
We investigate several iterative numerical schemes for nonlinear variational image smoothing and seg...
Variational segmentation and nonlinear diffusion approaches have been very active research areas in ...
Variational segmentation and nonlinear diffusion approaches have been very active research areas in ...
In this work we consider parallel variational algorithms for solution of linear systems. Theoretical...
In this paper we give a general, robust, and efficient approach for numerical solu-tions of partial ...
This paper explores effective algorithms for the solution of numerical nonlinear optimization proble...
This paper addresses the issues of nonlinear edge-preserving image smoothing and segmentation. A ML-...
We generalize the alternating minimization algorithm recently proposed in [32] to effciently solve a...
Abstract—We present an approach to parallel variational op-tical-flow computation by using an arbitr...
Discrete variational methods have shown an excellent performance in numerical simulations of differe...
In this article, we intend to give a broad picture of mathematical image processing through one of t...
This paper explores eective algorithms for the solution of numerical nonlinear optimization problems...
Fast and scalable software modules for image segmentation are needed for modern high-throughput scre...
Abstract In this paper, we propose a new convex variational model for segmentation of vector valued ...
In this paper, an edge-preserving nonlinear iterative regularization-based image resampling method f...
We investigate several iterative numerical schemes for nonlinear variational image smoothing and seg...
Variational segmentation and nonlinear diffusion approaches have been very active research areas in ...
Variational segmentation and nonlinear diffusion approaches have been very active research areas in ...
In this work we consider parallel variational algorithms for solution of linear systems. Theoretical...
In this paper we give a general, robust, and efficient approach for numerical solu-tions of partial ...
This paper explores effective algorithms for the solution of numerical nonlinear optimization proble...
This paper addresses the issues of nonlinear edge-preserving image smoothing and segmentation. A ML-...
We generalize the alternating minimization algorithm recently proposed in [32] to effciently solve a...
Abstract—We present an approach to parallel variational op-tical-flow computation by using an arbitr...
Discrete variational methods have shown an excellent performance in numerical simulations of differe...
In this article, we intend to give a broad picture of mathematical image processing through one of t...
This paper explores eective algorithms for the solution of numerical nonlinear optimization problems...
Fast and scalable software modules for image segmentation are needed for modern high-throughput scre...
Abstract In this paper, we propose a new convex variational model for segmentation of vector valued ...
In this paper, an edge-preserving nonlinear iterative regularization-based image resampling method f...