Optimal Transport for Diffeomorphic Registration
نویسندگان
چکیده
This paper introduces the use of unbalanced optimal transport methods as a similarity measure for diffeomorphic matching of imaging data. The similarity measure is a key object in diffeomorphic registration methods that, together with the regularization on the deformation, defines the optimal deformation. Most often, these similarity measures are local or non local but simple enough to be computationally fast. We build on recent theoretical and numerical advances in optimal transport to propose fast and global similarity measures that can be used on surfaces or volumetric imaging data. This new similarity measure is computed using a fast generalized Sinkhorn algorithm. We apply this new metric in the LDDMM framework on synthetic and real data, fibres bundles and surfaces and show that better matching results are obtained.
منابع مشابه
Discrete Mechanics and Optimal Control for Image Registration
Diffeomorphic image registration, where images are aligned using diffeomorphic warps, is a popular subject for research in medical image analysis. We introduce a novel algorithm for computing diffeomorphic warps that fits into the framework of Discrete Mechanics and Optimal Control, a popular choice for optimisation methods in numerical analysis. The result is an algorithm that is many times fa...
متن کاملKernel Bundle EPDiff: Evolution Equations for Multi-scale Diffeomorphic Image Registration
In the LDDMM framework, optimal warps for image registration are found as end-points of critical paths for an energy functional, and the EPDiff equations describe the evolution along such paths. The Large Deformation Diffeomorphic Kernel Bundle Mapping (LDDKBM) extension of LDDMM allows scale space information to be automatically incorporated in registrations and promises to improve the standar...
متن کاملA Lagrangian Gauss-Newton-Krylov Solver for Mass- and Intensity-Preserving Diffeomorphic Image Registration
We present an efficient solver for diffeomorphic image registration problems in the framework of Large Deformations Diffeomorphic Metric Mappings (LDDMM). We use an optimal control formulation, in which the velocity field of a hyperbolic PDE needs to be found such that the distance between the final state of the system (the transformed/transported template image) and the observation (the refere...
متن کاملLarge Deformation Diffeomorphic Registration of Diffusion-Weighted Images with Explicit Orientation Optimization
We seek to compute a diffeomorphic map between a pair of diffusion-weighted images under large deformation. Unlike existing techniques, our method allows any diffusion model to be fitted after registration for subsequent multifaceted analysis. This is achieved by directly aligning the diffusion-weighted images using a large deformation diffeomorphic registration framework formulated from an opt...
متن کاملAn efficient kernel product for automatic differentiation libraries, with applications to measure transport
This paper presents a memory-efficient implementation of the kernel matrix-vector product (sparse convolution) and the way to link it with automatic differentiation libraries such as PyTorch. This piece of software alleviates the major bottleneck of autodiff libraries as far as diffeomorphic shape registration is concerned: memory consumption. As a result, symbolic python code can now scale up ...
متن کامل