TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Region-specific Diffeomorphic Metric Mapping

Region-specific Diffeomorphic Metric Mapping

Zhengyang Shen, François-Xavier Vialard, Marc Niethammer

2019-06-01NeurIPS 2019 12Image RegistrationMedical Image Registration
PaperPDFCode(official)

Abstract

We introduce a region-specific diffeomorphic metric mapping (RDMM) registration approach. RDMM is non-parametric, estimating spatio-temporal velocity fields which parameterize the sought-for spatial transformation. Regularization of these velocity fields is necessary. However, while existing non-parametric registration approaches, e.g., the large displacement diffeomorphic metric mapping (LDDMM) model, use a fixed spatially-invariant regularization our model advects a spatially-varying regularizer with the estimated velocity field, thereby naturally attaching a spatio-temporal regularizer to deforming objects. We explore a family of RDMM registration approaches: 1) a registration model where regions with separate regularizations are pre-defined (e.g., in an atlas space), 2) a registration model where a general spatially-varying regularizer is estimated, and 3) a registration model where the spatially-varying regularizer is obtained via an end-to-end trained deep learning (DL) model. We provide a variational derivation of RDMM, show that the model can assure diffeomorphic transformations in the continuum, and that LDDMM is a particular instance of RDMM. To evaluate RDMM performance we experiment 1) on synthetic 2D data and 2) on two 3D datasets: knee magnetic resonance images (MRIs) of the Osteoarthritis Initiative (OAI) and computed tomography images (CT) of the lung. Results show that our framework achieves state-of-the-art image registration performance, while providing additional information via a learned spatio-temoporal regularizer. Further, our deep learning approach allows for very fast RDMM and LDDMM estimations. Our code will be open-sourced. Code is available at https://github.com/uncbiag/registration.

Results

TaskDatasetMetricValueModel
Image Registration Osteoarthritis InitiativeDice68.18Region-specific Diffeomorphic Metric Mapping

Related Papers

fastWDM3D: Fast and Accurate 3D Healthy Tissue Inpainting2025-07-17cIDIR: Conditioned Implicit Neural Representation for Regularized Deformable Image Registration2025-07-17Are Vision Foundation Models Ready for Out-of-the-Box Medical Image Registration?2025-07-15From Motion to Meaning: Biomechanics-Informed Neural Network for Explainable Cardiovascular Disease Identification2025-07-08Grid-Reg: Grid-Based SAR and Optical Image Registration Across Platforms2025-07-06VoxelOpt: Voxel-Adaptive Message Passing for Discrete Optimization in Deformable Abdominal CT Registration2025-06-24Deformable Medical Image Registration with Effective Anatomical Structure Representation and Divide-and-Conquer Network2025-06-24A Deep Learning Based Method for Fast Registration of Cardiac Magnetic Resonance Images2025-06-23