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/MORPH-LER: Log-Euclidean Regularization for Population-Awa...

MORPH-LER: Log-Euclidean Regularization for Population-Aware Image Registration

Mokshagna Sai Teja Karanam, Krithika Iyer, Sarang Joshi, Shireen Elhabian

2025-02-04Image RegistrationMedical Image AnalysisMORPH
PaperPDFCode(official)

Abstract

Spatial transformations that capture population-level morphological statistics are critical for medical image analysis. Commonly used smoothness regularizers for image registration fail to integrate population statistics, leading to anatomically inconsistent transformations. Inverse consistency regularizers promote geometric consistency but lack population morphometrics integration. Regularizers that constrain deformation to low-dimensional manifold methods address this. However, they prioritize reconstruction over interpretability and neglect diffeomorphic properties, such as group composition and inverse consistency. We introduce MORPH-LER, a Log-Euclidean regularization framework for population-aware unsupervised image registration. MORPH-LER learns population morphometrics from spatial transformations to guide and regularize registration networks, ensuring anatomically plausible deformations. It features a bottleneck autoencoder that computes the principal logarithm of deformation fields via iterative square-root predictions. It creates a linearized latent space that respects diffeomorphic properties and enforces inverse consistency. By integrating a registration network with a diffeomorphic autoencoder, MORPH-LER produces smooth, meaningful deformation fields. The framework offers two main contributions: (1) a data-driven regularization strategy that incorporates population-level anatomical statistics to enhance transformation validity and (2) a linearized latent space that enables compact and interpretable deformation fields for efficient population morphometrics analysis. We validate MORPH-LER across two families of deep learning-based registration networks, demonstrating its ability to produce anatomically accurate, computationally efficient, and statistically meaningful transformations on the OASIS-1 brain imaging dataset.

Related Papers

fastWDM3D: Fast and Accurate 3D Healthy Tissue Inpainting2025-07-17cIDIR: Conditioned Implicit Neural Representation for Regularized Deformable Image Registration2025-07-17MUPAX: Multidimensional Problem Agnostic eXplainable AI2025-07-17Are 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 Platforms2025-07-06MedPrompt: LLM-CNN Fusion with Weight Routing for Medical Image Segmentation and Classification2025-06-26U-R-VEDA: Integrating UNET, Residual Links, Edge and Dual Attention, and Vision Transformer for Accurate Semantic Segmentation of CMRs2025-06-25