ResNet-LDDMM: Advancing the LDDMM Framework using Deep Residual Networks
Boulbaba Ben Amor, Sylvain Arguill\`ere, Ling Shao

TL;DR
This paper introduces ResNet-LDDMM, a novel approach combining deep residual networks with the LDDMM framework to improve deformable shape registration by modeling complex transformations efficiently.
Contribution
It presents a new neural network-based method to solve the LDDMM flow equation, enabling flexible, topology-preserving shape registration with localized affine transformations.
Findings
Successfully applied to 3D shape registration tasks.
Demonstrates ability to handle complex, topology-preserving deformations.
Provides a geometric-neural network framework for shape analysis.
Abstract
In deformable registration, the geometric framework - large deformation diffeomorphic metric mapping or LDDMM, in short - has inspired numerous techniques for comparing, deforming, averaging and analyzing shapes or images. Grounded in flows, which are akin to the equations of motion used in fluid dynamics, LDDMM algorithms solve the flow equation in the space of plausible deformations, i.e. diffeomorphisms. In this work, we make use of deep residual neural networks to solve the non-stationary ODE (flow equation) based on a Euler's discretization scheme. The central idea is to represent time-dependent velocity fields as fully connected ReLU neural networks (building blocks) and derive optimal weights by minimizing a regularized loss function. Computing minimizing paths between deformations, thus between shapes, turns to find optimal network parameters by back-propagating over the…
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Taxonomy
Topics3D Shape Modeling and Analysis · Medical Image Segmentation Techniques · Topological and Geometric Data Analysis
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