RSA-INR: Riemannian Shape Autoencoding via 4D Implicit Neural Representations

05/22/2023
by   Sven Dummer, et al.
6

Shape encoding and shape analysis are valuable tools for comparing shapes and for dimensionality reduction. A specific framework for shape analysis is the Large Deformation Diffeomorphic Metric Mapping (LDDMM) framework, which is capable of shape matching and dimensionality reduction. Researchers have recently introduced neural networks into this framework. However, these works can not match more than two objects simultaneously or have suboptimal performance in shape variability modeling. The latter limitation occurs as the works do not use state-of-the-art shape encoding methods. Moreover, the literature does not discuss the connection between the LDDMM Riemannian distance and the Riemannian geometry for deep learning literature. Our work aims to bridge this gap by demonstrating how LDDMM can integrate Riemannian geometry into deep learning. Furthermore, we discuss how deep learning solves and generalizes shape matching and dimensionality reduction formulations of LDDMM. We achieve both goals by designing a novel implicit encoder for shapes. This model extends a neural network-based algorithm for LDDMM-based pairwise registration, results in a nonlinear manifold PCA, and adds a Riemannian geometry aspect to deep learning models for shape variability modeling. Additionally, we demonstrate that the Riemannian geometry component improves the reconstruction procedure of the implicit encoder in terms of reconstruction quality and stability to noise. We hope our discussion paves the way to more research into how Riemannian geometry, shape/image analysis, and deep learning can be combined.

READ FULL TEXT

page 7

page 8

page 11

page 12

page 19

research
08/17/2023

Automated Characterization and Monitoring of Material Shape using Riemannian Geometry

Shape affects both the physical and chemical properties of a material. C...
research
05/30/2013

Non-linear dimensionality reduction: Riemannian metric estimation and the problem of geometric discovery

In recent years, manifold learning has become increasingly popular as a ...
research
11/17/2017

Dimensionality Reduction on Grassmannian via Riemannian Optimization: A Generalized Perspective

This paper proposes a generalized framework with joint normalization whi...
research
04/24/2014

The fshape framework for the variability analysis of functional shapes

This article introduces a full mathematical and numerical framework for ...
research
12/09/2022

Predicting Shape Development: a Riemannian Method

Predicting the future development of an anatomical shape from a single b...
research
03/17/2023

An evaluation framework for dimensionality reduction through sectional curvature

Unsupervised machine learning lacks ground truth by definition. This pos...
research
06/21/2021

3D Shape Registration Using Spectral Graph Embedding and Probabilistic Matching

We address the problem of 3D shape registration and we propose a novel t...

Please sign up or login with your details

Forgot password? Click here to reset