Multi-modal 3D Shape Reconstruction Under Calibration Uncertainty using Parametric Level Set Methods

04/23/2019
by   Moshe Eliasof, et al.
0

We consider the problem of 3D shape reconstruction from multi-modal data, given uncertain calibration parameters. Typically, 3D data modalities can be in diverse forms such as sparse point sets, volumetric slices, 2D photos and so on. To jointly process these data modalities, we exploit a parametric level set method that utilizes ellipsoidal radial basis functions. This method not only allows us to analytically and compactly represent the object, it also confers on us the ability to overcome calibration related noise that originates from inaccurate acquisition parameters. This essentially implicit regularization leads to a highly robust and scalable reconstruction, surpassing other traditional methods. In our results we first demonstrate the ability of the method to compactly represent complex objects. We then show that our reconstruction method is robust both to a small number of measurements and to noise in the acquisition parameters. Finally, we demonstrate our reconstruction abilities from diverse modalities such as volume slices obtained from liquid displacement (similar to CTscans and XRays), and visual measurements obtained from shape silhouettes.

READ FULL TEXT

page 16

page 18

research
03/06/2023

MOISST: Multi-modal Optimization of Implicit Scene for SpatioTemporal calibration

With the recent advances in autonomous driving and the decreasing cost o...
research
08/27/2023

4D Myocardium Reconstruction with Decoupled Motion and Shape Model

Estimating the shape and motion state of the myocardium is essential in ...
research
03/03/2020

Deep Multi-Modal Sets

Many vision-related tasks benefit from reasoning over multiple modalitie...
research
08/21/2023

Multi-Modal Dataset Acquisition for Photometrically Challenging Object

This paper addresses the limitations of current datasets for 3D vision t...
research
02/08/2023

Diagnosing and Rectifying Vision Models using Language

Recent multi-modal contrastive learning models have demonstrated the abi...
research
04/21/2022

Parametric Level-sets Enhanced To Improve Reconstruction (PaLEnTIR)

In this paper, we consider the restoration and reconstruction of piecewi...
research
04/03/2017

A parametric level-set method for partially discrete tomography

This paper introduces a parametric level-set method for tomographic reco...

Please sign up or login with your details

Forgot password? Click here to reset