ImplicitVol: Sensorless 3D Ultrasound Reconstruction with Deep Implicit Representation

Pak-Hei Yeung, Linde Hesse, Moska Aliasi, Monique Haak, the INTERGROWTH-21st Consortium, Weidi Xie, Ana I. L. Namburete

9/24/2021

Keywords: Science & Engineering

Venue: ARXIV 2021

Bibtex: @article{yeung2021implicitvol, journal = {arXiv preprint arXiv:2109.12108}, booktitle = {ArXiv Pre-print}, author = {Pak-Hei Yeung and Linde Hesse and Moska Aliasi and Monique Haak and the INTERGROWTH-21st Consortium and Weidi Xie and Ana I. L. Namburete}, title = {ImplicitVol: Sensorless 3D Ultrasound Reconstruction with Deep Implicit Representation}, year = {2021}, url = {http://arxiv.org/abs/2109.12108v1}, entrytype = {article}, id = {yeung2021implicitvol} }

Abstract

The objective of this work is to achieve sensorless reconstruction of a 3D volume from a set of 2D freehand ultrasound images with deep implicit representation. In contrast to the conventional way that represents a 3D volume as a discrete voxel grid, we do so by parameterizing it as the zero level-set of a continuous function, i.e. implicitly representing the 3D volume as a mapping from the spatial coordinates to the corresponding intensity values. Our proposed model, termed as ImplicitVol, takes a set of 2D scans and their estimated locations in 3D as input, jointly re?fing the estimated 3D locations and learning a full reconstruction of the 3D volume. When testing on real 2D ultrasound images, novel cross-sectional views that are sampled from ImplicitVol show significantly better visual quality than those sampled from existing reconstruction approaches, outperforming them by over 30% (NCC and SSIM), between the output and ground-truth on the 3D volume testing data. The code will be made publicly available.

Citation Graph
(Double click on nodes to open corresponding papers' pages)

* Showing citation graph for papers within our database. Data retrieved from Semantic Scholar. For full citation graphs, visit ConnectedPapers.