Saved in:
Bibliographic Details
Main Authors: Birlo, Manuel, Caramalau, Razvan, Edwards, Philip J. "Eddie", Dromey, Brian, Clarkson, Matthew J., Stoyanov, Danail
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.09215
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914867687981056
author Birlo, Manuel
Caramalau, Razvan
Edwards, Philip J. "Eddie"
Dromey, Brian
Clarkson, Matthew J.
Stoyanov, Danail
author_facet Birlo, Manuel
Caramalau, Razvan
Edwards, Philip J. "Eddie"
Dromey, Brian
Clarkson, Matthew J.
Stoyanov, Danail
contents We present HUP-3D, a 3D multi-view multi-modal synthetic dataset for hand-ultrasound (US) probe pose estimation in the context of obstetric ultrasound. Egocentric markerless 3D joint pose estimation has potential applications in mixed reality based medical education. The ability to understand hand and probe movements programmatically opens the door to tailored guidance and mentoring applications. Our dataset consists of over 31k sets of RGB, depth and segmentation mask frames, including pose related ground truth data, with a strong emphasis on image diversity and complexity. Adopting a camera viewpoint-based sphere concept allows us to capture a variety of views and generate multiple hand grasp poses using a pre-trained network. Additionally, our approach includes a software-based image rendering concept, enhancing diversity with various hand and arm textures, lighting conditions, and background images. Furthermore, we validated our proposed dataset with state-of-the-art learning models and we obtained the lowest hand-object keypoint errors. The dataset and other details are provided with the supplementary material. The source code of our grasp generation and rendering pipeline will be made publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2407_09215
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle HUP-3D: A 3D multi-view synthetic dataset for assisted-egocentric hand-ultrasound pose estimation
Birlo, Manuel
Caramalau, Razvan
Edwards, Philip J. "Eddie"
Dromey, Brian
Clarkson, Matthew J.
Stoyanov, Danail
Computer Vision and Pattern Recognition
We present HUP-3D, a 3D multi-view multi-modal synthetic dataset for hand-ultrasound (US) probe pose estimation in the context of obstetric ultrasound. Egocentric markerless 3D joint pose estimation has potential applications in mixed reality based medical education. The ability to understand hand and probe movements programmatically opens the door to tailored guidance and mentoring applications. Our dataset consists of over 31k sets of RGB, depth and segmentation mask frames, including pose related ground truth data, with a strong emphasis on image diversity and complexity. Adopting a camera viewpoint-based sphere concept allows us to capture a variety of views and generate multiple hand grasp poses using a pre-trained network. Additionally, our approach includes a software-based image rendering concept, enhancing diversity with various hand and arm textures, lighting conditions, and background images. Furthermore, we validated our proposed dataset with state-of-the-art learning models and we obtained the lowest hand-object keypoint errors. The dataset and other details are provided with the supplementary material. The source code of our grasp generation and rendering pipeline will be made publicly available.
title HUP-3D: A 3D multi-view synthetic dataset for assisted-egocentric hand-ultrasound pose estimation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.09215