Contact-Aware Refinement of Human Pose Pseudo-Ground Truth via Bioimpedance Sensing
Abstract
Capturing accurate 3D human pose in the wild would provide valuable data for training motion-generation and pose-estimation methods. While video-based estimation approaches have become increasingly accurate, they often fail in common scenarios involving self-contact, such as a hand touching the face. In contrast, wearable bioimpedance sensing can cheaply and unobtrusively measure ground-truth skin-to-skin contact. Consequently, we propose a novel framework that combines visual pose estimators with bioimpedance sensing to capture the 3D pose of people by taking self-contact into account. Our method, BioTUCH, initializes the pose using an off-the-shelf estimator and introduces contact-aware pose optimization during measured self-contact: reprojection error and deviations from the input estimate are minimized while enforcing vertex proximity constraints. We validate our approach using a new dataset of synchronized RGB video, bioimpedance measurements, and 3D motion capture. Testing with three input pose estimators, we demonstrate an average of 11.7% improvement in reconstruction accuracy. We also present a miniature wearable bioimpedance sensor that enables efficient large-scale collection of contact-aware training data for improving pose estimation and generation using BioTUCH. Code and data are available at biotuch.is.tue.mpg.de
Cite
Text
Forte et al. "Contact-Aware Refinement of Human Pose Pseudo-Ground Truth via Bioimpedance Sensing." International Conference on Computer Vision, 2025.Markdown
[Forte et al. "Contact-Aware Refinement of Human Pose Pseudo-Ground Truth via Bioimpedance Sensing." International Conference on Computer Vision, 2025.](https://mlanthology.org/iccv/2025/forte2025iccv-contactaware/)BibTeX
@inproceedings{forte2025iccv-contactaware,
title = {{Contact-Aware Refinement of Human Pose Pseudo-Ground Truth via Bioimpedance Sensing}},
author = {Forte, Maria-Paola and Athanasiou, Nikos and Ballardini, Giulia and Bartels, Jan Ulrich and Kuchenbecker, Katherine J. and Black, Michael J.},
booktitle = {International Conference on Computer Vision},
year = {2025},
pages = {5071-5080},
url = {https://mlanthology.org/iccv/2025/forte2025iccv-contactaware/}
}