Visuo-Acoustic Hand Pose and Contact Estimation
July 13, 2025 Β· Declared Dead Β· π arXiv.org
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Authors
Yuemin Mao, Uksang Yoo, Yunchao Yao, Shahram Najam Syed, Luca Bondi, Jonathan Francis, Jean Oh, Jeffrey Ichnowski
arXiv ID
2508.00852
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CV,
cs.LG,
cs.RO
Citations
3
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Accurately estimating hand pose and hand-object contact events is essential for robot data-collection, immersive virtual environments, and biomechanical analysis, yet remains challenging due to visual occlusion, subtle contact cues, limitations in vision-only sensing, and the lack of accessible and flexible tactile sensing. We therefore introduce VibeMesh, a novel wearable system that fuses vision with active acoustic sensing for dense, per-vertex hand contact and pose estimation. VibeMesh integrates a bone-conduction speaker and sparse piezoelectric microphones, distributed on a human hand, emitting structured acoustic signals and capturing their propagation to infer changes induced by contact. To interpret these cross-modal signals, we propose a graph-based attention network that processes synchronized audio spectra and RGB-D-derived hand meshes to predict contact with high spatial resolution. We contribute: (i) a lightweight, non-intrusive visuo-acoustic sensing platform; (ii) a cross-modal graph network for joint pose and contact inference; (iii) a dataset of synchronized RGB-D, acoustic, and ground-truth contact annotations across diverse manipulation scenarios; and (iv) empirical results showing that VibeMesh outperforms vision-only baselines in accuracy and robustness, particularly in occluded or static-contact settings.
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