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Main Authors: Zhu, Siqi, Li, Yixuan, Li, Junfu, Wu, Qi, Wang, Zan, Ma, Haozhe, Liang, Wei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.21209
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author Zhu, Siqi
Li, Yixuan
Li, Junfu
Wu, Qi
Wang, Zan
Ma, Haozhe
Liang, Wei
author_facet Zhu, Siqi
Li, Yixuan
Li, Junfu
Wu, Qi
Wang, Zan
Ma, Haozhe
Liang, Wei
contents While on-body device-based human motion estimation is crucial for applications such as XR interaction, existing methods often suffer from poor wearability, expensive hardware, and cumbersome calibration, which hinder their adoption in daily life. To address these challenges, we present EveryWear, a lightweight and practical human motion capture approach based entirely on everyday wearables: a smartphone, smartwatch, earbuds, and smart glasses equipped with one forward-facing and two downward-facing cameras, requiring no explicit calibration before use. We introduce Ego-Elec, a 9-hour real-world dataset covering 56 daily activities across 17 diverse indoor and outdoor environments, with ground-truth 3D annotations provided by the motion capture (MoCap), to facilitate robust research and benchmarking in this direction. Our approach employs a multimodal teacher-student framework that integrates visual cues from egocentric cameras with inertial signals from consumer devices. By training directly on real-world data rather than synthetic data, our model effectively eliminates the sim-to-real gap that constrains prior work. Experiments demonstrate that our method outperforms baseline models, validating its effectiveness for practical full-body motion estimation.
format Preprint
id arxiv_https___arxiv_org_abs_2512_21209
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Human Motion Estimation with Everyday Wearables
Zhu, Siqi
Li, Yixuan
Li, Junfu
Wu, Qi
Wang, Zan
Ma, Haozhe
Liang, Wei
Computer Vision and Pattern Recognition
While on-body device-based human motion estimation is crucial for applications such as XR interaction, existing methods often suffer from poor wearability, expensive hardware, and cumbersome calibration, which hinder their adoption in daily life. To address these challenges, we present EveryWear, a lightweight and practical human motion capture approach based entirely on everyday wearables: a smartphone, smartwatch, earbuds, and smart glasses equipped with one forward-facing and two downward-facing cameras, requiring no explicit calibration before use. We introduce Ego-Elec, a 9-hour real-world dataset covering 56 daily activities across 17 diverse indoor and outdoor environments, with ground-truth 3D annotations provided by the motion capture (MoCap), to facilitate robust research and benchmarking in this direction. Our approach employs a multimodal teacher-student framework that integrates visual cues from egocentric cameras with inertial signals from consumer devices. By training directly on real-world data rather than synthetic data, our model effectively eliminates the sim-to-real gap that constrains prior work. Experiments demonstrate that our method outperforms baseline models, validating its effectiveness for practical full-body motion estimation.
title Human Motion Estimation with Everyday Wearables
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.21209