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Learning Realistic Joint Space Boundaries for Range of Motion Analysis of Healthy and Impaired Human Arms

17 November 2023
Shafagh Keyvanian
Michelle J. Johnson
Nadia Figueroa
ArXiv (abs)PDFHTML
Main:7 Pages
11 Figures
Bibliography:1 Pages
Abstract

A realistic human kinematic model that satisfies anatomical constraints is essential for human-robot interaction, biomechanics and robot-assisted rehabilitation. Modeling realistic joint constraints, however, is challenging as human arm motion is constrained by joint limits, inter- and intra-joint dependencies, self-collisions, individual capabilities and muscular or neurological constraints which are difficult to represent. Hence, physicians and researchers have relied on simple box-constraints, ignoring important anatomical factors. In this paper, we propose a data-driven method to learn realistic anatomically constrained upper-limb range of motion (RoM) boundaries from motion capture data. This is achieved by fitting a one-class support vector machine to a dataset of upper-limb joint space exploration motions with an efficient hyper-parameter tuning scheme. Our approach outperforms similar works focused on valid RoM learning. Further, we propose an impairment index (II) metric that offers a quantitative assessment of capability/impairment when comparing healthy and impaired arms. We validate the metric on healthy subjects physically constrained to emulate hemiplegia and different disability levels as stroke patients. [this https URL]

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@article{keyvanian2025_2311.10653,
  title={ Learning Realistic Joint Space Boundaries for Range of Motion Analysis of Healthy and Impaired Human Arms },
  author={ Shafagh Keyvanian and Michelle J. Johnson and Nadia Figueroa },
  journal={arXiv preprint arXiv:2311.10653},
  year={ 2025 }
}
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