4.6 Article

Real-Time Locomotion Recognition Algorithm for an Active Pelvis Orthosis to Assist Lower-Limb Amputees

期刊

IEEE ROBOTICS AND AUTOMATION LETTERS
卷 7, 期 3, 页码 7487-7494

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2022.3183936

关键词

Locomotion recognition; lower-limb amputees; lower-limb exoskeleton

类别

资金

  1. CAPES-PRINT through Visiting Professorship at the Scuola Superiore Sant' anna [88887.573215/2020-00]
  2. European Commission through CYBERLEGs Plus Plus Project [731931]
  3. European Commission through H2020 Framework [H2020-ICT-25-2016-2017]

向作者/读者索取更多资源

This study proposed a locomotion recognition algorithm for assisting lower-limb amputees, which can accurately recognize different locomotion modes and transitions in real-time. The algorithm achieved high recognition accuracy in experiments, laying the foundation for future applications in real-life scenarios.
Powered hip exoskeletons, in combination with passive prostheses, have been recently proposed to improve the economy and pattern of walking of lower-limb amputees within clinical scenarios. However, for everyday life support, a real-time control strategy that can accurately recognize different locomotion modes and transitions is required. In this letter, we proposed a novel locomotion recognition algorithm for an Active Pelvis Orthosis designed to assist people with lower-limb amputation, in quasi-static (sit-to-stand/stand-to-sit) and dynamic locomotion modes (walking and stairs negotiation). Two finite-state machines were combined to recognize in real-time the participants' locomotion, one was a rule-based algorithm and one was based on four linear discriminant analysis classifiers. Four transfemoral amputees took part in the experiments and performed a circuit of tasks in two conditions, namely in transparent mode (the exoskeleton was controlled to provide null output impedance), and in assistive mode (the exoskeleton was controlled to output an assistive torque consistently with the locomotion mode recognized by the algorithm), to test the algorithm in real-time conditions. The median (25th, 75th percentile) between-subjects recognition accuracy was 94.8% (93.4%, 96.5%) with user-dependent models. Offline analysis on user-independent models with leave-one-subject-out validation resulted in between-subjects recognition accuracy equal to 95.9% (94.0%, 97.8%). The results of this study pave the way for future experimentations of the technology in ecological scenarios.

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