Abstract

Intent recognition in lower-limb assistive devices typically relies on neuromechanical sensing of an affected limb acquired through embedded device sensors. It remains unknown whether signals from more widespread sources such as the contralateral leg and torso positively influence intent recognition, and how specific locomotor tasks that place high demands on the neuromuscular system, such as changes of direction, contribute to intent recognition. In this study, we evaluated the performances of signals from varying mechanical modalities (accelerographic, gyroscopic, and joint angles) and locations (the trailing leg, leading leg and torso) during straight walking, changes of direction (cuts), and cuts to stair ascent with varying task anticipation. Biomechanical information from the torso demonstrated poor performance across all conditions. Unilateral (the trailing or leading leg) joint angle data provided the highest accuracy. Surprisingly, neither the fusion of unilateral and torso data nor the combination of multiple signal modalities improved recognition. For these fused modality data, similar trends but with diminished accuracy rates were reported during unanticipated conditions. Finally, for datasets that achieved a relatively accurate (≥90%) recognition of unanticipated tasks, these levels of recognition were achieved after the mid-swing of the trailing/transitioning leg, prior to a subsequent heel strike. These findings suggest that mechanical sensing of the legs and torso for the recognition of straight-line and transient locomotion can be implemented in a relatively flexible manner (i.e., signal modality, and from the leading or trailing legs) and, importantly, suggest that more widespread sensing is not always optimal.

Highlights

  • Locomotion is a sequential movement comprising the complex activity of muscular, nervous, and skeletal systems [1]

  • In anticipated straight walking (A-W) did signals captured from the trunk–pelvis provide similar outcomes to those of unilateral information (p = 0.06–0.8, effect size (ES) = 0–0.2)

  • Determining the modality and performed location of mechanicalandsensing, whichstates provide strong of straight-line and transient locomotion, in anticipated unanticipated is needed to discrimination of straight-line and transient locomotion, performed in anticipated and unanticipated guide the control of assistive technologies

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Summary

Introduction

Locomotion is a sequential movement comprising the complex activity of muscular, nervous, and skeletal systems [1]. Neurodegenerative diseases such as stroke and spinal cord injury as well as limb amputation are underlying causes of impaired locomotion, leading to restricted functional independence in the community and reduced quality of life [2,3,4]. To enable an effective human–device interaction, intent recognition strategies have been successfully developed to infer user intention for the control system and to actuate the device [7,8,9]. The performance of the recognition system is highly dependent on the Sensors 2020, 20, 5390; doi:10.3390/s20185390 www.mdpi.com/journal/sensors

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