A multimodal dataset of human gait at different walking speeds established on injury-free adult participants

Sci Data. 2019 Jul 3;6(1):111. doi: 10.1038/s41597-019-0124-4.

Abstract

Human motion capture is used in various fields to analyse, understand and reproduce the diversity of movements that are required during daily-life activities. The proposed dataset of human gait has been established on 50 adults healthy and injury-free for lower and upper extremities in the most recent six months, with no lower and upper extremity surgery in the last two years. Participants were asked to walk on a straight level walkway at 5 speeds during one unique session: 0-0.4 m.s-1, 0.4-0.8 m.s-1, 0.8-1.2 m.s-1, self-selected spontaneous and fast speeds. Three dimensional trajectories of 52 reflective markers spread over the whole body, 3D ground reaction forces and moment, and electromyographic signals were simultaneously recorded. For each participants, a minimum of 3 trials per condition have been made available in the dataset for a total of 1143 trials. This dataset could increase the sample size of similar datasets, lead to analyse the effect of walking speed on gait or conduct unusual analysis of gait thanks to the full body markerset used.

Publication types

  • Dataset

MeSH terms

  • Adult
  • Biomechanical Phenomena
  • Gait*
  • Humans
  • Walking*