Research (Jan 2023)

A Wearable Multidimensional Motion Sensor for AI-Enhanced VR Sports

  • Zi Hao Guo,
  • ZiXuan Zhang,
  • Kang An,
  • Tianyiyi He,
  • Zhongda Sun,
  • Xiong Pu,
  • Chengkuo Lee

DOI
https://doi.org/10.34133/research.0154
Journal volume & issue
Vol. 6

Abstract

Read online

Regular exercise paves the way to a healthy life. However, conventional sports events are susceptible to weather conditions. Current motion sensors for home-based sports are mainly limited by operation power consumption, single-direction sensitivity, or inferior data analysis. Herein, by leveraging the 3-dimensional printing technique and triboelectric effect, a wearable self-powered multidimensional motion sensor has been developed to detect both the vertical and planar movement trajectory. By integrating with a belt, this sensor could be used to identify some low degree of freedom motions, e.g., waist or gait motion, with a high accuracy of 93.8%. Furthermore, when wearing the sensor at the ankle position, signals generated from shank motions that contain more abundant information could also be effectively collected. By means of a deep learning algorithm, the kicking direction and force could be precisely differentiated with an accuracy of 97.5%. Toward practical application, a virtual reality-enabled fitness game and a shooting game were successfully demonstrated. This work is believed to open up new insights for the development of future household sports or rehabilitation.