Litcius/Paper detail

A wearable motion capture device able to detect dynamic motion of human limbs

Shiqiang Liu, Junchang Zhang, Yuzhong Zhang, Rong Zhu

2020Nature Communications196 citationsDOIOpen Access PDF

Abstract

Limb motion capture is essential in human motion-recognition, motor-function assessment and dexterous human-robot interaction for assistive robots. Due to highly dynamic nature of limb activities, conventional inertial methods of limb motion capture suffer from serious drift and instability problems. Here, a motion capture method with integral-free velocity detection is proposed and a wearable device is developed by incorporating micro tri-axis flow sensors with micro tri-axis inertial sensors. The device allows accurate measurement of three-dimensional motion velocity, acceleration, and attitude angle of human limbs in daily activities, strenuous, and prolonged exercises. Additionally, we verify an intra-limb coordination relationship exists between thigh and shank in human walking and running, and establish a neural network model for it. Using the intra-limb coordination model, dynamic motion capture of human lower limbs including thigh and shank is tactfully implemented by a single shank-worn device, which simplifies the capture device and reduces cost. Experiments in strenuous activities and long-time running validate excellent performance and robustness of the wearable device in dynamic motion recognition and reconstruction of human limbs.

Topics & Concepts

Wearable computerMotion captureHuman motionComputer scienceMotion (physics)Wearable technologyComputer visionArtificial intelligenceEmbedded systemHand Gesture Recognition SystemsBalance, Gait, and Falls PreventionMuscle activation and electromyography studies