State Key Laboratory of Precision Measurement Technology and Instrument, Department of Precision Instrument, Tsinghua University, Beijing, 100084, China.
Nat Commun. 2020 Nov 5;11(1):5615. doi: 10.1038/s41467-020-19424-2.
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.
肢体运动捕捉在人体运动识别、运动功能评估和辅助机器人的灵巧人机交互中至关重要。由于肢体活动的高度动态性,传统的惯性肢体运动捕捉方法存在严重的漂移和不稳定性问题。为此,本文提出了一种无积分速度检测的运动捕捉方法,并通过将微三轴流量传感器与微三轴惯性传感器相结合,开发了一种可穿戴设备。该设备可以在日常活动、剧烈运动和长时间运动中准确测量人体四肢的三维运动速度、加速度和姿态角。此外,我们验证了人体在行走和跑步过程中大腿和小腿之间存在肢体内部协调关系,并建立了相应的神经网络模型。利用肢体内部协调模型,通过单个小腿佩戴的设备巧妙地实现了对人体下肢(包括大腿和小腿)的动态运动捕捉,简化了捕捉设备,降低了成本。在剧烈运动和长时间跑步实验中,验证了可穿戴设备在人体肢体动态识别和重建方面的出色性能和鲁棒性。