IEEE Trans Biomed Eng. 2022 Feb;69(2):678-688. doi: 10.1109/TBME.2021.3103201. Epub 2022 Jan 21.
Analyzing human motion is essential for diagnosing movement disorders and guiding rehabilitation for conditions like osteoarthritis, stroke, and Parkinson's disease. Optical motion capture systems are the standard for estimating kinematics, but the equipment is expensive and requires a predefined space. While wearable sensor systems can estimate kinematics in any environment, existing systems are generally less accurate than optical motion capture. Many wearable sensor systems require a computer in close proximity and use proprietary software, limiting experimental reproducibility.
Here, we present OpenSenseRT, an open-source and wearable system that estimates upper and lower extremity kinematics in real time by using inertial measurement units and a portable microcontroller.
We compared the OpenSenseRT system to optical motion capture and found an average RMSE of 4.4 degrees across 5 lower-limb joint angles during three minutes of walking and an average RMSE of 5.6 degrees across 8 upper extremity joint angles during a Fugl-Meyer task. The open-source software and hardware are scalable, tracking 1 to 14 body segments, with one sensor per segment. A musculoskeletal model and inverse kinematics solver estimate Kinematics in real-time. The computation frequency depends on the number of tracked segments, but is sufficient for real-time measurement for many tasks of interest; for example, the system can track 7 segments at 30 Hz in real-time. The system uses off-the-shelf parts costing approximately $100 USD plus $20 for each tracked segment.
The OpenSenseRT system is validated against optical motion capture, low-cost, and simple to replicate, enabling movement analysis in clinics, homes, and free-living settings.
分析人体运动对于诊断运动障碍以及指导关节炎、中风和帕金森病等疾病的康复至关重要。光学运动捕捉系统是估计运动学的标准,但设备昂贵且需要预设空间。虽然可穿戴传感器系统可以在任何环境中估计运动学,但现有的系统通常不如光学运动捕捉系统准确。许多可穿戴传感器系统需要靠近计算机并使用专有的软件,这限制了实验的可重复性。
在这里,我们提出了 OpenSenseRT,这是一个开源的可穿戴系统,通过使用惯性测量单元和便携式微控制器实时估计上下肢运动学。
我们将 OpenSenseRT 系统与光学运动捕捉进行了比较,发现 3 分钟步行过程中 5 个下肢关节角度的平均 RMSE 为 4.4 度,8 个上肢关节角度的平均 RMSE 为 5.6 度,进行 Fugl-Meyer 任务。开源的软件和硬件具有可扩展性,可跟踪 1 到 14 个身体部位,每个部位一个传感器。肌肉骨骼模型和逆运动学求解器实时估计运动学。计算频率取决于跟踪的段数,但对于许多感兴趣的任务的实时测量已经足够了;例如,系统可以以 30Hz 的频率实时跟踪 7 个段。该系统使用现成的部件,成本约为 100 美元,外加每个跟踪段 20 美元。
OpenSenseRT 系统经过光学运动捕捉验证,成本低,易于复制,可在诊所、家庭和自由生活环境中进行运动分析。