论文标题
步行期间仅使用惯性测量单元和端到端统计建模的压力估计中心
Centre of pressure estimation during walking using only inertial-measurement units and end-to-end statistical modelling
论文作者
论文摘要
压力中心(COP)的估计是步态分析的重要组成部分,例如,在评估受运动障碍影响的个体的功能能力时。惯性测量单元(IMU)和力传感器通常用于测量健康和受损受试者的步态特征。我们提供了一种使用统计建模从IMU的原始陀螺仪,加速度计和磁力计数据估算COP的方法。我们使用两个模型的示例来证明该方法的生存能力:线性模型和非线性长短记忆(LSTM)神经网络模型。在使用仪器的跑步机测量的COP地面真相数据上训练了模型,并在估计的12.3mm和地面真相COP和平均受试者间RMS误差为23.7mm之间达到了平均受试者内均方根(RMS)误差,这比到目前为止相似的研究相当或更好。我们表明,仪器跑步机中的校准过程可以短短几分钟,而不会降低模型性能。我们还表明,对环境变化最敏感的记录的IMU信号的磁成分可以安全地删除,而模型性能显着降低。最后,我们表明,IMU的数量可以减少到五个,而模型性能中的数量可以降低而不会恶化。
Estimation of the centre of pressure (COP) is an important part of the gait analysis, for example, when evaluating the functional capacity of individuals affected by motor impairment. Inertial measurement units (IMUs) and force sensors are commonly used to measure gait characteristic of healthy and impaired subjects. We present a methodology for estimating the COP solely from raw gyroscope, accelerometer, and magnetometer data from IMUs using statistical modelling. We demonstrate the viability of the method using an example of two models: a linear model and a non-linear Long-Short-Term Memory (LSTM) neural network model. Models were trained on the COP ground truth data measured using an instrumented treadmill and achieved the average intra-subject root mean square (RMS) error between estimated and ground truth COP of 12.3mm and the average inter-subject RMS error of 23.7mm which is comparable or better than similar studies so far. We show that the calibration procedure in the instrumented treadmill can be as short as a couple of minutes without the decrease in our model performance. We also show that the magnetic component of the recorded IMU signal, which is most sensitive to environmental changes, can be safely dropped without a significant decrease in model performance. Finally, we show that the number of IMUs can be reduced to five without deterioration in the model performance.