基于穿戴式惯性和肌电信号数据的分形模式识别

S. M. Rahman, Md. Abdullah Al Mamun, Md. Asraf Ali
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摘要

下肢肌肉的加速度、角速度和肌电图(EMG)信号,特别是在两条腿的胫骨前肌上,是高度不稳定的,即使在以任何速度行走时没有干扰影响可以识别。本研究分析了imu(惯性测量单元)等可穿戴传感器获取的四类信号,即代表身体所经历的加速度的加速度计信号、代表角速度的陀螺仪信号、代表磁场矢量的磁强计信号以及来自双腿胫骨前肌的肌电图信号的行走步态时间序列的分形动力学(即步态时间序列的复杂性)。研究人员分析了22名健康参与者以舒适的速度行走时的步态时间序列。步态动力学的标度指数(即α-值)通过非趋势波动分析(DFA)来评估其波动来完成,DFA是任何非平稳时间序列中最常见和广泛使用的非线性技术。DFA(标度指数α)结果在肌电和加速度信号中建立了抗持久性,在角速度中建立了不持久的模式,在磁力计信号中建立了持久(即远程或分形相关)。从肌电图和惯性信号中获得的这种分形复杂性或噪声模式可能为评估和预测步行过程中的突然伤害风险提供新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fractal Pattern Identification from Wearable Inertial and Electromyographic Signals Data during Walking
Acceleration, angular velocity and electromyographic (EMG) signal at the lower limb muscles, specially over both leg's Tibialis Anterior muscles are highly non-stationary, even if no perturbing influences can be identified during walking at any speed. This study analyzed the fractal dynamics (i.e., complexity of gait time series) in the walking gait time series of four types of signals obtained from wearable sensors such as IMUs (inertial measurement units), i.e., accelerometer signals which represents the acceleration experienced by the body, gyroscope signals which is the angular velocity, and magnetometer signals which is magnetic field vector, and Electromyographic (EMG) signal from both leg’s Tibialis Anterior muscles. Gait time series from twenty-two healthy participants were analyzed while they performed walking at their comfortable speed. The scaling exponents (i.e., α-values) of the gait dynamics were accomplished by evaluating their fluctuation through detrended fluctuation analysis (DFA), which is most common and widely used non-linear technique for any non-stationary time series. DFA (the scaling exponents α) results established an anti-persistent in EMG and acceleration signal, less persistent pattern in angular velocity and persistent (i.e., long-range or fractal-like correlations) in magnetometer signal. This fractal complexity or noise patterns obtained from the EMG and inertial signals might provide new approaches for assessing and forecasting sudden injury risk during walking.
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