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Fourier-based integration of quasi-periodic gait accelerations for drift-free displacement estimation using inertial sensors

机译:基于傅立叶的准周期步态加速度积分,用于使用惯性传感器进行无漂移位移估计

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摘要

In biomechanical studies Optical Motion Capture Systems (OMCS) are considered the gold standard for determining the orientation and the position (pose) of an object in a global reference frame. However, the use of OMCS can be difficult, which has prompted research on alternative sensing technologies, such as body-worn inertial sensors. We developed a drift-free method to estimate the three-dimensional (3D) displacement of a body part during cyclical motions using body-worn inertial sensors. We performed the Fourier analysis of the stride-by-stride estimates of the linear acceleration, which were obtained by transposing the specific forces measured by the tri-axial accelerometer into the global frame using a quaternion-based orientation estimation algorithm and detecting when each stride began using a gait-segmentation algorithm. The time integration was performed analytically using the Fourier series coefficients; the inverse Fourier series was then taken for reconstructing the displacement over each single stride. The displacement traces were concatenated and spline-interpolated to obtain the entire trace. The method was applied to estimate the motion of the lower trunk of healthy subjects that walked on a treadmill and it was validated using OMCS reference 3D displacement data; different approaches were tested for transposing the measured specific force into the global frame, segmenting the gait and performing time integration (numerically and analytically). The width of the limits of agreements were computed between each tested method and the OMCS reference method for each anatomical direction: Medio-Lateral (ML), VerTical (VT) and Antero-Posterior (AP); using the proposed method, it was observed that the vertical component of displacement (VT) was within ±4?mm (±1.96 standard deviation) of OMCS data and each component of horizontal displacement (ML and AP) was within ±9?mm of OMCS data. Fourier harmonic analysis was applied to model stride-by-stride linear accelerations during walking and to perform their analytical integration. Our results showed that analytical integration based on Fourier series coefficients was a useful approach to accurately estimate 3D displacement from noisy acceleration data.
机译:在生物力学研究中,光学运动捕捉系统(OMCS)被认为是确定物体在全局参照系中的方向和位置(姿势)的金标准。但是,使用OMCS可能很困难,这促使人们对诸如身体佩戴的惯性传感器之类的替代传感技术进行了研究。我们开发了一种无漂移方法,可以使用佩戴在人体上的惯性传感器估算周期性运动过程中人体部位的三维(3D)位移。我们对线性加速度的逐步估算进行了傅里叶分析,该估算是通过使用基于四元数的方向估算算法将三轴加速度计测得的比力转换为全局框架并检测每个步幅何时获得的开始使用步态分割算法。时间积分是使用傅立叶级数系数​​进行分析性地进行的;然后采用傅里叶逆级数来重建每个步幅上的位移。连接位移轨迹并进行样条插值以获得完整轨迹。该方法用于估计在跑步机上行走的健康受试者的下部躯干的运动,并使用OMCS参考3D位移数据进行了验证。测试了不同的方法,以将测得的比力转换为全局框架,对步态进行分段并进行时间积分(数字和分析)。对于每种解剖学方向,分别在每种测试方法和OMCS参考方法之间计算出协议限制的宽度:Medi-Lateral(ML),VerTical(VT)和Antero-Poterior(AP);使用建议的方法,观察到位移的垂直分量(VT)在OMCS数据的±4?mm以内(±1.96标准偏差),水平位移的每个分量(ML和AP)在OMCS数据的±9?mm以内OMCS数据。将傅里叶谐波分析应用于步行过程中逐步线性加速度的建模并进行分析积分。我们的结果表明,基于傅立叶级数系数​​的分析积分是一种从嘈杂的加速度数据准确估算3D位移的有用方法。

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