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A novel bio-kinematic encoder for human exercise representation and decomposition - Part 2: Robustness and optimisation

机译:用于人体运动表示和分解的新型生物运动编码器-第2部分:稳健性和优化

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摘要

Bio-kinematic characterisations of human exercises constitute dealing with parameters such as velocity, acceleration, joint angles, etc. A majority of these are measured directly from various sensors ranging from RGB cameras to inertial sensors. However, due to certain limitations associated with these sensors, such as inherent noise, filters are required to be implemented to subjugate the effect from the noise. When the two-component (trajectory shape and dynamics) bio-kinematic encoding model is being established to represent an exercise, reducing the effect from noise embedded in raw data will be important since the underlying model can be quite sensitive to noise. In this paper, we examine and compare some commonly used filters, namely least-square Gaussian filter, Savitzky-Golay filter and optimal Kalman filter, with four groups of real data collected from Microsoft Kinect©, and assert that Savitzky-Golay filter is the best one when establishing an underlying model for human exercise representation.
机译:人类运动的生物运动学特征包括处理诸如速度,加速度,关节角度等参数。其中的大多数直接从各种传感器(从RGB相机到惯性传感器)进行测量。然而,由于与这些传感器相关联的某些限制,例如固有噪声,需要实现滤波器以抑制噪声的影响。当建立两个组成部分(轨迹形状和动力学)的生物运动编码模型来表示一个练习时,减少嵌入在原始数据中的噪声的影响将很重要,因为基础模型可能对噪声非常敏感。在本文中,我们检查并比较了一些常用的过滤器,即最小二乘高斯过滤器,Savitzky-Golay过滤器和最优Kalman过滤器,以及从Microsoft Kinect©收集的四组真实数据,并断言Savitzky-Golay过滤器是建立人类运动表示的基础模型时最好的方法。

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