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Extracting Spatio-Temporal Information from Inertial Body Sensor Networks for Gait Speed Estimation

机译:从惯性体传感器网络中提取几种时间信息进行步态速度估计

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The fidelity of many inertial Body Sensor Network (BSN) applications depends on accurate spatio-temporal information retrieved from body-worn devices. However, there are many challenges caused by inherent sensor errors in inertial BSNs and the uncertainty of dynamic human motion in various situations, such as integration drift and mounting error. Spatial information is especially difficult to extract from inertial data. This paper presents practical methods to minimize errors caused by these challenges within the context of a case study -- gait speed estimation -- where both temporal and spatial information are crucial for accuracy. These methods include a practical calibration procedure for correcting mounting error in order to obtain more accurate spatial information and a refined human gait model for more accurate temporal information.
机译:许多惯性体传感器网络(BSN)应用的保真度取决于从体磨损器件检索的准确的时空信息。 然而,在惯性BSN中的固有传感器误差以及各种情况下的动态人体运动的不确定性,诸如集成漂移和安装误差,存在许多挑战。 空间信息特别难以从惯性数据中提取。 本文介绍了在案例研究 - 步态速度估计的背景下最小化这些挑战引起的错误的实用方法 - 时间和空间信息对于准确性至关重要。 这些方法包括用于校正安装误差的实际校准过程,以便获得更准确的空间信息和用于更准确的时间信息的精确的人体步态模型。

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