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基于最小传感器数据的用户独立步态事件估计。

User Independent Estimations of Gait Events With Minimal Sensor Data.

出版信息

IEEE J Biomed Health Inform. 2021 May;25(5):1583-1590. doi: 10.1109/JBHI.2020.3028827. Epub 2021 May 11.

Abstract

GOAL

The purpose of this study was to provide an initial examination of the utility of the Beta Process - Auto Regressive - Hidden Markov Model (BP-AR-HMM) for the prior identification of gait events. A secondary objective was to determine whether the output of the model could be used for classification and prediction of locomotion states.

METHODS

In this study we utilized the output of the BP-AR-HMM to develop user-independent identification of gait events and gait classification from an idealized three-dimensional acceleration signal. The input acceleration data were collected from two walking (1.4 and 1.6 ms) and two running (2.6 and 3.0 ms) steady state speeds, and during two dynamic walk to run and run to walk transitions (1.8-2.4 and 2.4-1.8 ms) on an instrumented force treadmill.

RESULTS

The BP-AR-HMM identified 9 unique states. Of these, two states, 4 and 1, were utilized to estimate initial contact and toe off, respectively. The lead time from the first instance of state 4 to initial contact was 0.13 ± 0.02 s. Similarly, the first instance of state 1 occurred 0.14 ± 0.03 s before toe off. Two other states (3 and 7) were examined for possible utilization in a probabilistic model for the prediction of pending locomotion state transitions.

CONCLUSION

The identification of gait events prior to their occurrence by the BP-AR-HMM appears to be an approach that can minimize the quantity of sensor data in an offline approach. Furthermore, there is evidence it could also be used as a basis to build a probabilistic model to estimate locomotion transitions.

摘要

目的

本研究旨在初步检验 Beta 过程-自回归-隐马尔可夫模型(BP-AR-HMM)在步态事件的先验识别中的效用。次要目标是确定模型的输出是否可用于运动状态的分类和预测。

方法

在这项研究中,我们利用 BP-AR-HMM 的输出,从理想化的三维加速度信号中开发用户独立的步态事件识别和步态分类。输入的加速度数据是从两个步行(1.4 和 1.6 ms)和两个跑步(2.6 和 3.0 ms)稳态速度,以及在仪器化力跑步机上进行两次动态从走变跑和从跑变走的过渡(1.8-2.4 和 2.4-1.8 ms)时收集的。

结果

BP-AR-HMM 识别出 9 个独特的状态。其中,状态 4 和 1 分别用于估计初始接触和脚趾离地。从状态 4 的第一个实例到初始接触的前置时间为 0.13±0.02 s。类似地,状态 1 的第一个实例发生在脚趾离地前 0.14±0.03 s。另外两个状态(3 和 7)被检查用于可能用于预测即将发生的运动状态转换的概率模型。

结论

BP-AR-HMM 在步态事件发生之前对其进行识别,似乎是一种可以在线下方法中最小化传感器数据量的方法。此外,有证据表明,它也可以用作构建概率模型来估计运动过渡的基础。

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