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Toward robust and platform-agnostic gait analysis

机译:朝向稳健和平台 - 不可知的步态分析

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摘要

Biometric gait analysis using wearable sensors offers an objective and quantitative method for gait parameter extraction. However, current techniques are constrained to specific platform parameters, and hence significantly lack generality, scalability and sustainability. In this paper, we propose a platform-independent and self-adaptive approach for gait cycle detection and cadence estimation. Our algorithm utilizes physical kinematic properties and cyclic patterns of foot acceleration signals to automatically adjust internal parameters of the algorithm. As a result, the proposed approach is robust to noise and changes in sensor platform parameters such as sampling rate and sensor resolution. For the evaluation purpose, we use acceleration signals collected from 16 subjects in a clinical setting to examine the accuracy and robustness of the proposed algorithm. The results show that our approach achieves a precision above 98% and a recall above 95% in stride detection, and an average accuracy of 98% in cadence estimation under various uncertainty conditions such as noisy signals and changes in sampling frequency and sensor resolution.
机译:使用可穿戴传感器的生物识别步态分析提供了一种物理和定量的步态参数提取方法。然而,当前技术受到特定平台参数的约束,因此显着缺乏普遍性,可扩展性和可持续性。在本文中,我们提出了一种独立于平台和自适应方法,用于步态周期检测和节奏估计。我们的算法利用物理运动学特性和脚踏加速信号的循环模式来自动调整算法的内部参数。结果,该方法对噪声和传感器平台参数的变化是稳健的,例如采样率和传感器分辨率。对于评估目的,我们使用从临床环境中的16个受试者收集的加速信号来检查所提出的算法的精度和稳健性。结果表明,我们的方法在98%以上的精度和高于95%的步伐检测的召回,在各种不确定性条件下的节奏估算中的平均精度为98%,以及采样频率和传感器分辨率的变化。

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