Escamilla-Nunez Rafael, Aguilar Luis, Ng Gabriel, Gouda Aliaa, Andrysek Jan
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:4487-4490. doi: 10.1109/EMBC44109.2020.9176085.
Wearable sensors have been investigated for the purpose of gait analysis, namely gait event detection. Many types of algorithms have been developed specifically using inertial sensor data for detecting gait events. Though much attention has turned toward machine learning algorithms, most of these approaches suffer from large computational requirements and are not yet suitable for real-time applications such as in prostheses or for feedback control. Current rules-based algorithms for real-time use often require fusion of multiple sensor signals to achieve high accuracy, thus increasing complexity and decreasing usability of the instrument. We present our results of a novel, rules-based algorithm using a single accelerometer signal from the foot to reliably detect heel-strike and toe-off events. Using the derivative of the raw accelerometer signal and applying an optimizer and windowing approach, high performance was achieved with a sensitivity and specificity of 94.32% and 94.70% respectively, and a timing error of 6.52 ± 22.37 ms, including trials involving multiple speed transitions. This would enable development of a compact wearable system for robust gait analysis in real-world settings, providing key insights into gait quality with the capability for real-time system control.
为了进行步态分析,即步态事件检测,人们对可穿戴传感器进行了研究。已经开发了许多类型的算法,专门使用惯性传感器数据来检测步态事件。尽管人们的注意力大多转向了机器学习算法,但这些方法大多存在计算需求大的问题,还不适用于诸如假肢或反馈控制等实时应用。当前用于实时使用的基于规则的算法通常需要融合多个传感器信号以实现高精度,从而增加了仪器的复杂性并降低了其可用性。我们展示了一种新颖的基于规则的算法的结果,该算法使用来自足部的单个加速度计信号来可靠地检测足跟触地和足趾离地事件。通过使用原始加速度计信号的导数,并应用优化器和加窗方法,实现了高性能,灵敏度和特异性分别为94.32%和94.70%,定时误差为6.52±22.37毫秒,包括涉及多种速度转换的试验。这将能够开发一种紧凑的可穿戴系统,用于在现实环境中进行稳健的步态分析,为步态质量提供关键见解,并具备实时系统控制能力。