IEEE Trans Neural Syst Rehabil Eng. 2018 Oct;26(10):1945-1956. doi: 10.1109/TNSRE.2018.2868094.
A benchmark and time-effective computational method is needed to assess human gait events in real-life walking situations using few sensors to be easily reproducible. This paper fosters a reliable gait event detection system that can operate at diverse gait speeds and on diverse real-life terrains by detecting several gait events in real time. This detection only relies on the foot angular velocity measured by a wearable gyroscope mounted in the foot to facilitate its integration for daily and repeated use. To operate as a benchmark tool, the proposed detection system endows an adaptive computational method by applying a finite-state machine based on heuristic decision rules dependent on adaptive thresholds. Repeated measurements from 11 healthy subjects (28.27 ± 4.17 years) were acquired in controlled situations through a treadmill at different speeds (from 1.5 to 4.5 km/h) and slopes (from 0% to 10%). This validation also includes heterogeneous gait patterns from nine healthy subjects (27 ± 7.35 years) monitored at three self-selected paces (from 1 ± 0.2 to 2 ± 0.18 m/s) during forward walking on flat, rough, and inclined surfaces and climbing staircases. The proposed method was significantly more accurate ( ) and time effective (< 30.53 ± 9.88 ms, ) in a benchmarking analysis with a state-of-the-art method during 5657 steps. Heel strike was the gait event most accurately detected under controlled (accuracy of 100%) and real-life situations (accuracy > 96.98%). Misdetection was more pronounced in middle mid swing (accuracy > 90.12%). The lower computational load, together with an improved performance, makes this detection system suitable for quantitative benchmarking in the locomotor rehabilitation field.
需要一种基准和高效的计算方法,以便使用少量传感器在真实行走情况下评估人体步态事件,且易于重现。本文提出了一种可靠的步态事件检测系统,该系统可以通过实时检测多个步态事件,在不同的步态速度和不同的真实地形上运行。这种检测仅依赖于安装在脚部的可穿戴陀螺仪测量的脚部角速度,以方便其集成,实现日常和重复使用。为了作为基准工具运行,所提出的检测系统通过应用基于依赖自适应阈值的启发式决策规则的有限状态机为其赋予自适应计算方法。从 11 名健康受试者(28.27±4.17 岁)在不同速度(1.5 至 4.5 公里/小时)和坡度(0%至 10%)的跑步机上在受控条件下进行了重复测量。该验证还包括来自 9 名健康受试者(27±7.35 岁)的异质步态模式,在平地上、粗糙表面上和倾斜表面上以及爬楼梯时以三个自主选择的速度(1±0.2 至 2±0.18 米/秒)向前行走时进行了监测。在与最先进方法的 5657 步基准分析中,该方法在准确性()和时间效率(<30.53±9.88 毫秒,)方面具有显著优势。在受控(准确率 100%)和真实生活情况下,脚跟撞击是检测最准确的步态事件(准确率>96.98%)。在中间中间摆动中,误检更为明显(准确率>90.12%)。较低的计算负荷以及性能的提高,使得该检测系统适合在运动康复领域进行定量基准测试。