Department of Computer Engineering, Computer Networks Research Laboratory (NETLAB), Bogazici University, 34342 Istanbul, Turkey.
65+ Elder Rights Association, 34337 Istanbul, Turkey.
Sensors (Basel). 2017 Apr 11;17(4):825. doi: 10.3390/s17040825.
The gold standards for gait analysis are instrumented walkways and marker-based motion capture systems, which require costly infrastructure and are only available in hospitals and specialized gait clinics. Even though the completeness and the accuracy of these systems are unquestionable, a mobile and pervasive gait analysis alternative suitable for non-hospital settings is a clinical necessity. Using inertial sensors for gait analysis has been well explored in the literature with promising results. However, the majority of the existing work does not consider realistic conditions where data collection and sensor placement imperfections are imminent. Moreover, some of the underlying assumptions of the existing work are not compatible with pathological gait, decreasing the accuracy. To overcome these challenges, we propose a foot-mounted inertial sensor-based gait analysis system that extends the well-established zero-velocity update and Kalman filtering methodology. Our system copes with various cases of data collection difficulties and relaxes some of the assumptions invalid for pathological gait (e.g., the assumption of observing a heel strike during a gait cycle). The system is able to extract a rich set of standard gait metrics, including stride length, cadence, cycle time, stance time, swing time, stance ratio, speed, maximum/minimum clearance and turning rate. We validated the spatio-temporal accuracy of the proposed system by comparing the stride length and swing time output with an IR depth-camera-based reference system on a dataset comprised of 22 subjects. Furthermore, to highlight the clinical applicability of the system, we present a clinical discussion of the extracted metrics on a disjoint dataset of 17 subjects with various neurological conditions.
步态分析的金标准是仪器化步道和基于标记的运动捕捉系统,这些系统需要昂贵的基础设施,并且仅在医院和专门的步态诊所中可用。尽管这些系统的完整性和准确性是毋庸置疑的,但对于非医院环境,需要一种适合的移动且普及的步态分析替代方案,这是临床的必要条件。在文献中,使用惯性传感器进行步态分析已经得到了很好的探索,并且取得了有希望的结果。然而,现有的大多数工作都没有考虑到数据收集和传感器放置不完善的现实情况。此外,现有工作的一些基本假设与病理步态不兼容,降低了准确性。为了克服这些挑战,我们提出了一种基于足部安装的惯性传感器的步态分析系统,该系统扩展了成熟的零速度更新和卡尔曼滤波方法。我们的系统可以处理各种数据收集困难的情况,并放宽了一些对病理步态无效的假设(例如,在步态周期中观察到脚跟撞击的假设)。该系统能够提取丰富的标准步态指标,包括步长、步频、周期时间、站立时间、摆动时间、站立比例、速度、最大/最小离地间隙和转弯率。我们通过将步长和摆动时间输出与由 22 个对象组成的数据集上的基于 IR 深度相机的参考系统进行比较,验证了所提出系统的时空准确性。此外,为了突出系统的临床适用性,我们在由 17 个具有各种神经状况的对象组成的不相交数据集中,对提取的指标进行了临床讨论。