Kadiwal Sanobar, Unwala Ishaq
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:5315-5318. doi: 10.1109/EMBC.2016.7591927.
Recently, rehabilitation treadmills are designed for helping injured persons such as stroke patients and injury athletes in the process of physical therapy. By monitoring the changes of paces and gaits, one can estimate the progress of rehabilitation. At present, most devices that can estimate paces and gaits are wearable and/or expensive. This paper presents an inexpensive, non-intrusive wireless binary sensor system for pace estimation and lower-extreme gait recognition with low data throughput and high energy efficiency. The asymmetric but periodic movement of injured person allows the study of pace and gait. The pace estimation is achieved by using autocorrelation function. The gait information is represented by three features (1) temporal correlation, (2) marginal density (intersection probability), and (3) spatial correlation from binary data steam. Experimental results shows that our system can estimate the pace of walking or running with the accuracy of 97.7%. By using only three features, abnormal gaits can also be recognized.
最近,康复跑步机被设计用于帮助中风患者和受伤运动员等伤者进行物理治疗。通过监测步幅和步态的变化,可以评估康复进展。目前,大多数能够估计步幅和步态的设备都是可穿戴的和/或昂贵的。本文提出了一种廉价的、非侵入式无线二进制传感器系统,用于低数据吞吐量和高能效的步幅估计和下肢步态识别。伤者不对称但周期性的运动有助于对步幅和步态进行研究。步幅估计通过自相关函数实现。步态信息由二进制数据流的三个特征表示:(1)时间相关性,(2)边际密度(交叉概率),以及(3)空间相关性。实验结果表明,我们的系统能够以97.7%的准确率估计行走或跑步的步幅。仅使用这三个特征,也能够识别异常步态。