Novak Domen, Goršič Maja, Podobnik Janez, Munih Marko
Sensory-Motor Systems Lab, ETH Zurich, Tannenstrasse 1, CH-8092 Zurich, Switzerland.
Laboratory of Robotics, University of Ljubljana, Tržaška cesta 25, SI-1000 Ljubljana, Slovenia.
Sensors (Basel). 2014 Oct 10;14(10):18800-22. doi: 10.3390/s141018800.
Previous studies have presented algorithms for detection of turns during gait using wearable sensors, but those algorithms were not built for real-time use. This paper therefore investigates the optimal approach for real-time detection of planned turns during gait using wearable inertial measurement units. Several different sensor positions (head, back and legs) and three different detection criteria (orientation, angular velocity and both) are compared with regard to their ability to correctly detect turn onset. Furthermore, the different sensor positions are compared with regard to their ability to predict the turn direction and amplitude. The evaluation was performed on ten healthy subjects who performed left/right turns at three amplitudes (22, 45 and 90 degrees). Results showed that turn onset can be most accurately detected with sensors on the back and using a combination of orientation and angular velocity. The same setup also gives the best prediction of turn direction and amplitude. Preliminary measurements with a single amputee were also performed and highlighted important differences such as slower turning that need to be taken into account.
先前的研究已经提出了使用可穿戴传感器检测步态转弯的算法,但这些算法并非为实时使用而构建。因此,本文研究了使用可穿戴惯性测量单元实时检测步态中计划转弯的最佳方法。比较了几个不同的传感器位置(头部、背部和腿部)以及三种不同的检测标准(方向、角速度以及两者结合)正确检测转弯起始的能力。此外,还比较了不同传感器位置预测转弯方向和幅度的能力。对10名健康受试者进行了评估,他们以三种幅度(22度、45度和90度)进行左右转弯。结果表明,使用背部的传感器并结合方向和角速度能够最准确地检测转弯起始。相同的设置对转弯方向和幅度的预测也最佳。还对一名截肢者进行了初步测量,突出了一些需要考虑的重要差异,比如转弯较慢。