Multisensor Systems and Robotics Group (SiMuR), Department of Electrical, Electronic, Computer and Systems Engineering, University of Oviedo, C/ Pedro Puig Adam, 33203 Gijón, Spain.
Sensors (Basel). 2018 Dec 15;18(12):4441. doi: 10.3390/s18124441.
In human motion science, accelerometers are used as linear distance sensors by attaching them to moving body parts, with their measurement axes its measurement axis aligned in the direction of motion. When double integrating the raw sensor data, multiple error sources are also integrated integrated as well, producing inaccuracies in the final position estimation which increases fast with the integration time. In this paper, we make a systematic and experimental comparison of different methods for position estimation, with different sensors and in different motion conditions. The objective is to correlate practical factors that appear in real applications, such as motion mean velocity, path length, calibration method, or accelerometer noise level, with the quality of the estimation. The results confirm that it is possible to use accelerometers to estimate short linear displacements of the body with a typical error of around 4.5% in the general conditions tested in this study. However, they also show that the motion kinematic conditions can be a key factor in the performance of this estimation, as the dynamic response of the accelerometer can affect the final results. The study lays out the basis for a better design of distance estimations, which are useful in a wide range of ambulatory human motion monitoring applications.
在人类运动科学中,通过将加速度计附着在运动的身体部位上,并将其测量轴与运动方向对齐,可以将其用作线性距离传感器。当对原始传感器数据进行双重积分时,也会同时积分多个误差源,从而导致最终位置估计产生误差,并且随着积分时间的增加,误差会迅速增加。本文系统地比较了不同方法在不同传感器和运动条件下的位置估计效果。目的是将实际应用中出现的实际因素(例如运动平均速度,路径长度,校准方法或加速度计噪声水平)与估计的质量相关联。结果证实,在本研究中测试的一般条件下,使用加速度计可以估计身体的短线性位移,其典型误差约为 4.5%。但是,它们也表明运动运动学条件可能是该估计性能的关键因素,因为加速度计的动态响应会影响最终结果。该研究为距离估计的更好设计奠定了基础,这在广泛的人体运动监测应用中非常有用。