Pervasive Systems Group, Department of Computer Science, University of Twente, 7522 NB Enschede, The Netherlands.
Department of Clinical Sciences, Faculty of Veterinary Medicine, Utrecht University, 3584 CM Utrecht, The Netherlands.
Sensors (Basel). 2021 Jan 26;21(3):798. doi: 10.3390/s21030798.
Speed is an essential parameter in biomechanical analysis and general locomotion research. It is possible to estimate the speed using global positioning systems (GPS) or inertial measurement units (IMUs). However, GPS requires a consistent signal connection to satellites, and errors accumulate during IMU signals integration. In an attempt to overcome these issues, we have investigated the possibility of estimating the horse speed by developing machine learning (ML) models using the signals from seven body-mounted IMUs. Since motion patterns extracted from IMU signals are different between breeds and gaits, we trained the models based on data from 40 Icelandic and Franches-Montagnes horses during walk, trot, tölt, pace, and canter. In addition, we studied the estimation accuracy between IMU locations on the body (sacrum, withers, head, and limbs). The models were evaluated per gait and were compared between ML algorithms and IMU location. The model yielded the highest estimation accuracy of speed (RMSE = 0.25 m/s) within equine and most of human speed estimation literature. In conclusion, highly accurate horse speed estimation models, independent of IMU(s) location on-body and gait, were developed using ML.
速度是生物力学分析和一般运动研究的一个重要参数。可以使用全球定位系统 (GPS) 或惯性测量单元 (IMU) 来估计速度。然而,GPS 需要与卫星保持持续的信号连接,而 IMU 信号集成过程中会累积误差。为了克服这些问题,我们研究了通过使用来自七个身体安装的 IMU 的信号来开发机器学习 (ML) 模型来估计马的速度的可能性。由于 IMU 信号中提取的运动模式在品种和步态之间有所不同,因此我们根据 40 匹冰岛马和 Franches-Montagnes 马在步行、小跑、快步、踱步和跑步时的数据来训练模型。此外,我们还研究了身体上 IMU 位置(荐骨、肩峰、头部和四肢)之间的估计准确性。该模型在每个步态中的评估结果都高于马和大多数人类速度估计文献中的速度估计精度(RMSE = 0.25 m/s)。总之,使用 ML 开发了独立于身体上 IMU 位置和步态的高度精确的马速度估计模型。