Department of Mathematics Jean Leray, UMR CNRS 6629, Nantes University, 44322 Nantes, France.
UmanIT, 13 Place Sophie Trébuchet, 44000 Nantes, France.
Sensors (Basel). 2022 May 7;22(9):3555. doi: 10.3390/s22093555.
Solutions to assess walking deficiencies are widespread and largely used in healthcare. Wearable sensors are particularly appealing, as they offer the possibility to monitor gait in everyday life, outside a facility in which the context of evaluation biases the measure. While some wearable sensors are powerful enough to integrate complex walking activity recognition models, non-invasive lightweight sensors do not always have the computing or memory capacity to run them. In this paper, we propose a walking activity recognition model that offers a viable solution to this problem for any wearable sensors that measure rotational motion of body parts. Specifically, the model was trained and tuned using data collected by a motion sensor in the form of a unit quaternion time series recording the hip rotation over time. This time series was then transformed into a real-valued time series of geodesic distances between consecutive quaternions. Moving average and moving standard deviation versions of this time series were fed to standard machine learning classification algorithms. To compare the different models, we used metrics to assess classification performance (precision and accuracy) while maintaining the detection prevalence at the level of the prevalence of walking activities in the data, as well as metrics to assess change point detection capability and computation time. Our results suggest that the walking activity recognition model with a decision tree classifier yields the best compromise in terms of precision and computation time. The sensor that was used had purposely low computing and memory capacity so that reported performances can be thought of as the lower bounds of what can be achieved. Walking activity recognition is performed online, i.e., on-the-fly, which further extends the range of applicability of our model to sensors with very low memory capacity.
评估步行缺陷的解决方案已经广泛应用于医疗保健领域。可穿戴传感器特别有吸引力,因为它们可以在日常生活中监测步态,而无需在评估环境中,评估环境会影响测量结果。虽然一些可穿戴传感器具有足够强大的功能,可以集成复杂的步行活动识别模型,但非侵入性的轻量级传感器并不总是具有运行这些模型的计算能力或内存容量。在本文中,我们提出了一种步行活动识别模型,为任何测量身体部位旋转运动的可穿戴传感器提供了一种可行的解决方案。具体来说,该模型使用运动传感器收集的数据进行训练和调整,这些数据以单位四元数时间序列的形式记录髋关节随时间的旋转。然后,将该时间序列转换为连续四元数之间的测地线距离的实值时间序列。该时间序列的移动平均值和移动标准偏差版本被馈送到标准机器学习分类算法中。为了比较不同的模型,我们使用了评估分类性能的指标(精度和准确性),同时保持检测流行率处于数据中步行活动的流行率水平,以及评估变化点检测能力和计算时间的指标。我们的结果表明,具有决策树分类器的步行活动识别模型在精度和计算时间方面具有最佳的折衷。所使用的传感器具有故意低的计算和内存容量,因此报告的性能可以被认为是可以实现的下限。步行活动识别是在线进行的,即实时进行的,这进一步扩展了我们的模型在具有极低内存容量的传感器中的应用范围。