论文标题
使用惯性信号自动化的移动性上下文检测
Automated Mobility Context Detection with Inertial Signals
论文作者
论文摘要
对运动功能的远程监测是健康评估的有力方法,尤其是在老年人群或受病理影响的受试者中对其行走能力产生负面影响的受试者。可穿戴传感器设备的持续开发进一步支持了这一点,这些传感器设备逐渐越来越小,更便宜且能节能。外部环境和移动性环境对步行表现有影响,因此,在远程分析步态情节时,最大的挑战之一就是能够检测发生这些情节的情况。本文的主要目的是调查对每日电机功能远程监视的上下文检测。我们旨在了解用可穿戴加速度计采样的惯性信号,提供可靠的信息以将与步态相关的活动分类为室内还是室外。我们探索了这项任务的两种不同的方法:(1)使用步态描述符和从步行剧集中采样的输入惯性信号提取的特征以及经典的机器学习算法,以及(2)将输入惯性信号作为时间序列数据和利用端到端的终端端到端的先进时间序列分类器。我们通过基于从9个健康个体收集的数据进行了一组实验,直接比较两种方法。我们的结果表明,室内/室外上下文可以从惯性数据流中成功得出。我们还观察到,时间序列分类模型比任何其他基于功能的模型都具有更好的准确性,同时保持效率和易用性。
Remote monitoring of motor functions is a powerful approach for health assessment, especially among the elderly population or among subjects affected by pathologies that negatively impact their walking capabilities. This is further supported by the continuous development of wearable sensor devices, which are getting progressively smaller, cheaper, and more energy efficient. The external environment and mobility context have an impact on walking performance, hence one of the biggest challenges when remotely analysing gait episodes is the ability to detect the context within which those episodes occurred. The primary goal of this paper is the investigation of context detection for remote monitoring of daily motor functions. We aim to understand whether inertial signals sampled with wearable accelerometers, provide reliable information to classify gait-related activities as either indoor or outdoor. We explore two different approaches to this task: (1) using gait descriptors and features extracted from the input inertial signals sampled during walking episodes, together with classic machine learning algorithms, and (2) treating the input inertial signals as time series data and leveraging end-to-end state-of-the-art time series classifiers. We directly compare the two approaches through a set of experiments based on data collected from 9 healthy individuals. Our results indicate that the indoor/outdoor context can be successfully derived from inertial data streams. We also observe that time series classification models achieve better accuracy than any other feature-based models, while preserving efficiency and ease of use.