优化可穿戴外骨骼中风幸存者的活动识别

Fanny Recher, O. Baños, C. Nikamp, L. Schaake, C. Baten, J. Buurke
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引用次数: 3

摘要

中风影响活动能力,从而影响这种脑血管疾病患者的生活质量。部分研究集中在外骨骼的开发上,为使用者的关节提供支持,以改善他们的步态,帮助他们在日常生活中恢复独立。一个例子是Xosoft,这是一种软模块化外骨骼,目前正在欧洲同名项目的框架下开发。除了辅助功能之外,软外骨骼还将通过分析安装在外骨骼上的惯性传感器产生的运动学数据来提供治疗反馈。然而,在进行这些分析之前,必须知道用户执行的活动,以便有足够的行为上下文来解释数据。实现了基于机器学习算法的四个活动识别链,以自动识别用户执行的活动的性质。为了与它们正在使用的应用(即可穿戴外骨骼)保持一致,重点是通过最小化配置来降低能耗,并使这些算法具有鲁棒性。在这项研究中,从11名中风幸存者进行日常生活活动时收集运动传感器数据。根据这些数据,我们评估了传感器约简和位置对四种算法性能的影响。此外,我们还评估了它们对传感器故障的抵抗力。结果表明,在所有四个活动识别链中,对于每个患者,减少传感器是可能的,直到一定的限制,超过这个限制,必须仔细选择身体上的位置,以保持相同的表现结果。特别是,这项研究显示了避免下肢和足部的位置以及放置在中风患者患病一侧的传感器的好处。研究还表明,当在分类过程的最后融合来自不同传感器的数据时,可以给活动识别链带来鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Activity Recognition in Stroke Survivors for Wearable Exoskeletons
Stroke affects the mobility, hence the quality of life of people victim of this cerebrovascular disease. Part of research has been focusing on the development of exoskeletons bringing support to the user's joints to improve their gait and to help regaining independence in daily life. One example is Xosoft, a soft modular exoskeleton currently being developed in the framework of the European project of the same name. On top of its assistive properties, the soft exoskeleton will provide therapeutic feedback via the analysis of kinematic data stemming from inertial sensors mounted on the exoskeleton. Prior to these analyses however, the activities performed by the user must be known in order to have sufficient behavioral context to interpret the data. Four activity recognition chains, based on machine learning algorithm, were implemented to automatically identify the nature of the activities performed by the user. To be consistent with the application they are being used for (i.e. wearable exoskeleton), focus was made on reducing energy consumption by configuration minimization and bringing robustness to these algorithms. In this study, movement sensor data was collected from eleven stroke survivors while performing daily-life activities. From this data, we evaluated the influence of sensor reduction and position on the performances of the four algorithms. Moreover, we evaluated their resistance to sensor failures. Results show that in all four activity recognition chains, and for each patient, reduction of sensors is possible until a certain limit beyond which the position on the body has to be carefully chosen in order to maintain the same performance results. In particular, the study shows the benefits of avoiding lower legs and foot locations as well as the sensors positioned on the affected side of the stroke patient. It also shows that robustness can be brought to the activity recognition chain when the data stemming from the different sensors are fused at the very end of the classification process.
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