IEEE Trans Neural Syst Rehabil Eng. 2020 Dec;28(12):3158-3166. doi: 10.1109/TNSRE.2020.3044113. Epub 2021 Jan 28.
In the early 2000s, data from the latest World Health Organization estimates paint a picture where one-seventh of the world population needs at least one assistive device. Fortunately, these years are also characterized by a marked technological drive which takes the name of the Fourth Industrial Revolution. In this terrain, robotics is making its way through more and more aspects of everyday life, and robotics-based assistance/rehabilitation is considered one of the most encouraging applications. Providing high-intensity rehabilitation sessions or home assistance through low-cost robotic devices can be indeed an effective solution to democratize services otherwise not accessible to everyone. However, the identification of an intuitive and reliable real-time control system does arise as one of the critical issues to unravel for this technology in order to land in homes or clinics. Intention recognition techniques from surface ElectroMyoGraphic (sEMG) signals are referred to as one of the main ways-to-go in literature. Nevertheless, even if widely studied, the implementation of such procedures to real-case scenarios is still rarely addressed. In a previous work, the development and implementation of a novel sEMG-based classification strategy to control a fully-wearable Hand Exoskeleton System (HES) have been qualitatively assessed by the authors. This paper aims to furtherly demonstrate the validity of such a classification strategy by giving quantitative evidence about the favourable comparison to some of the standard machine-learning-based methods. Real-time action, computational lightness, and suitability to embedded electronics will emerge as the major characteristics of all the investigated techniques.
在 21 世纪初,世界卫生组织的最新数据描绘了这样一幅画面:世界上有七分之一的人口至少需要一种辅助设备。幸运的是,这些年也是一个显著的技术推动的特点,被称为第四次工业革命。在这一领域,机器人技术正在越来越多的日常生活中得到应用,基于机器人的辅助/康复被认为是最有前途的应用之一。通过低成本的机器人设备提供高强度的康复治疗或家庭援助确实可以有效地解决服务普及化的问题,否则这些服务无法普及到每个人。然而,为了使这项技术能够进入家庭或诊所,识别直观可靠的实时控制系统确实是需要解决的关键问题之一。从表面肌电信号(sEMG)中识别意图被认为是文献中的主要方法之一。然而,即使这些方法得到了广泛的研究,它们在实际情况下的实施仍然很少被涉及。在之前的工作中,作者对一种基于 sEMG 的新型分类策略的开发和实施进行了定性评估,用于控制全穿戴式手部外骨骼系统(HES)。本文旨在通过与一些基于标准机器学习的方法进行有利的比较,为这种分类策略提供定量证据,进一步证明其有效性。实时操作、计算轻便性和对嵌入式电子设备的适用性将成为所有研究技术的主要特点。