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Tremor frequency based filter to extract voluntary movement of patients with essential tremor

机译:基于震颤的频率滤波器提取必要震颤患者自主运动

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Essential Tremor (ET) refers to involuntary oscillations of a part of the body. ET patients face serious difficulties in performing daily living activities. Our motivation is to develop a system that can enable ET patients to perform their daily living activities; hence we have been developing a myoelectric controlled exoskeletal robot for ET patients. However, the EMG signal of ET patients contains not only voluntary movement signals but also tremor signals. Accordingly, to control this robot correctly, tremor signals must be removed from the EMG signal of ET patients. To date, we have been developing a filter to remove tremor signals, which has been largely effective in this. However, tremor signals are generated both while voluntary movement is being performed and while a posture is being maintained, and the filter ended up attenuating both these signals. But, to control this robot accurately, the signal generated during performance of voluntary movement is expected not to be attenuated. Therefore, in this paper, we propose a method that attenuates only tremor signals arising during maintenance of a posture. To accomplish this objective, we focus on the frequency of tremor signals. From the experiment, we confirmed the characteristic that the frequency of tremor signals changed depending on the state of the patient's movement. We then used frequency as a switch to activate the previously proposed filter by setting a threshold. As an evaluation, signals processed by the proposed method were input to a time delay neural network. The proposed method succeeded in partly improving recognition due to reduction of attenuation during performance of voluntary movement. However, the proposed method failed recognition in cases where the frequency of tremor signals varied widely. As a future work we will review the method to calculate the frequency of tremor signals and improve recognition.
机译:基本震颤(ET)是指身体一部分的非自愿振荡。患者在执行日常生活活动方面面临严重困难。我们的动机是开发一个可以使患者能够进行日常生活活动的系统;因此,我们已经为患者开发了一种肌电控制的外骨骼机器人。然而,ET患者的EMG信号不仅包含自愿运动信号,还包含震颤信号。因此,要正确控制该机器人,必须从ET患者的EMG信号中取出震颤信号。迄今为止,我们一直在开发过滤器以删除震颤信号,这在很大程度上是有效的。然而,在执行自愿运动并且维护姿势时,产生颤动信号,并且过滤器最终衰减了这些信号。但是,为了准确控制该机器人,预期在自愿运动的性能期间产生的信号不衰减。因此,在本文中,我们提出了一种衰减在维护姿势期间产生的震颤信号的方法。为了实现这一目标,我们专注于震颤信号的频率。从实验来看,我们确认了震颤信号的频率根据患者运动状态而改变的特征。然后,我们使用频率作为开关来通过设置阈值来激活先前提出的过滤器。作为评估,由所提出的方法处理的信号被输入到时间延迟神经网络。由于在志愿运动的表现期间,所提出的方法成功地提高了识别。然而,在诸如震颤信号的频率范围广泛变化的情况下,所提出的方法识别失败。作为未来的工作,我们将审查计算震颤信号频率并提高识别的方法。

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