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Soft robotic glove system controlled with amplitude independent muscle activity detection algorithm by using single sEMG channel

机译:通过单个sEMG通道使用振幅无关的肌肉活动检测算法控制的软机器人手套系统

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Arthritis, Parkinson's disease, Cerebral Palsy, natural aging and stroke are the main causes of arm impairment for an increasing part of the population. For instance, stroke affects 15 million people annually in the world causing upper limb disability, also about 78 million arthritis cases with grasping impairment are expected yearly in US by the year of 2040. Therefore, hand robotic devices can be essential tools to help individuals afflicted with hand deficit to perform activities of daily living in addition to the possibility of restoring hand functions by home rehabilitation. In this paper, a real time muscle activity detection algorithm has been developed to control a pneumatic actuated soft robotic glove intended for patients with grasping impairment. The algorithm employs two amplitude independent and computations efficient methods to detect weak and noisy muscle activities from surface electromyography (sEMG) signal obtained by a single channel located on the forearm. These methods are the first lag autocorrelation of the normalized sEMG signal and the modified SampEn method. The algorithm is also insensitive to the spurious background spikes that may contaminate the sEMG signal and deteriorate the performance of amplitude dependent detection methods. The merging of these two methods enables the algorithm to distinguish between hand open and hand close activities by using sEMG signal collected by only one channel. The efficacy of the algorithm has been evaluated on a healthy subject wearing the soft robotic glove, where the algorithm has recognized the hand close and hand open muscle activities with high accuracy. Employing single sEMG channel with computation efficient control algorithm leads to reducing the cost and the size of the soft robotic glove system and make it more practical for utilization in daily basis.
机译:关节炎,帕金森氏病,脑瘫,自然衰老和中风是导致越来越多的人口手臂受损的主要原因。例如,世界范围内,中风每年影响1500万人,导致上肢残疾,到2040年,美国每年还将有约7800万例具有抓地力障碍的关节炎病例。因此,手动机器人设备可以成为帮助患病个体的重要工具除了可以通过家庭康复来恢复手部功能外,还可以进行手部活动。在本文中,已经开发了实时肌肉活动检测算法,以控制用于抓握障碍患者的气动软机器人手套。该算法采用两种独立于幅度的且计算效率高的方法,从位于前臂上的单个通道获得的表面肌电图(sEMG)信号中检测弱和嘈杂的肌肉活动。这些方法是归一化sEMG信号的第一滞后自相关和改进的SampEn方法。该算法对可能污染sEMG信号并恶化幅度相关检测方法的性能的杂散背景尖峰也不敏感。这两种方法的合并使算法可以通过仅使用一个通道收集的sEMG信号来区分手的张开和手的关闭。该算法的有效性已在戴着软机器人手套的健康受试者身上进行了评估,其中该算法已高度准确地识别了手的闭合和手部肌肉活动。使用具有计算效率的控制算法的单个sEMG通道可以降低软机器人手套系统的成本和尺寸,并使其在日常使用中更加实用。

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