Motion Intention Estimation of Finger Motions with Spatial Variations of HD EMG Signals

D. Bandara, He Chongzaijiao, J. Arata
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Abstract

Estimation of motion intention of human hand has many applications in robotics and other human centred areas. Especially with wearable robotic applications biosignal based estimation of human hand motions are widely used. However, based on the construction of the muscles for finger motions, and the higher number of independent motions of the human hand, estimation of finger motions accurately and effectively remains a challenge with current techniques. On the other hand, high density electromyography (HDEMG), has the capability to provide a high resolution spatial activation image of the muscle group under its measurement. In this study HDEMG signals were used to estimate the finger motions, by using the spatial variations of the surface HDEMG signals during the different finger motions. Thus, features of Gabor filters and error-correcting output codes method was used to classify six motion classes of finger motions. Results showed the proposed methodology can successfully classify the motions with a higher accuracy, using the spatial information contained in HDEMG data.
基于高清肌电信号空间变化的手指运动意图估计
手部运动意图的估计在机器人和其他以人为中心的领域有许多应用。特别是在可穿戴机器人应用中,基于生物信号的手部运动估计得到了广泛的应用。然而,基于手指运动肌肉的结构,以及人手的独立运动数量较多,准确有效地估计手指运动仍然是当前技术的一个挑战。另一方面,高密度肌电图(HDEMG)能够提供其测量下肌肉群的高分辨率空间激活图像。在本研究中,利用不同手指运动过程中表面HDEMG信号的空间变化,利用HDEMG信号来估计手指的运动。因此,利用Gabor滤波器的特征和纠错输出编码方法对手指运动进行了六类运动分类。结果表明,该方法能够有效地利用HDEMG数据中的空间信息对运动进行分类,具有较高的分类精度。
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