On the combined use of Electromyogram and Accelerometer in Lower Limb Motion Recognition

Hardik Gupta, A. Anil, Rinki Gupta
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引用次数: 4

Abstract

Analysis of motion of lower limbs is required in different fields including health monitoring, robotics, rehabilitation sciences, biometrics and consumer electronics. Motion sensors, such as accelerometers are prominently used in such analysis since they are non-invasive and are readily available in low cost. However, it is evident from literature that fusion of accelerometer data with those recorded from other types of sensors improves the recognition of human activities. In this paper, the use of surface electromyogram (sEMG) along with accelerometers is explored to recognize nine activities of daily living. The effect of the placement of the sEMG sensor on two of the most popularly reported muscle locations on leg, namely soleus and tibialis anterior, is studied in more detail to determine the appropriate positioning of such sensors for human activity recognition and hence, reduce the number of sensors that are required for classification. It is demonstrated using actual data that the use of sEMG along with accelerometer improves the overall classification accuracy to 98.2% from around 94.5%, which is obtained if only accelerometer is used. In particular, the classification of stationary activities is improved with the inclusion of sEMG. Moreover, the placement of the sEMG sensor on soleus muscle aids the classification more as compared to tibialis anterior muscle.
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肌电图与加速度计在下肢运动识别中的联合应用研究
在健康监测、机器人、康复科学、生物识别和消费电子等不同领域都需要对下肢运动进行分析。运动传感器,如加速度计,主要用于这种分析,因为它们是非侵入性的,并且成本低。然而,从文献中可以明显看出,将加速度计数据与其他类型传感器记录的数据融合可以提高对人类活动的识别。在本文中,使用表面肌电图(sEMG)和加速度计探索识别九种日常生活活动。我们更详细地研究了表面肌电信号传感器在腿上两个最常报道的肌肉位置(即比目鱼肌和胫骨前肌)上的放置效果,以确定这些传感器在人体活动识别中的适当位置,从而减少分类所需的传感器数量。使用实际数据证明,将表面肌电信号与加速度计结合使用可以将总体分类精度从仅使用加速度计时的94.5%提高到98.2%。特别是,固定活动的分类随着表面肌电信号的加入而得到改进。此外,与胫骨前肌相比,将表面肌电信号传感器放置在比目鱼肌上更有助于分类。
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