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使用多层感知器网络和传感器融合技术的用户无关手势识别设计

Design of User-Independent Hand Gesture Recognition Using Multilayer Perceptron Networks and Sensor Fusion Techniques.

作者信息

Colli-Alfaro J Guillermo, Ibrahim Anas, Trejos Ana Luisa

出版信息

IEEE Int Conf Rehabil Robot. 2019 Jun;2019:1103-1108. doi: 10.1109/ICORR.2019.8779533.

Abstract

According to the World Health Organization, stroke is the third leading cause of disability. A common consequence of stroke is hemiparesis, which leads to the impairment of one side of the body and affects the performance of activities of daily living. It has been proven that targeting the motor impairments as early as possible while using wearable mechatronic devices as a robot assisted therapy, and letting the patient be in control of the robotic system, can improve the rehabilitation outcomes. However, despite the increased progress on control methods for wearable mechatronic devices, a need for a more natural interface that allows for better control remains. In this work, a user-independent gesture classification method based on a sensor fusion technique using surface electromyography (EMG) and an inertial measurement unit (IMU) is presented. The Myo Armband was used to extract EMG and IMU data from healthy subjects. Participants were asked to perform 10 types of gestures in 4 different arm positions while using the Myo on their dominant limb. Data obtained from 14 participants were used to classify the gestures using a Multilayer Perceptron Network. Finally, the classification algorithm was tested on 5 novel users, obtaining an average accuracy of 78.94%. These results demonstrate that by using the proposed approach, it is possible to achieve a more natural human machine interface that allows better control of wearable mechatronic devices during robot assisted therapies.

摘要

根据世界卫生组织的数据,中风是导致残疾的第三大主要原因。中风的一个常见后果是偏瘫,这会导致身体一侧受损,并影响日常生活活动的表现。事实证明,在使用可穿戴机电设备作为机器人辅助治疗手段时,尽早针对运动障碍进行治疗,并让患者控制机器人系统,可以改善康复效果。然而,尽管可穿戴机电设备的控制方法取得了越来越多的进展,但仍需要一种更自然的接口以实现更好的控制。在这项工作中,提出了一种基于传感器融合技术的用户独立手势分类方法,该技术使用表面肌电图(EMG)和惯性测量单元(IMU)。使用Myo臂带从健康受试者中提取肌电图和惯性测量单元数据。要求参与者在使用其优势肢体上的Myo时,在4种不同的手臂位置执行10种类型的手势。从14名参与者获得的数据用于使用多层感知器网络对手势进行分类。最后,在5名新用户上测试了分类算法,平均准确率达到78.94%。这些结果表明,通过使用所提出的方法,可以实现一种更自然的人机接口,从而在机器人辅助治疗期间更好地控制可穿戴机电设备。

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