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意图识别与感知反馈研究:基于规则触觉设备的肌电分类与本体感受反馈控制的机器人假肢手。

Study on Intention Recognition and Sensory Feedback: Control of Robotic Prosthetic Hand Through EMG Classification and Proprioceptive Feedback Using Rule-based Haptic Device.

出版信息

IEEE Trans Haptics. 2022 Jul-Sep;15(3):560-571. doi: 10.1109/TOH.2022.3177714. Epub 2022 Sep 27.

Abstract

In this study, for intention recognition, a convolutional neural network (CNN) classification model using the electromyography (EMG) signals acquired from the subject was developed. For sensory feedback, a rule-based wearable proprioceptive feedback haptic device, a new method for providing feedback on the grip information of a robotic prosthesis was proposed. Then, we constructed a closed-loop integrated system consisting of the CNN-based EMG classification model, the proposed haptic device, and a robotic prosthetic hand. Finally, an experiment was conducted in which the closed-loop integrated system was used to simultaneously evaluate the performance of the intention recognition and sensory feedback for a subject. The trained EMG classification model and the proposed haptic device showed the intention recognition and sensory feedback performance with 97% or higher accuracy in 10 grip states. Although some errors occurred in the intention recognition using the EMG classification model, in general, the grip intention of the subject was grasped relatively accurately, and the grip pattern was also accurately transmitted to the subject by the proposed haptic device. The integrated system which consists of the intention recognition using the CNN-based EMG classification model and the sensory feedback using the proposed haptic device is expected to be utilized for robotic prosthetic hand prosthesis control of limb loss participants.

摘要

在这项研究中,为了进行意图识别,开发了一种使用从受试者获取的肌电图 (EMG) 信号的卷积神经网络 (CNN) 分类模型。对于感觉反馈,提出了一种基于规则的可穿戴本体感觉反馈触觉设备,这是一种提供机器人假肢握持信息反馈的新方法。然后,我们构建了一个由基于 CNN 的 EMG 分类模型、提出的触觉设备和机器人假肢手组成的闭环集成系统。最后,进行了一项实验,其中闭环集成系统用于同时评估受试者的意图识别和感觉反馈性能。在 10 种握持状态下,经过训练的 EMG 分类模型和提出的触觉设备表现出了 97%或更高的意图识别和感觉反馈性能。尽管 EMG 分类模型的意图识别中出现了一些错误,但总体而言,受试者的握持意图被相对准确地捕捉到,并且提出的触觉设备也准确地将握持模式传输给了受试者。该闭环集成系统由基于 CNN 的 EMG 分类模型的意图识别和提出的触觉设备的感觉反馈组成,有望用于肢体缺失参与者的机器人假肢手控制。

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