拟人机器人手的肌变压器信号分类

Bolivar Núñez Montoya, Edwin Valarezo Añazco, Sara Guerrero, Mauricio Valarezo-Añazco, Daniela Espin-Ramos, Carlos Jiménez Farfán
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引用次数: 0

摘要

近年来,拟人机械手(ARH)在肌电信号处理方面采用了基于机器学习分类器的控制技术,取得了长足的发展。本作品介绍了一种用于表面肌电图(EMG)信号识别和分类的创新型多通道生物信号转换器(MuCBiT)。所提出的 MuCBiT 是一种基于全连接层和变压器架构的人工神经网络。MuCBiT 可识别和分类从贴在手臂表面的电极上感应到的 EMG 信号。MuCBiT 分类器使用收集到的十名用户的四种手势数据集进行了训练和验证。尽管数据集的规模较小,但 MuCBiT 的预测准确率达到了 86.25%,在 EMG 信号分类方面优于传统的机器学习模型和其他基于变压器的分类器。这种基于变压器的集成式手势识别技术有望为增强现实人机交互技术的发展带来显著进步,同时也凸显了假肢和人机交互技术的发展前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Myo Transformer Signal Classification for an Anthropomorphic Robotic Hand
The evolution of anthropomorphic robotic hands (ARH) in recent years has been sizable, employing control techniques based on machine learning classifiers for myoelectric signal processing. This work introduces an innovative multi-channel bio-signal transformer (MuCBiT) for surface electromyography (EMG) signal recognition and classification. The proposed MuCBiT is an artificial neural network based on fully connected layers and transformer architecture. The MuCBiT recognizes and classifies EMG signals sensed from electrodes patched over the arm’s surface. The MuCBiT classifier was trained and validated using a collected dataset of four hand gestures across ten users. Despite the smaller size of the dataset, the MuCBiT achieved a prediction accuracy of 86.25%, outperforming traditional machine learning models and other transformer-based classifiers for EMG signal classification. This integrative transformer-based gesture recognition promises notable advancements for ARH development, underscoring prospective improvements in prosthetics and human–robot interaction.
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