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首页> 外文期刊>Journal of the Brazilian Society of Mechanical Sciences and Engineering >Estimation and early prediction of grip force based on sEMG signals and deep recurrent neural networks
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Estimation and early prediction of grip force based on sEMG signals and deep recurrent neural networks

机译:基于sEMG信号和深度循环神经网络的握力估计与早期预测

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摘要

Hands are used for communicating with the surrounding environment and have a complex structure that enables them to perform various tasks with their multiple degrees of freedom. Hand amputation can prevent a person from performing their daily activities. In that event, finding a suitable, fast, and reliable alternative for the missing limb can affect the lives of people who suffer from such conditions. As the most important use of the hands is to grasp objects, the purpose of this study is to accurately predict gripping force from surface electromyography (sEMG) signals during a pinch-type grip. In that regard, gripping force and sEMG signals are derived from 10 healthy subjects. Results show that for this task, recurrent networks outperform non-recurrent ones, such as a fully connected multilayer perceptron network. Gated recurrent unit and long short-term memory networks can predict the gripping force with R-squared values of 0.994 and 0.992, respectively, and a prediction rate of over 1300 predictions per second. The predominant advantage of using such frameworks is that the gripping force can be predicted straight from preprocessed sEMG signals without any form of feature extraction, not to mention the ability to predict future force values using larger prediction horizons adequately. The methods presented in this study can be used in the myoelectric control of prosthetic hands or robotic grippers.
机译:手用于与周围环境进行交流,并具有复杂的结构,使它们能够以多个自由度执行各种任务。手截肢会妨碍一个人进行日常活动。在这种情况下,为缺失的肢体找到合适、快速和可靠的替代品可能会影响患有这种疾病的人的生活。由于手最重要的用途是抓取物体,因此本研究的目的是在捏合式抓握期间根据表面肌电图 (sEMG) 信号准确预测抓握力。在这方面,抓握力和 sEMG 信号来自 10 名健康受试者。结果表明,对于这项任务,循环网络优于非循环网络,例如全连接的多层感知器网络。门控循环单元和长短期记忆网络可以分别以 0.994 和 0.992 的 R 平方值预测抓取力,预测速率超过每秒 1300 次预测。使用这种框架的主要优点是,可以直接从预处理的 sEMG 信号中预测抓取力,而无需任何形式的特征提取,更不用说能够使用更大的预测范围充分预测未来的力值。本研究中提出的方法可用于假手或机器人夹具的肌电控制。

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