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首页> 外文期刊>Biomedical signal processing and control >Estimation of continuous and constraint-free 3 DoF wrist movements from surface electromyogram signal using kernel recursive least square tracker
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Estimation of continuous and constraint-free 3 DoF wrist movements from surface electromyogram signal using kernel recursive least square tracker

机译:使用核递归最小二乘跟踪器从表面肌电图信号估计连续且无约束的3 DoF手腕运动

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摘要

We have employed Kernel Least Square Tracker (KRLS-T), a nonlinear kernel based recursive algorithm, to estimate 3 dimensional wrist kinematics from sEMG signals of forearm muscle groups. KRLS-T combines the advantage of kernel techniques and adaptive estimation and hence has been considered for predicting 3 dimensional wrist angles from nonlinear and non-stationary sEMG. We have been able to successfully predict 6 basic and 2 dynamic, continuous and constraint-free wrist motions for 10 normal subjects in an offline mode with more than 90% accuracy. The continuous wrist motion profiles, considered here, resemble the complex and dexterous wrist motions involved in various activities of daily life. Statistical significance analysis shows that KRLS-T performs better than Kernel Ridge Regression (KRR) and a feed-forward back propagation neural network during a 10-fold cross validation stage. Subsequently, a real-life scenario has been emulated for the KRLS-T based motion predictor where 2 different trials' data are combined and given sequentially as input to the estimator. Its fast adaptation capability to the nonstationary sEMG-wrist angle relationship, as reported here, makes it a promising option for implementing intuitive prosthesis control. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们已经采用了基于最小核的递归算法Kernel Least Square Tracker(KRLS-T),从前臂肌肉群的sEMG信号估计3维腕部运动学。 KRLS-T结合了内核技术和自适应估计的优点,因此已被认为可以从非线性和非平稳sEMG预测3维腕角。在离线模式下,我们已经能够成功地预测10个正常对象的6种基本运动以及2种动态,连续和无约束的腕部运动,其准确率超过90%。在此考虑的连续腕部运动轮廓类似于日常生活中各种活动所涉及的复杂而灵巧的腕部运动。统计显着性分析表明,在10倍交叉验证阶段,KRLS-T的性能优于内核岭回归(KRR)和前馈反向传播神经网络。随后,针对基于KRLS-T的运动预测器模拟了真实场景,其中组合了2种不同试验的数据,并按顺序提供给估计器。如此处报道的,其对非平稳sEMG-腕角关系的快速适应能力使其成为实施直观假体控制的有前途的选择。 (C)2018 Elsevier Ltd.保留所有权利。

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