基于量子神经网络的表面肌电信号滤波在机械手控制中的应用

Vaibhav Gandhi, T. Mcginnity
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引用次数: 13

摘要

本文首次研究了一种受量子力学原理启发并结合著名的薛定谔波动方程的滤波方法,用于滤波肌电信号。这种结构被称为循环量子神经网络(RQNN),可以将非平稳随机信号表征为时变波包。无监督学习规则允许RQNN捕捉输入信号的统计行为,并有助于估计嵌入在具有未知特征的噪声中的肌电信号。许多基准测试的结果表明,简单的信号,如DC、阶梯DC和嵌入高噪声的正弦信号可以被准确地滤波。采用粒子群算法选择RQNN模型参数,对简单信号进行滤波。在本文中,我们提出了RQNN滤波过程,使用启发式选择参数,将其应用于一个新的13类基于肌电图的手指运动检测系统,用于在Shadow Robotics机械手中进行仿真。结果表明,与仅使用原始肌电信号相比,RQNN肌电信号滤波在多种特征提取方法和主题中提高了分类性能。演示了机械手的有效控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum neural network based surface EMG signal filtering for control of robotic hand
A filtering methodology inspired by the principles of quantum mechanics and incorporating the well-known Schrodinger wave equation is investigated for the first time for filtering EMG signals. This architecture, referred to as a Recurrent Quantum Neural Network (RQNN) can characterize a non-stationary stochastic signal as time varying wave packets. An unsupervised learning rule allows the RQNN to capture the statistical behaviour of the input signal and facilitates estimation of an EMG signal embedded in noise with unknown characteristics. Results from a number of benchmark tests show that simple signals such as DC, staircase DC and sinusoidal signals embedded with a high level of noise can be accurately filtered. Particle swarm optimization is employed to select RQNN model parameters for filtering simple signals. In this paper, we present the RQNN filtering procedure, using heuristically selected parameters, to be applied to a new thirteen class EMG based finger movement detection system, for emulation in a Shadow Robotics robot hand. It is shown that the RQNN EMG filtering improves the classification performance compared to using only the raw EMG signals, across multiple feature extraction approaches and subjects. Effective control of the robot hand is demonstrated.
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