Kelly M F, Parker P A, Scott R N
Department of Electrical Engineering, University of New Brunswick, Fredericton, Canada.
IEEE Trans Biomed Eng. 1990 Mar;37(3):221-30. doi: 10.1109/10.52324.
Two neural network implementations are applied to myoelectric signal (MES) analysis tasks. The motivation behind this research is to explore more reliable methods of deriving control for multidegree of freedom arm prostheses. A discrete Hopfield network is used to calculate the time series parameters for a moving average MES model. It is demonstrated that the Hopfield network is capable of generating the same time series parameters as those produced by the conventional sequential least squares (SLS) algorithm. Furthermore, it can be extended to applications utilizing larger amounts of data, and possibly to higher order time series models, without significant degradation in computational efficiency. The second neural network implementation involves using a two-layer perceptron for classifying a single site MES based on two features, specifically the first time series parameter, and the signal power. Using these features, the perceptron is trained to distinguish between four separate arm functions. The two-dimensional decision boundaries used by the perceptron classifier are delineated. It is also demonstrated that the perceptron is able to rapidly compensate for variations when new data are incorporated into the training set. This adaptive quality suggests that perceptrons may provide a useful tool for future MES analysis.
两种神经网络实现方法被应用于肌电信号(MES)分析任务。本研究的动机是探索更可靠的方法来推导多自由度手臂假肢的控制。一个离散霍普菲尔德网络用于计算移动平均MES模型的时间序列参数。结果表明,霍普菲尔德网络能够生成与传统序贯最小二乘法(SLS)算法产生的相同的时间序列参数。此外,它可以扩展到利用大量数据的应用中,甚至可能扩展到高阶时间序列模型,而计算效率不会有显著下降。第二种神经网络实现方法是使用一个两层感知器,基于两个特征,即第一个时间序列参数和信号功率,对单个部位的MES进行分类。利用这些特征,感知器被训练来区分四种不同的手臂功能。画出了感知器分类器使用的二维决策边界。还表明,当新数据被纳入训练集时,感知器能够快速补偿变化。这种自适应特性表明,感知器可能为未来的MES分析提供一个有用的工具。