一种基于遗传算法和小波变换特征的新型假手控制方法

Mohammad Karimi, H. Pourghassem, G. Shahgholian
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引用次数: 24

摘要

本文提出了一种利用遗传算法优化模式识别系统的新方法,利用高性能、高精度的人工神经网络来识别手部运动类型。为了实现这种方法,研究人员从6名受试者前臂的16个位置获得了肌电图(EMG)信号,这些受试者分为10个手部运动类别。在前臂肌电信号特征提取的第一步,利用小波变换生成小波分解树,提取小波变换系数。第二步,将肌电信号的小波包系数的标准差作为神经网络训练的特征向量。为了改进算法,采用遗传算法对算法进行优化,确定了“母小波函数”、“小波包分析分解层次”和“隐层神经元数”的最优值,形成了一个结构特别小的高速、精确的双层人工神经网络。本文提出的小尺寸网络可以识别十种手部动作,识别准确率超过98%,从实际考虑,也提高了系统的稳定性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel prosthetic hand control approach based on genetic algorithm and wavelet transform features
This paper presents a novel approach to optimize pattern recognition system using genetic algorithm (GA) to identify the type of hand motion employing artificial neural networks (ANNs) with high performance and accuracy suited for practical implementations. To achieve this approach, electromyographic (EMG) signals were obtained from sixteen locations on the forearm of six subjects in ten hand motion classes. In the first step of feature extraction of forearm EMG signals, WPT is utilized to generate a wavelet decomposition tree from which WPT coefficients are extracted. In the second step, standard deviation of wavelet packet coefficients of EMG signals is considered as the feature vector for training purposes of the ANN. To improve the algorithm, GA was employed to optimize the algorithm in such a way that to determine the best values for “mother wavelet function”, “decomposition level of wavelet packet analysis”, and “number of neurons in hidden layer” concluded in a high-speed, precise two-layer ANN with a particularly small-sized structure. This proposed network with a small size can recognize ten hand motions with recognition accuracy of over 98% and also resulted in improvement of stability and reliability of the system for practical considerations.
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