Electromygraphy (EMG) signal based hand gesture recognition using artificial neural network (ANN)

M. R. Ahsan, M. Ibrahimy, Othman Omran Khalifa
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引用次数: 134

Abstract

Electromyography (EMG) signal is a measure of muscles' electrical activity and usually represented as a function of time, defined in terms of amplitude, frequency and phase. This biosignal can be employed in various applications including diagnoses of neuromuscular diseases, controlling assistive devices like prosthetic/orthotic devices, controlling machines, robots, computer etc. EMG signal based reliable and efficient hand gesture identification can help to develop good human computer interface which in turn will increase the quality of life of the disabled or aged people. The purpose of this paper is to describe the process of detecting different predefined hand gestures (left, right, up and down) using artificial neural network (ANN). ANNs are particularly useful for complex pattern recognition and classification tasks. The capability of learning from examples, the ability to reproduce arbitrary non-linear functions of input, and the highly parallel and regular structure of ANNs make them especially suitable for pattern recognition tasks. The EMG pattern signatures are extracted from the signals for each movement and then ANN utilized to classify the EMG signals based on features. A back-propagation (BP) network with Levenberg-Marquardt training algorithm has been used for the detection of gesture. The conventional and most effective time and time-frequency based features (namely MAV, RMS, VAR, SD, ZC, SSC and WL) have been chosen to train the neural network.
基于肌电图信号的人工神经网络手势识别
肌电图(EMG)信号是对肌肉电活动的测量,通常表示为时间的函数,用幅度、频率和相位来定义。这种生物信号可以用于各种应用,包括神经肌肉疾病的诊断,控制辅助设备,如假肢/矫形器,控制机器,机器人,计算机等。基于肌电信号的可靠、高效的手势识别有助于开发良好的人机界面,从而提高残疾人或老年人的生活质量。本文的目的是描述使用人工神经网络(ANN)检测不同预定义手势(左、右、上、下)的过程。人工神经网络对于复杂的模式识别和分类任务特别有用。从实例中学习的能力,对输入任意非线性函数的重现能力,以及高度并行和规则的结构使人工神经网络特别适合于模式识别任务。从每个动作的信号中提取肌电模式特征,然后利用人工神经网络对肌电信号进行特征分类。基于Levenberg-Marquardt训练算法的反向传播(BP)网络被用于手势检测。选择传统的、最有效的基于时间和时间频率的特征(即MAV、RMS、VAR、SD、ZC、SSC和WL)来训练神经网络。
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