JOURNAL ARTICLE

Myoelectric Signal Classification Using Neural Networks

Mihaela UngureanuRodica StrungaruV. Lãzãrescu

Year: 1998 Journal:   Biomedizinische Technik/Biomedical Engineering Vol: 43 (s3)Pages: 87-90   Publisher: De Gruyter

Abstract

A feed-forward neural network is used for diagnosis of spastic paralysis. It is a two-layer perceptron and it is able to classify two kinds of myoelectric signal recorded in surface electromyography: the normal EMG and the EMG in the case of spastic paralysis. The myoelectric signal was recorded with a surface electrode pair and sampled at 10 kHz. The EMG activity is stochastic and the instantaneous amplitude distribution for a fixed level of contraction is Gaussian. The signal variance is considered a measure of muscle force. We can describe any kind of this process by the AR model. For a precisely modeling of EMG there are necessary many AR model parameters. In the classification problem we have it is not necessary to use a high order AR model. We find a 4-th order AR model is good enough for this study. The Hopfield algorithm is used to calculate the parameters of the autoregressive model.

Keywords:
Autoregressive model Electromyography SIGNAL (programming language) Perceptron Artificial neural network Computer science Pattern recognition (psychology) Speech recognition Artificial intelligence Mathematics Statistics Physical medicine and rehabilitation Medicine

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Topics

Muscle activation and electromyography studies
Physical Sciences →  Engineering →  Biomedical Engineering
Neuroscience and Neural Engineering
Life Sciences →  Neuroscience →  Cellular and Molecular Neuroscience
Force Microscopy Techniques and Applications
Physical Sciences →  Physics and Astronomy →  Atomic and Molecular Physics, and Optics
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