Feature-based classification of myoelectric signals using artificial neural networks

被引:0
|
作者
P. J. Gallant
E. L. Morin
L. E. Peppard
机构
[1] Queen's University,Department of Electrical & Computer Engineering
关键词
Artificial neural networks; Feature extraction; Myoelectric signal;
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学科分类号
摘要
A pattern classification system, designed to separate myoelectric signal records based on contraction tasks, is described. The amplitude of the myoelectric signal during the first 200 ms following the onset of a contraction has a non-random structure that is specific to the task performed. This permits the application of advanced pattern recognition techniques to separate these signals. The pattern classification system described consists of a spectrographic preprocessor, a feature extraction stage and a classifier stage. The preprocessor creates a spectrogram by generating a series of power spectral densities over adjacent time segments of the input signal. The feature extraction stage reduces the dimensionality of the spectrogram by identifying features that correspond to subtle underlying structures in the input signal data. This is realised by a self-organising artificial neural network (ANN) that performs an advanced statistical analysis procedure known as exploratory projection pursuit. The extracted features are then classified by a supervised-learning ANN. An evaluation of the system, in terms of system performance and the complexity of the ANNs, is presented.
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页码:485 / 489
页数:4
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