Publication | Closed Access
Classification of surface EMG signals using harmonic wavelet packet transform
50
Citations
29
References
2006
Year
EngineeringWavelet AnalysisBiometricsWearable TechnologyNeural Network ClassifierFast Fourier TransformBiomedical Signal AnalysisElectrophysiological EvaluationKinesiologyPattern RecognitionBiosignal ProcessingGenetic AlgorithmHealth SciencesSurface Emg SignalsElectrical EngineeringMultidimensional Signal ProcessingComputer EngineeringStatistical Pattern RecognitionWavelet TheorySignal ProcessingEeg Signal ProcessingElectromyographyElectrophysiologyWaveform Analysis
In this paper, an efficient method based on the discrete harmonic wavelet packet transform (DHWPT) is presented to classify surface electromyographic (SEMG) signals. After the relative energy of SEMG signals in each frequency band had been extracted by the DHWPT, a genetic algorithm was utilized to select appropriate features in order to reduce the feature dimensionality. Then, the selected features were used as the input vectors to a neural network classifier to discriminate four types of prosthesis movements. Compared with other classification methods, the proposed method provided high classification accuracy in experimental research. In addition, this method could also save a lot of computational time because the DHWPT has a fast algorithm based on the fast Fourier transform for numerical implementation.
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