Publication | Open Access
Electromyography (EMG) based Classification of Neuromuscular Disorders using Multi-Layer Perceptron
75
Citations
2
References
2015
Year
Multi-layer PerceptronDiagnosisMultilayer PerceptronNeuromusculoskeletal DisorderEmg SignalsElectrophysiological EvaluationKinesiologyBiosignal ProcessingApplied PhysiologyRehabilitation EngineeringNeuropathologyHealth SciencesRehabilitationNeuromuscular PathologyPhysical TherapyMuscle DisordersEeg Signal ProcessingElectromyographyElectrophysiologyMedicineArtificial Neural Network
Electromyography (EMG) signals are the measure of activity in the muscles. The aim of this study is to identify the neuromuscular disease based on EMG signals by means of classification. The neuromuscular diseases that have been identified are myopathy and neuropathy. The classification was carried out using Artificial Neural Network (ANN). There are five feature extraction techniques that were used to extract the signals such as Autoregressive (AR), Root Mean Square (RMS), Zero Crossing (ZC), Waveform length (WL) and Mean Absolute Value (MAV). A comparative analysis of these different techniques were carried out based on the results. The Multilayer Perceptron (MLP) was used for carrying out the classification.
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