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Window length insensitive real-time EMG hand gesture classification using entropy calculated from globally parsed histograms

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dc.contributor.author Algüner, Ayber Eray
dc.contributor.author Ergezer, Halit
dc.date.accessioned 2024-01-26T07:56:49Z
dc.date.available 2024-01-26T07:56:49Z
dc.date.issued 2023-09
dc.identifier.citation Algüner, Ayber Eray; Ergezer, Halit. (2023). "Window length insensitive real-time EMG hand gesture classification using entropy calculated from globally parsed histograms", Measurement and Control, Vol.56, No.7-8, pp.1278-1291. tr_TR
dc.identifier.issn 00202940
dc.identifier.uri http://hdl.handle.net/20.500.12416/7008
dc.description.abstract Electromyography (EMG) signal classification is vital to diagnose musculoskeletal abnormalities and control devices by motion intention detection. Machine learning assists both areas by classifying conditions or motion intentions. This paper proposes a novel window length insensitive EMG classification method utilizing the Entropy feature. The main goal of this study is to show that entropy can be used as the only feature for fast real-time classification of EMG signals of hand gestures. The main goal of this study is to show that entropy can be used as the only feature for fast real-time classification of EMG signals of hand gestures. Additionally, the entropy feature can classify feature vectors of different sliding window lengths without including them in the training data. Many kinds of entropy feature succeeded in electroencephalography (EEG) and electrocardiography (ECG) classification research. However, to the best of our knowledge, the Entropy Feature proposed by Shannon stays untested for EMG classification to this day. All the machine learning models are tested on datasets NinaPro DB5 and the newly collected SingleMyo. As an initial analysis to test the entropy feature, classic Machine Learning (ML) models are trained on the NinaPro DB5 dataset. This stage showed that except for the K Nearest Neighbor (kNN) with high inference time, Support Vector Machines (SVM) gave the best validation accuracy. Later, SVM models trained with feature vectors created by 1 s (200 samples) sliding windows are tested on feature vectors created by 250 ms (50 samples) to 1500 ms (300 samples) sliding windows. This experiment resulted in slight accuracy differences through changing window length, indicating that the Entropy feature is insensitive to this parameter. Lastly, Locally Parsed Histogram (LPH), typical in standard entropy functions, makes learning hard for ML methods. Globally Parsed Histogram (GPH) was proposed, and classification accuracy increased from 60.35% to 89.06% while window length insensitivity is preserved. This study shows that Shannon’s entropy is a compelling feature with low window length sensitivity for EMG hand gesture classification. The effect of the GPH approach against an easy-to-make mistake LPH is shown. A real-time classification algorithm for the entropy features is tested on the newly created SingleMyo dataset. tr_TR
dc.language.iso eng tr_TR
dc.relation.isversionof 10.1177/00202940231153205 tr_TR
dc.rights info:eu-repo/semantics/openAccess tr_TR
dc.subject Electromyography tr_TR
dc.subject Entropy tr_TR
dc.subject Hand Gesture Recognition tr_TR
dc.subject Real-Time Classification tr_TR
dc.title Window length insensitive real-time EMG hand gesture classification using entropy calculated from globally parsed histograms tr_TR
dc.type article tr_TR
dc.relation.journal Measurement and Control tr_TR
dc.contributor.authorID 293396 tr_TR
dc.identifier.volume 56 tr_TR
dc.identifier.issue 7-8 tr_TR
dc.identifier.startpage 1278 tr_TR
dc.identifier.endpage 1291 tr_TR
dc.contributor.department Çankaya Üniversitesi, Mühendislik Fakültesi, Mekatronik Mühendisliği Bölümü tr_TR


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