Handwritten Digits Recognition From sEMG: Electrodes Location and Feature Selection

Despite hand gesture recognition is a widely investigated field, the design of myoelectric architectures for detecting finer motor task, like the handwriting, is less studied. However, writing tasks involving cognitive loads represent an important aspect toward the generalization of myoelectric-base...

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Published inIEEE access Vol. 11; pp. 58006 - 58015
Main Authors Tigrini, Andrea, Verdini, Federica, Scattolini, Mara, Barbarossa, Federico, Burattini, Laura, Morettini, Micaela, Fioretti, Sandro, Mengarelli, Alessandro
Format Journal Article
LanguageEnglish
Published Piscataway IEEE 2023
The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
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Summary:Despite hand gesture recognition is a widely investigated field, the design of myoelectric architectures for detecting finer motor task, like the handwriting, is less studied. However, writing tasks involving cognitive loads represent an important aspect toward the generalization of myoelectric-based human-machine interfaces (HMI), and also for many rehabilitative tasks. In this study, the handwriting recognition of the ten digits was faced under the myoelectric control perspective, considering the probes setup and the feature extraction step. Time and frequency domain features were extracted from surface electromyography (sEMG) signals of 11 subjects who wrote the ten digits following a standardized template and 8 sEMG probes were equally distributed between forearm and wrist. Feature class separability was investigated and an aggregated feature set was built to train pattern recognition architectures, i.e. linear discriminant analysis (LDA) and quadratic support vector machine (QSVM). Also, four reduced probes setups were investigated. LDA and QSVM showed mean accuracy of about 97%, with all the forearm and wrist sEMG information. A significant reduction of performances was observed considering the wrist or the forearm only (<inline-formula> <tex-math notation="LaTeX">\leq 92 </tex-math></inline-formula>%) and when LDA and QSVM were trained with two electrodes information (<inline-formula> <tex-math notation="LaTeX">\leq 90 </tex-math></inline-formula>%). For the reliable classification performances in a motor task involving high cognitive demands, like the handwriting, it is required the use of probes fully covering forearm and wrist. Outcomes support the methodological transfer from myoelectric hand gesture to the handwriting recognition, which represents a key aspect in the development of new HMI for rehabilitation tasks.
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ISSN:2169-3536
2169-3536
DOI:10.1109/ACCESS.2023.3279735