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Human Arm Workout Classification by Arm Sleeve Device Based on Machine Learning Algorithmsopen access

Authors
Chun, SehwanKim, SangunKim, Jooyong
Issue Date
Mar-2023
Publisher
MDPI
Keywords
EMG; arm workout classification; smart wearables; smart clothing; textile-based electrode; machine learning; decision tree; SVM; KNN
Citation
SENSORS, v.23, no.6
Journal Title
SENSORS
Volume
23
Number
6
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/43889
DOI
10.3390/s23063106
ISSN
1424-8220
Abstract
Wearables have been applied in the field of fitness in recent years to monitor human muscles by recording electromyographic (EMG) signals. Understanding muscle activation during exercise routines allows strength athletes to achieve the best results. Hydrogels, which are widely used as wet electrodes in the fitness field, are not an option for wearable devices due to their characteristics of being disposable and skin-adhesion. Therefore, a lot of research has been conducted on the development of dry electrodes that can replace hydrogels. In this study, to make it wearable, neoprene was impregnated with high-purity SWCNTs to develop a dry electrode with less noise than hydrogel. Due to the impact of COVID-19, the demand for workouts to improve muscle strength, such as home gyms and personal trainers (PT), has increased. Although there are many studies related to aerobic exercise, there is a lack of wearable devices that can assist in improving muscle strength. This pilot study proposed the development of a wearable device in the form of an arm sleeve that can monitor muscle activity by recording EMG signals of the arm using nine textile-based sensors. In addition, some machine learning models were used to classify three arm target movements such as wrist curl, biceps curl, and dumbbell kickback from the EMG signals recorded by fiber-based sensors. The results obtained show that the EMG signal recorded by the proposed electrode contains less noise compared to that collected by the wet electrode. This was also evidenced by the high accuracy of the classification model used to classify the three arms workouts. This work classification device is an essential step towards wearable devices that can replace next-generation PT.
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College of Engineering (Department of Materials Science and Engineering)
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