Affiliation:
1. School of Art·Design, Zhejiang Sci-Tech University, Hangzhou 310018, China
2. Zhejiang Fashion Design and Manufacturing Collaborative Innovation Center, Hangzhou 310018, China
Abstract
Evaluating hand function presents a significant challenge in the realm of remote rehabilitation, particularly when highlighting the need for comfort and practicality in wearable devices. This research introduces an innovative wearable device-based Internet of Things (IoT) system, specifically designed for the assessment of hand function, with a focus on a wearable wristband. The system, enhanced by cloud technology, offers comprehensive solutions for remote health management and therapeutic services. Firstly, it uses electromyography (EMG) signals from the arm to assess hand function. By employing sophisticated classification and regression models, this system can automatically identify user gestures and accurately measure grip strength. Additionally, the integration of additional sensor data ensures that the system fulfills essential criteria for hand function assessment. Leaving conventional grip strength classification methods, this study explored four distinct regression models to accurately represent the grip strength curve. The findings reveal that the Random Forest Regression (RFR) model is the most effective, achieving an R2 score of 0.9563 on the test data. This significant outcome not only confirms the practicality of the wearable wristband, which relies on EMG signals, but also underscores the potential of the IoT system in assessing hand function.
Funder
Zhejiang Province philosophy and social science planning project
Key Research & Development Program of Zhejiang Province
Reference16 articles.
1. Amprimo, G., Ferraris, C., Masi, G., Pettiti, G., and Priano, L. (2022, January 10–16). GMH-D: Combining Google MediaPipe and RGB-Depth Cameras for Hand Motor Skills Remote Assessment. Proceedings of the 2022 IEEE International Conference on Digital Health (ICDH), Barcelona, Spain.
2. Van Omen, M. (2019). Relationship of Grip Strength and Quality of Life among Community-Dwelling Older Adults. [Honors Thesis, Western Michigan University].
3. Social Integration of Migrant Physicians in Inpatient Rehabilitation;Jansen;Eur. J. Public Health,2020
4. Device for Hand Motor Rehabilitation, Using Grip Force Sensing;Arboleda;South Fla. J. Dev.,2021
5. Vorapojpisut, S., Hillairet, K., Boriboonsak, A., and Misa, P. (2016, January 25–28). A Myo Armband-Based Measurement Platform for Hand Rehabilitation Applications. Proceedings of the International Convention on Rehabilitation Engineering & Assistive Technology, Singapore.