4.7 Article

A fully connected deep learning approach to upper limb gesture recognition in a secure FES rehabilitation environment

期刊

INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS
卷 36, 期 5, 页码 2387-2411

出版社

WILEY-HINDAWI
DOI: 10.1002/int.22383

关键词

fully connected neural network; functional electrical stimulation; gesture recognition; multisensor fusion; security and safety; upper limb rehabilitation

资金

  1. Key Laboratory Foundation of National Defence Technology [61424010208]
  2. National Natural Science Foundation of China [41911530242, 41975142]
  3. 5150 Spring Specialists [05492018012, 05762018039]
  4. 333 High-Level Talent Cultivation Project of Jiangsu Province [BRA2018332]
  5. Royal Society of Edinburgh, UK
  6. China Natural Science Foundation Council (RSE) [62967_Liu_2018_2]
  7. China Natural Science Foundation Council (RSE) under basic Research Programs (Natural Science Foundation) of Jiangsu Province [62967_Liu_2018_2, BK20191398]
  8. Major Program of the National Social Science Fund of China [17ZDA092]

向作者/读者索取更多资源

This study proposed a neural network model to accurately recognize upper limb rehabilitation gestures, achieving an average recognition rate of 97.19%. The system's safety and security were ensured through various safety mechanisms and encryption techniques. Additionally, comparisons with other classification models verified the superior performance of the proposed model in recognizing upper limb gesture data.
Stroke is one of the leading causes of death and disability in the world. The rehabilitation of Patients' limb functions has great medical value, for example, the therapy of functional electrical stimulation (FES) systems, but suffers from effective rehabilitation evaluation. In this paper, six gestures of upper limb rehabilitation were monitored and collected using microelectromechanical systems sensors, where data stability was guaranteed using data preprocessing methods, that is, deweighting, interpolation, and feature extraction. A fully connected neural network has been proposed investigating the effects of different hidden layers, and determining its activation functions and optimizers. Experiments have depicted that a three-hidden-layer model with a softmax function and an adaptive gradient descent optimizer can reach an average gesture recognition rate of 97.19%. A stop mechanism has been used via recognition of dangerous gesture to ensure the safety of the system, and the lightweight cryptography has been used via hash to ensure the security of the system. Comparison to the classification models, for example, k-nearest neighbor, logistic regression, and other random gradient descent algorithms, was conducted to verify the outperformance in recognition of upper limb gesture data. This study also provides an approach to creating health profiles based on large-scale rehabilitation data and therefore consequent diagnosis of the effects of FES rehabilitation.

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