Development of engagement evaluation method and learning mechanism in an engagement enhancing rehabilitation system

Journal Article (2016)
Author(s)

Chong Li (TU Delft - Cyber-Physical Systems)

Zoltan Rusak (TU Delft - Cyber-Physical Systems)

Imre Horvath (TU Delft - Cyber-Physical Systems)

Linhong Ji (Tsinghua University)

DOI related publication
https://doi.org/10.1016/j.engappai.2016.01.021 Final published version
More Info
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Publication Year
2016
Language
English
Volume number
51
Pages (from-to)
182-190
Downloads counter
150

Abstract

Maintaining and enhancing engagement of patients during stroke rehabilitation exercises are in the focus of current research. There have been various methods and computer supported tools developed for this purpose, which try to avoid mundane exercising that is prone to become a routine or even boring for the patients and leads to ineffective training. This paper proposes a strategy bundle-based smart learning mechanism (SLM) to increase the efficiency of rehabilitation exercises. The underpinning strategy considers motor, perceptive, cognitive and emotional aspects of engagement. Part of a cyber-physical stroke rehabilitation system (CP-SRS), the proposed SLM is able to learn the relationship between the actual engagement levels and applied stimulations. From a computational point of view, the SLM is based on multiplexed signal processing and a machine learning agent. The paper presents the mathematical concepts of signal processing, the reasoning algorithms, and the overall embedding of the SLM in the CP-SRS. Regression and classification are two possible solutions for this learning mechanism. Computer simulation is conducted to investigate the limitations of the proposed learning mechanism and compare the results of different machine learning methods. We simulate regression with artificial neural network (ANN), and classification with ANN and Naive Bayes (NB). Results show that classification with NB is more promising in practice since it is less sensitive to the deviations in the inputs than the applied version of ANN.