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

机译:参与度增强康复系统中参与度评估方法和学习机制的发展

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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.
机译:当前研究的重点是在中风康复锻炼过程中保持和增强患者的参与度。为此目的已经开发了各种方法和计算机支持的工具,这些方法和工具试图避免平常的锻炼,这种锻炼对于患者来说很容易成为常规甚至无聊的事情,并导致无效的训练。本文提出了一种基于策略捆绑的智能学习机制(SLM),以提高康复锻炼的效率。支撑策略考虑了参与的运动,感知,认知和情感方面。作为网络物理中风康复系统(CP-SRS)的一部分,提出的SLM能够了解实际参与水平与所施加刺激之间的关系。从计算的角度来看,SLM基于多路复用信号处理和机器学习代理。本文介绍了信号处理的数学概念,推理算法以及SLM在CP-SRS中的整体嵌入。回归和分类是此学习机制的两种可能的解决方案。进行计算机仿真以研究提出的学习机制的局限性,并比较不同机器学习方法的结果。我们使用人工神经网络(ANN)模拟回归,并使用ANN和朴素贝叶斯(NB)进行分类。结果表明,在实践中使用NB进行分类更有希望,因为它对输入的偏差不如应用的ANN敏感。

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