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Machine Learning Methodology in a System Applying the Adaptive Strategy for Teaching Human Motions

机译:运用自适应策略教授人体运动的系统中的机器学习方法

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摘要

The teaching of motion activities in rehabilitation, sports, and professional work has great social significance. However, the automatic teaching of these activities, particularly those involving fast motions, requires the use of an adaptive system that can adequately react to the changing stages and conditions of the teaching process. This paper describes a prototype of an automatic system that utilizes the online classification of motion signals to select the proper teaching algorithm. The knowledge necessary to perform the classification process is acquired from experts by the use of the machine learning methodology. The system utilizes multidimensional motion signals that are captured using MEMS (Micro-Electro-Mechanical Systems) sensors. Moreover, an array of vibrotactile actuators is used to provide feedback to the learner. The main goal of the presented article is to prove that the effectiveness of the described teaching system is higher than the system that controls the learning process without the use of signal classification. Statistical tests carried out by the use of a prototype system confirmed that thesis. This is the main outcome of the presented study. An important contribution is also a proposal to standardize the system structure. The standardization facilitates the system configuration and implementation of individual, specialized teaching algorithms.
机译:在康复,体育和专业工作中开展运动活动教学具有重大的社会意义。但是,这些活动的自动教学,尤其是涉及快速动作的活动的自动教学,需要使用一种自适应系统,该系统可以对教学过程的不断变化的阶段和条件做出充分的反应。本文介绍了一种自动系统的原型,该系统利用运动信号的在线分类来选择合适的教学算法。执行分类过程所需的知识是通过使用机器学习方法从专家那里获得的。该系统利用通过MEMS(微机电系统)传感器捕获的多维运动信号。此外,可动触觉致动器阵列用于向学习者提供反馈。本文的主要目的是证明所描述的教学系统比不使用信号分类控制学习过程的系统更高的有效性。通过使用原型系统进行的统计测试证实了这一论点。这是本研究的主要结果。一个重要的贡献也是提出了标准化系统结构的建议。标准化有助于系统配置和实施个性化专业教学算法。

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