基于人工智能深度学习递归神经网络的脑电波运动预测。

IF 1.2 Q3 REHABILITATION Journal of Exercise Rehabilitation Pub Date : 2023-08-01 DOI:10.12965/jer.2346242.121
Kyoung-Seok Yoo
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引用次数: 0

摘要

脑电图(EEG)研究由于其对人体运动的有价值的见解而在各个研究领域得到了广泛的应用。在这项研究中,我们利用人工智能深度学习递归神经网络(门控递归单元,GRU)对脑电图信号中特定运动类型产生的独特脑电图数据进行了运动识别预测的优化研究。实验的参与者被分为五个姿势控制难度等级,目标是20多岁的体操运动员和体育专业的大学生(n=10)。利用机器学习技术从采集到的32个通道的脑电图数据中提取脑运动模式。采用快速傅立叶变换对脑电数据进行频谱分析,并利用GRU模型网络对脑电各频域进行机器学习,提高了学习操作过程的性能指标。通过对GRU网络算法的开发,该性能指标与现有模型的准确率相比,达到了15.92%的提升,使得运动识别准确率在实际值与预测值之间,最小值为94.67%,最大值为99.15%。这些优化结果归功于GRU网络算法隐藏层的精度和代价函数的提高。通过实现基于脑电图信号的人工智能机器学习结果的运动识别优化,本研究为运动康复这一新兴领域做出了贡献,提出了一种揭示大脑与运动科学之间相互联系的创新范式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Motion prediction using brain waves based on artificial intelligence deep learning recurrent neural network.

Electroencephalogram (EEG) research has gained widespread use in various research domains due to its valuable insights into human body movements. In this study, we investigated the optimization of motion discrimination prediction by employing an artificial intelligence deep learning recurrent neural network (gated recurrent unit, GRU) on unique EEG data generated from specific movement types among EEG signals. The experiment involved participants categorized into five difficulty levels of postural control, targeting gymnasts in their twenties and college students majoring in physical education (n=10). Machine learning techniques were applied to extract brain-motor patterns from the collected EEG data, which consisted of 32 channels. The EEG data underwent spectrum analysis using fast Fourier transform conversion, and the GRU model network was utilized for machine learning on each EEG frequency domain, thereby improving the performance index of the learning operation process. Through the development of the GRU network algorithm, the performance index achieved up to a 15.92% improvement compared to the accuracy of existing models, resulting in motion recognition accuracy ranging from a minimum of 94.67% to a maximum of 99.15% between actual and predicted values. These optimization outcomes are attributed to the enhanced accuracy and cost function of the GRU network algorithm's hidden layers. By implementing motion identification optimization based on artificial intelligence machine learning results from EEG signals, this study contributes to the emerging field of exercise rehabilitation, presenting an innovative paradigm that reveals the interconnectedness between the brain and the science of exercise.

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来源期刊
CiteScore
3.50
自引率
5.30%
发文量
45
审稿时长
10 weeks
期刊介绍: The Journal of Exercise Rehabilitation is the official journal of the Korean Society of Exercise Rehabilitation, and is published six times a year. Supplementary issues may be published. Its official abbreviation is "J Exerc Rehabil". It was launched in 2005. The title of the first volume was Journal of the Korean Society of Exercise Rehabilitation (pISSN 1976-6319). The journal title was changed to Journal of Exercise Rehabilitation from Volume 9 Number 2, 2013. The effects of exercise rehabilitation are very broad and in some cases exercise rehabilitation has different treatment areas than traditional rehabilitation. Exercise rehabilitation can be presented as a solution to new diseases in modern society and it can replace traditional medicine in economically disadvantaged areas. Exercise rehabilitation is very effective in overcoming metabolic diseases and also has no side effects. Furthermore, exercise rehabilitation shows new possibility for neuropsychiatric diseases, such as depression, autism, attention deficit hyperactivity disorder, schizophrenia, etc. The purpose of the Journal of Exercise Rehabilitation is to identify the effects of exercise rehabilitation on a variety of diseases and to identify mechanisms for exercise rehabilitation treatment. The Journal of Exercise Rehabilitation aims to serve as an intermediary for objective and scientific validation on the effects of exercise rehabilitation worldwide. The types of manuscripts include research articles, review articles, and articles invited by the Editorial Board. The Journal of Exercise Rehabilitation contains 6 sections: Basic research on exercise rehabilitation, Clinical research on exercise rehabilitation, Exercise rehabilitation pedagogy, Exercise rehabilitation education, Exercise rehabilitation psychology, and Exercise rehabilitation welfare.
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