Rozhin Molavian, Ali Fatahi, Hamed Abbasi, Davood Khezri
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Abstracts and citations were identified through a search based on Science Direct, Google Scholar, PubMed, Elsevier, Springer Link, Web of Science, and Scopus search engines from 1995 up to 2023 to obtain relevant literature about the impact of artificial intelligence on biomechanics. A total of 1000 articles were found related to biomechanical characteristics of gait and sport and 26 articles were directly pertinent to the subject.</p><p><strong>Results: </strong>The extent of the application of artificial intelligence in sports biomechanics in various fields. In addition, various variables in the fields of kinematics, kinetics, and the field of time can be investigated based on artificial intelligence. Conventional computational techniques are limited by the inability to process data in its raw form. Artificial Intelligence (AI) and Machine Learning (ML) techniques can handle complex and high-dimensional data.</p><p><strong>Conclusion: </strong>The utilization of specialized systems and neural networks in gait analysis has shown great potential in sports performance analysis. Integrating AI into this field would be a significant advancement in sport biomechanics. 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引用次数: 0
摘要
背景:人工神经网络帮助人类进行广泛的活动,如体育运动。目的:利用计算机软件研究人工智能对人类步态和运动生物力学相关决策的影响,并研究人工智能在步态和运动表现过程中对个体生物力学的影响。材料和方法:该审查是根据PRISMA指南进行的。从1995年到2023年,通过基于Science Direct、Google Scholar、PubMed、Elsevier、Springer Link、Web of Science和Scopus搜索引擎的搜索,确定了摘要和引文,以获得有关人工智能对生物力学影响的相关文献。共发现1000篇文章与步态和运动的生物力学特征有关,26篇文章与受试者直接相关。结果:人工智能在运动生物力学各个领域的应用程度。此外,可以基于人工智能研究运动学、动力学和时间领域的各种变量。传统的计算技术由于无法处理原始形式的数据而受到限制。人工智能(AI)和机器学习(ML)技术可以处理复杂的高维数据。结论:将专门的系统和神经网络用于步态分析在运动成绩分析中显示出巨大的潜力。将人工智能融入这一领域将是运动生物力学的重大进步。教练和运动员可以通过专门的表现预测模型制定更精确的训练方案。
Artificial Intelligence Approach in Biomechanics of Gait and Sport: A Systematic Literature Review.
Background: Artificial neural network helps humans in a wide range of activities, such as sports.
Objective: This paper aims to investigate the effect of artificial intelligence on decision-making related to human gait and sports biomechanics, using computer-based software, and to investigate the impact of artificial intelligence on individuals' biomechanics during gait and sports performance.
Material and methods: This review was conducted in compliance with the PRISMA guidelines. Abstracts and citations were identified through a search based on Science Direct, Google Scholar, PubMed, Elsevier, Springer Link, Web of Science, and Scopus search engines from 1995 up to 2023 to obtain relevant literature about the impact of artificial intelligence on biomechanics. A total of 1000 articles were found related to biomechanical characteristics of gait and sport and 26 articles were directly pertinent to the subject.
Results: The extent of the application of artificial intelligence in sports biomechanics in various fields. In addition, various variables in the fields of kinematics, kinetics, and the field of time can be investigated based on artificial intelligence. Conventional computational techniques are limited by the inability to process data in its raw form. Artificial Intelligence (AI) and Machine Learning (ML) techniques can handle complex and high-dimensional data.
Conclusion: The utilization of specialized systems and neural networks in gait analysis has shown great potential in sports performance analysis. Integrating AI into this field would be a significant advancement in sport biomechanics. Coaches and athletes can develop more precise training regimens with specialized performance prediction models.
期刊介绍:
The Journal of Biomedical Physics and Engineering (JBPE) is a bimonthly peer-reviewed English-language journal that publishes high-quality basic sciences and clinical research (experimental or theoretical) broadly concerned with the relationship of physics to medicine and engineering.