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基于人工智能技术的健美操运动发展水平对全民健康的影响分析。

Analysis of the Impact of the Development Level of Aerobics Movement on the Public Health of the Whole Population Based on Artificial Intelligence Technology.

机构信息

College of Physical Education, Kunsan National University, Kunsan 54150, Republic of Korea.

Department of Physical Education, Yichun University, Yichun 336000, China.

出版信息

J Environ Public Health. 2022 Aug 29;2022:6748684. doi: 10.1155/2022/6748684. eCollection 2022.

Abstract

With the enhancement of China's comprehensive national power and the improvement of people's living standards, health has become the goal that people pursue. While people are thirsty for extensive knowledge and a healthy body, they also pay more attention to the cultivation of elegant temperament and the enjoyment of beauty, and aerobics has become a hot spot for national fitness with its advantages of coordinated and beautiful movements, bright and cheerful rhythm and obvious fitness effects. Aerobics is a new popular fitness sports, from the beginning of development by most fitness enthusiasts, especially it is a women's favorite. To this end, the characteristics, value, status, and role of aerobics in the public health of all people are discussed, and the problems of poor recognition effect in the existing aerobics difficulty aerobics action recognition methods are proposed to apply the graph convolutional neural network to the aerobics difficulty aerobics action recognition. The video of aerobics is divided into several images, and the background of the aerobics difficult aerobics action image is eliminated, and the gray scale co-generation matrix is set to estimate the local area blur kernel of the difficult action image to correct the visual error of the difficult action image. "change to" The aerobics action is divided into several difficult action images, and the gray-scale symbiosis matrix is set to estimate the local area fuzzy core of the difficult action image, and correct the visual error of the difficult action image. On this basis, the graph convolutional neural network is pre-trained to construct a human-directed spatial-temporal skeleton map, and the human-directed spatial-temporal map representation is modeled with temporal dynamic information to achieve aerobics difficult aerobics action recognition. The experimental results show that the recognition time of the difficult aerobics movements based on the graph convolutional neural network is shorter and the number of false recognitions is less in complex and simple backgrounds, which proves that the proposed method improves the recognition of difficult aerobics movements to achieve the goal of promoting the development level of aerobics and improving the public health of all people.

摘要

随着中国综合国力的增强和人民生活水平的提高,健康已成为人们追求的目标。人们在渴望广博的知识和健康的体魄的同时,也更加注重高雅气质的培养和美的享受,而健美操以其动作协调优美、节奏明快、健身效果明显的优势,成为全民健身的热点。健美操是一种新兴的流行健身运动,从一开始就深受广大健身爱好者的喜爱,尤其是女性的喜爱。为此,探讨了健美操在全民健身中的特点、价值、地位和作用,针对现有健美操难度健美操动作识别方法中识别效果差的问题,提出将图卷积神经网络应用于健美操难度健美操动作识别。将健美操视频分成若干幅图像,消除健美操难度健美操动作图像的背景,设置灰度共生矩阵估计难度动作图像的局部区域模糊核,对难度动作图像的视觉误差进行校正。“改变”将健美操动作分为若干个难度动作图像,设置灰度共生矩阵估计难度动作图像的局部模糊核,校正难度动作图像的视觉误差。在此基础上,对图卷积神经网络进行预训练,构建面向人的时空骨架图,对面向人的时空图表示进行建模,以获取时间动态信息,从而实现健美操难度健美操动作识别。实验结果表明,基于图卷积神经网络的难度健美操动作识别时间更短,在复杂和简单背景下的错误识别次数更少,证明了所提方法提高了难度健美操动作的识别,达到了促进健美操发展水平、提高全民健康水平的目的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9dcc/9444474/3a2954a3b61c/JEPH2022-6748684.001.jpg

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