| Literature DB >> 36187654 |
Bo Zhang1, Hao Jin2, Xiaojing Duan3.
Abstract
The application of artificial intelligence has realized the transformation of people's production and lifestyle, and also promoted the progress of physical education and comprehensive health quality. The application of artificial intelligence in the current physical education movement is increasing. By utilizing its advanced method of virtual simulation technology, the purpose of this paper is to realize the interventional research on the physical education movement and comprehensive health quality in the environment of artificial intelligence. This paper proposes to use the virtual simulation technology and Kinect algorithm in artificial intelligence to design the virtual sports simulation teaching mode. The functional module design part where the Kinect algorithm helps the teaching of virtual sports simulation experiments, which is helpful to analyze and solve the objective system imbalance and ecological imbalance in online physical education teaching. By using the principles and rules of the Mean Shift image segmentation algorithm for reference, the investigation and research on the comprehensive health quality of students are carried out, so as to realize the ecologicalization of the virtual sports school. In the investigation and research on the comprehensive quality of students, the results show that the overall quality of these students who has reached the level of qualified or unqualified is accounting for about 30% of the total number. It is worth noting that in terms of scientific and cultural quality, only 43.34% of all students have excellent grades. It can be seen that the important training goal of current school research is how to use reasonable and effective methods and strategies to improve students' scientific and cultural level, and improve students' other comprehensive scores at the same time.Entities:
Keywords: artificial intelligence; comprehensive health quality; experimental teaching; physical education; virtual simulation technology
Mesh:
Year: 2022 PMID: 36187654 PMCID: PMC9523480 DOI: 10.3389/fpubh.2022.947731
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1Sports experimental model.
Figure 2Smart education model.
Characteristics of traditional teaching and virtual experiment teaching.
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| Comprehensive | The experimental content is monotonous and the knowledge update speed is slow | Rich experimental content and fast knowledge update |
| Reversibility | The experimental process is irreversible | The experimental process can be repeated many times |
| Safety | Experiments are dangerous | The experimental process is safe and reliable |
| Exemplary | In-person action demonstration and explanation, the communication efficiency between teachers and students is not high | Multi-angle action demonstration and explanation, real-time communication efficiency |
| Ease of use | The experimental equipment is limited by physical space, and the sharing is poor | The experimental equipment is not limited by physical space, and the sharing is good |
| Inspiring | The learning process is relatively boring, and the learning interest is low | The learning process is interesting and the learning interest is high |
| Cost-effective | High cost of investment and maintenance of cutting-edge instruments | One-time investment, low maintenance cost |
Figure 3Representation of each coordinate system.
Camera model parameters.
| Intrinsic parameters | X, Y axis focal lengtd | |
| Image center coordinates | ||
| Extrinsic parameters | Translation vector | t |
| Rotation matrix | R |
Figure 4Demonstration of the mean shift method.
Figure 5Content module of experimental teaching project.
Figure 6Operational steps of the experiment.
Figure 7Functional module design.
Figure 8Functions and steps of the fitness path.
Virtual assessment scoring rules.
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| Knowledge point | Instrument application knowledge, human motion science knowledge, safety knowledge | 10 |
| Experimental operation | Correctness of experimental steps, accuracy of data recording | 30 |
| Experimental report | Instrument debugging normative | 60 |
Weight results of comprehensive quality evaluation indicators for students majoring in sports training.
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| Quality evaluation | 1.0000 | 1.0000 | 0.2000 | 0.2500 |
| Ideological and moral quality | - | 1.0000 | 0.2000 | 0.3333 |
| Scientific and cultural quality | - | - | 1.0000 | 1.0000 |
| Physical and mental health quality | - | - | - | 1.0000 |
Figure 9Descriptive statistics table of sports virtual simulation experiment.
Figure 10Statistical chart of student quality evaluation in a university.