Sensor and Attitude Analysis of Track and Field Training Action Recognition Based on Artificial Intelligence

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Abstract

In order to provide effective information support to athletics training and to increase the effectiveness of athletics training, in-depth analysis of motion recognition sensors and attitudes based on artificial intelligence was conducted. First of all, the basic conditions of type analysis, cognitive technology, and the current situation were studied, and the basic theory related to it was studied, and on this basis, a human position analysis and recognition system based on artificial intelligence movement training sensors was developed. We studied the technology in depth. Experiments have shown that the approach data collected by the system's inertia node is transmitted wirelessly to the computer-side software to restore the trend and identify each trend and parameter with high accuracy. During the 30-minute test, the static error was within 1° and the dynamic error was within 5°, which is acceptable and adheres well to dynamic conditions. The system can overcome the limitations of traditional wired or optical methods and be widely used in sports training, human-computer interaction monitoring, rehabilitation medicine, games, film, and television production.

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APA

Liu, C., & Chang, Z. (2022). Sensor and Attitude Analysis of Track and Field Training Action Recognition Based on Artificial Intelligence. Journal of Sensors, 2022. https://doi.org/10.1155/2022/6282388

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